关于人工智能:微软开源可视化版本的ChatGPTVisual-ChatGPT人工智能AI聊天发图片Python310实现

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说时迟那时快,微软第一工夫公布开源库 Visual ChatGPT,把 ChatGPT 的人工智能 AI 能力和 Stable Diffusion 以及 ControlNet 进行了整合。经常被互联网人挂在嘴边的“赋能”一词,简直曾经变成了笑话,但这回,微软玩了一次真真正正的 AI“赋能”,彻底买通了人工智能“闭环”。

配置 Visual ChatGPT 环境

老规矩,运行 Git 命令拉取 Visual ChatGPT 我的项目:

git clone https://github.com/microsoft/visual-chatgpt.git

进入我的项目目录:

cd visual-chatgpt

确保本机的 Python 版本不低于 Python3.10.9

随后装置依赖文件:

pip3 install -r requirement.txt

这里有几个问题,一个是官网的 Pytorch 版本不是最新的,这里举荐 1.13.1:

pip3 install torch==1.13.1

另外 langchain 的版本也举荐最新的 107 版本。

pip3 install langchain==0.0.107

装置好依赖之后,官网要求运行我的项目中的 download.sh 文件:

bash download.sh

这个 shell 脚本次要就是构建子项目 ControlNet,同时下载所有的 ControlNet 模型,如果之前曾经下载过相干模型,间接将模型文件拷贝到我的项目目录即可:

.  
├── cldm_v15.yaml  
├── cldm_v21.yaml  
├── control_sd15_canny.pth  
├── control_sd15_depth.pth  
├── control_sd15_hed.pth  
├── control_sd15_mlsd.pth  
├── control_sd15_normal.pth  
├── control_sd15_openpose.pth  
├── control_sd15_scribble.pth  
└── control_sd15_seg.pth

对于 ControlNet,请移玉步至:登峰造极, 师出造化,Pytorch 人工智能 AI 图像增强框架 ControlNet 绘画实际, 基于 Python3.10,这里不再赘述。

接着配置 Openai 的环境变量:

export OPENAI_API_KEY={你的 openaik key}

如果是 Windows 用户,遵循下列步骤,配置好 OPENAI\_API\_KEY:

 关上“控制面板”,而后抉择“零碎和平安”。抉择“零碎”,而后点击“高级零碎设置”。在“高级”选项卡下,点击“环境变量”。在“用户变量”或“零碎变量”下,抉择要配置的变量,而后点击“编辑”。在“变量值”字段中,输出要配置的值。点击“确定”保留更改。

至此,大体上环境就配置好了。

Visual ChatGPT 局部代码批改:

和 ControlNet 一样,Visual ChatGPT 将运行形式写死为 cuda,这对于不反对 cuda 模式的电脑不太敌对,比方苹果 M 系列芯片的 Mac 零碎,如果咱们间接运行程序:

python3 visual_chatgpt.py

就会报这个谬误:

AssertionError: Torch not compiled with CUDA enabled

这里须要将 visual-chatgpt.py 文件中写死的 cuda 模式改写为 mps 模式:

print("Initializing VisualChatGPT")  
self.llm = OpenAI(temperature=0)  
self.edit = ImageEditing(device="mps")  
self.i2t = ImageCaptioning(device="mps")  
self.t2i = T2I(device="mps")

对于 MPS 模式,请参照:闻其声而知雅意,M1 Mac 基于 PyTorch(mps/cpu/cuda) 的人工智能 AI 本地语音辨认库 Whisper(Python3.10),这里不再赘述。

接着创立训练图片的文件夹:

mkdir image

随后还可能触发 langchain 库的内存溢出问题,须要将这行代码屏蔽:

# self.agent.memory.buffer = cut_dialogue_history(self.agent.memory.buffer, keep_last_n_words=500)

接着将内存缓冲区替换为保留上下文逻辑:

self.agent.memory.buffer = self.agent.memory.buffer + Human_prompt + 'AI:' + AI_prompt  
self.agent.memory.save_context({"input": Human_prompt}, {"output": AI_prompt})

当咱们认为万事俱备只欠东风的时候,发现每次运行都会内存溢出,对此,官网给出了解释:

Here we list the GPU memory usage of each visual foundation model, one can modify self.tools with fewer visual foundation models to save your GPU memory:  
  
Foundation Model    Memory Usage (MB)  
ImageEditing    6667  
ImageCaption    1755  
T2I    6677  
canny2image    5540  
line2image    6679  
hed2image    6679  
scribble2image    6679  
pose2image    6681  
BLIPVQA    2709  
seg2image    5540  
depth2image    6677  
normal2image    3974  
InstructPix2Pix    2795

这就是加载了所有模型之后的显存占用,整整 70 个 G 的显存占用,这是给人玩的吗?人们不禁要问。

没方法,只能另辟蹊径,将非必要的模型加载代码进行屏蔽操作,一顿批改,批改后的残缺代码:

import sys  
import os  
sys.path.append(os.path.dirname(os.path.realpath(__file__)))  
sys.path.append(os.path.dirname(os.path.dirname(os.path.realpath(__file__))))  
import gradio as gr  
from transformers import AutoModelForCausalLM, AutoTokenizer, CLIPSegProcessor, CLIPSegForImageSegmentation  
import torch  
from diffusers import StableDiffusionPipeline  
from diffusers import StableDiffusionInstructPix2PixPipeline, EulerAncestralDiscreteScheduler  
import os  
from langchain.agents.initialize import initialize_agent  
from langchain.agents.tools import Tool  
from langchain.chains.conversation.memory import ConversationBufferMemory  
from langchain.llms.openai import OpenAI  
import re  
import uuid  
from diffusers import StableDiffusionInpaintPipeline  
from PIL import Image  
import numpy as np  
from omegaconf import OmegaConf  
from transformers import pipeline, BlipProcessor, BlipForConditionalGeneration, BlipForQuestionAnswering  
import cv2  
import einops  
from pytorch_lightning import seed_everything  
import random  
from ldm.util import instantiate_from_config  
from ControlNet.cldm.model import create_model, load_state_dict  
from ControlNet.cldm.ddim_hacked import DDIMSampler  
from ControlNet.annotator.canny import CannyDetector  
from ControlNet.annotator.mlsd import MLSDdetector  
from ControlNet.annotator.util import HWC3, resize_image  
from ControlNet.annotator.hed import HEDdetector, nms  
from ControlNet.annotator.openpose import OpenposeDetector  
from ControlNet.annotator.uniformer import UniformerDetector  
from ControlNet.annotator.midas import MidasDetector  
  
VISUAL_CHATGPT_PREFIX = """Visual ChatGPT is designed to be able to assist with a wide range of text and visual related tasks, from answering simple questions to providing in-depth explanations and discussions on a wide range of topics. Visual ChatGPT is able to generate human-like text based on the input it receives, allowing it to engage in natural-sounding conversations and provide responses that are coherent and relevant to the topic at hand.  
  
Visual ChatGPT is able to process and understand large amounts of text and images. As a language model, Visual ChatGPT can not directly read images, but it has a list of tools to finish different visual tasks. Each image will have a file name formed as "image/xxx.png", and Visual ChatGPT can invoke different tools to indirectly understand pictures. When talking about images, Visual ChatGPT is very strict to the file name and will never fabricate nonexistent files. When using tools to generate new image files, Visual ChatGPT is also known that the image may not be the same as the user's demand, and will use other visual question answering tools or description tools to observe the real image. Visual ChatGPT is able to use tools in a sequence, and is loyal to the tool observation outputs rather than faking the image content and image file name. It will remember to provide the file name from the last tool observation, if a new image is generated.  
  
Human may provide new figures to Visual ChatGPT with a description. The description helps Visual ChatGPT to understand this image, but Visual ChatGPT should use tools to finish following tasks, rather than directly imagine from the description.  
  
Overall, Visual ChatGPT is a powerful visual dialogue assistant tool that can help with a wide range of tasks and provide valuable insights and information on a wide range of topics.   
  
  
TOOLS:  
------  
  
Visual ChatGPT  has access to the following tools:"""VISUAL_CHATGPT_FORMAT_INSTRUCTIONS ="""To use a tool, please use the following format:  
  

Thought: Do I need to use a tool? Yes
Action: the action to take, should be one of [{tool_names}]
Action Input: the input to the action
Observation: the result of the action

  
When you have a response to say to the Human, or if you do not need to use a tool, you MUST use the format:  
  

Thought: Do I need to use a tool? No
{ai_prefix}: [your response here]

"""VISUAL_CHATGPT_SUFFIX ="""You are very strict to the filename correctness and will never fake a file name if it does not exist.  
You will remember to provide the image file name loyally if it's provided in the last tool observation.  
  
Begin!  
  
Previous conversation history:  
{chat_history}  
  
New input: {input}  
Since Visual ChatGPT is a text language model, Visual ChatGPT must use tools to observe images rather than imagination.  
The thoughts and observations are only visible for Visual ChatGPT, Visual ChatGPT should remember to repeat important information in the final response for Human.   
Thought: Do I need to use a tool? {agent_scratchpad}"""  
  
def cut_dialogue_history(history_memory, keep_last_n_words=500):  
    tokens = history_memory.split()  
    n_tokens = len(tokens)  
    print(f"hitory_memory:{history_memory}, n_tokens: {n_tokens}")  
    if n_tokens < keep_last_n_words:  
        return history_memory  
    else:  
        paragraphs = history_memory.split('\n')  
        last_n_tokens = n_tokens  
        while last_n_tokens >= keep_last_n_words:  
            last_n_tokens = last_n_tokens - len(paragraphs[0].split(' '))  
            paragraphs = paragraphs[1:]  
        return '\n' + '\n'.join(paragraphs)  
  
def get_new_image_name(org_img_name, func_name="update"):  
    head_tail = os.path.split(org_img_name)  
    head = head_tail[0]  
    tail = head_tail[1]  
    name_split = tail.split('.')[0].split('_')  
    this_new_uuid = str(uuid.uuid4())[0:4]  
    if len(name_split) == 1:  
        most_org_file_name = name_split[0]  
        recent_prev_file_name = name_split[0]  
        new_file_name = '{}_{}_{}_{}.png'.format(this_new_uuid, func_name, recent_prev_file_name, most_org_file_name)  
    else:  
        assert len(name_split) == 4  
        most_org_file_name = name_split[3]  
        recent_prev_file_name = name_split[0]  
        new_file_name = '{}_{}_{}_{}.png'.format(this_new_uuid, func_name, recent_prev_file_name, most_org_file_name)  
    return os.path.join(head, new_file_name)  
  
def create_model(config_path, device):  
    config = OmegaConf.load(config_path)  
    OmegaConf.update(config, "model.params.cond_stage_config.params.device", device)  
    model = instantiate_from_config(config.model).to('mps')  
    print(f'Loaded model config from [{config_path}]')  
    return model  
  
class MaskFormer:  
    def __init__(self, device):  
        self.device = device  
        self.processor = CLIPSegProcessor.from_pretrained("CIDAS/clipseg-rd64-refined")  
        self.model = CLIPSegForImageSegmentation.from_pretrained("CIDAS/clipseg-rd64-refined").to(device)  
  
    def inference(self, image_path, text):  
        threshold = 0.5  
        min_area = 0.02  
        padding = 20  
        original_image = Image.open(image_path)  
        image = original_image.resize((512, 512))  
        inputs = self.processor(text=text, images=image, padding="max_length", return_tensors="pt",).to(self.device)  
        with torch.no_grad():  
            outputs = self.model(**inputs)  
        mask = torch.sigmoid(outputs[0]).squeeze().cuda().numpy() > threshold  
        area_ratio = len(np.argwhere(mask)) / (mask.shape[0] * mask.shape[1])  
        if area_ratio < min_area:  
            return None  
        true_indices = np.argwhere(mask)  
        mask_array = np.zeros_like(mask, dtype=bool)  
        for idx in true_indices:  
            padded_slice = tuple(slice(max(0, i - padding), i + padding + 1) for i in idx)  
            mask_array[padded_slice] = True  
        visual_mask = (mask_array * 255).astype(np.uint8)  
        image_mask = Image.fromarray(visual_mask)  
        return image_mask.resize(image.size)  
  
class ImageEditing:  
    def __init__(self, device):  
        print("Initializing StableDiffusionInpaint to %s" % device)  
        self.device = device  
        self.mask_former = MaskFormer(device=self.device)  
        self.inpainting = StableDiffusionInpaintPipeline.from_pretrained("runwayml/stable-diffusion-inpainting",).to(device)  
  
    def remove_part_of_image(self, input):  
        image_path, to_be_removed_txt = input.split(",")  
        print(f'remove_part_of_image: to_be_removed {to_be_removed_txt}')  
        return self.replace_part_of_image(f"{image_path},{to_be_removed_txt},background")  
  
    def replace_part_of_image(self, input):  
        image_path, to_be_replaced_txt, replace_with_txt = input.split(",")  
        print(f'replace_part_of_image: replace_with_txt {replace_with_txt}')  
        original_image = Image.open(image_path)  
        mask_image = self.mask_former.inference(image_path, to_be_replaced_txt)  
        updated_image = self.inpainting(prompt=replace_with_txt, image=original_image, mask_image=mask_image).images[0]  
        updated_image_path = get_new_image_name(image_path, func_name="replace-something")  
        updated_image.save(updated_image_path)  
        return updated_image_path  
  
class Pix2Pix:  
    def __init__(self, device):  
        print("Initializing Pix2Pix to %s" % device)  
        self.device = device  
        self.pipe = StableDiffusionInstructPix2PixPipeline.from_pretrained("timbrooks/instruct-pix2pix", torch_dtype=torch.float16, safety_checker=None).to(device)  
        self.pipe.scheduler = EulerAncestralDiscreteScheduler.from_config(self.pipe.scheduler.config)  
  
    def inference(self, inputs):  
        """Change style of image."""  
        print("===>Starting Pix2Pix Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        original_image = Image.open(image_path)  
        image = self.pipe(instruct_text,image=original_image,num_inference_steps=40,image_guidance_scale=1.2,).images[0]  
        updated_image_path = get_new_image_name(image_path, func_name="pix2pix")  
        image.save(updated_image_path)  
        return updated_image_path  
  
class T2I:  
    def __init__(self, device):  
        print("Initializing T2I to %s" % device)  
        self.device = device  
        self.pipe = StableDiffusionPipeline.from_pretrained("runwayml/stable-diffusion-v1-5", torch_dtype=torch.float16)  
        self.text_refine_tokenizer = AutoTokenizer.from_pretrained("Gustavosta/MagicPrompt-Stable-Diffusion")  
        self.text_refine_model = AutoModelForCausalLM.from_pretrained("Gustavosta/MagicPrompt-Stable-Diffusion")  
        self.text_refine_gpt2_pipe = pipeline("text-generation", model=self.text_refine_model, tokenizer=self.text_refine_tokenizer, device=self.device)  
        self.pipe.to(device)  
  
    def inference(self, text):  
        image_filename = os.path.join('image', str(uuid.uuid4())[0:8] + ".png")  
        refined_text = self.text_refine_gpt2_pipe(text)[0]["generated_text"]  
        print(f'{text} refined to {refined_text}')  
        image = self.pipe(refined_text).images[0]  
        image.save(image_filename)  
        print(f"Processed T2I.run, text: {text}, image_filename: {image_filename}")  
        return image_filename  
  
class ImageCaptioning:  
    def __init__(self, device):  
        print("Initializing ImageCaptioning to %s" % device)  
        self.device = device  
        self.processor = BlipProcessor.from_pretrained("Salesforce/blip-image-captioning-base")  
        self.model = BlipForConditionalGeneration.from_pretrained("Salesforce/blip-image-captioning-base").to(self.device)  
  
    def inference(self, image_path):  
        inputs = self.processor(Image.open(image_path), return_tensors="pt").to(self.device)  
        out = self.model.generate(**inputs)  
        captions = self.processor.decode(out[0], skip_special_tokens=True)  
        return captions  
  
class image2canny:  
    def __init__(self):  
        print("Direct detect canny.")  
        self.detector = CannyDetector()  
        self.low_thresh = 100  
        self.high_thresh = 200  
  
    def inference(self, inputs):  
        print("===>Starting image2canny Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        canny = self.detector(image, self.low_thresh, self.high_thresh)  
        canny = 255 - canny  
        image = Image.fromarray(canny)  
        updated_image_path = get_new_image_name(inputs, func_name="edge")  
        image.save(updated_image_path)  
        return updated_image_path  
  
class canny2image:  
    def __init__(self, device):  
        print("Initialize the canny2image model.")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_canny.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting canny2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        image = 255 - image  
        prompt = instruct_text  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  # Magic number. IDK why. Perhaps because 0.825**12<0.01 but 0.826**12>0.01  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="canny2image")  
        real_image = Image.fromarray(x_samples[0])  # get default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class image2line:  
    def __init__(self):  
        print("Direct detect straight line...")  
        self.detector = MLSDdetector()  
        self.value_thresh = 0.1  
        self.dis_thresh = 0.1  
        self.resolution = 512  
  
    def inference(self, inputs):  
        print("===>Starting image2hough Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        hough = self.detector(resize_image(image, self.resolution), self.value_thresh, self.dis_thresh)  
        updated_image_path = get_new_image_name(inputs, func_name="line-of")  
        hough = 255 - cv2.dilate(hough, np.ones(shape=(3, 3), dtype=np.uint8), iterations=1)  
        image = Image.fromarray(hough)  
        image.save(updated_image_path)  
        return updated_image_path  
  
  
class line2image:  
    def __init__(self, device):  
        print("Initialize the line2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_mlsd.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting line2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        image = 255 - image  
        prompt = instruct_text  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  # Magic number. IDK why. Perhaps because 0.825**12<0.01 but 0.826**12>0.01  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).\  
            cuda().numpy().clip(0,255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="line2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
  
class image2hed:  
    def __init__(self):  
        print("Direct detect soft HED boundary...")  
        self.detector = HEDdetector()  
        self.resolution = 512  
  
    def inference(self, inputs):  
        print("===>Starting image2hed Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        hed = self.detector(resize_image(image, self.resolution))  
        updated_image_path = get_new_image_name(inputs, func_name="hed-boundary")  
        image = Image.fromarray(hed)  
        image.save(updated_image_path)  
        return updated_image_path  
  
  
class hed2image:  
    def __init__(self, device):  
        print("Initialize the hed2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_hed.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting hed2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        prompt = instruct_text  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="hed2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class image2scribble:  
    def __init__(self):  
        print("Direct detect scribble.")  
        self.detector = HEDdetector()  
        self.resolution = 512  
  
    def inference(self, inputs):  
        print("===>Starting image2scribble Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        detected_map = self.detector(resize_image(image, self.resolution))  
        detected_map = HWC3(detected_map)  
        image = resize_image(image, self.resolution)  
        H, W, C = image.shape  
        detected_map = cv2.resize(detected_map, (W, H), interpolation=cv2.INTER_LINEAR)  
        detected_map = nms(detected_map, 127, 3.0)  
        detected_map = cv2.GaussianBlur(detected_map, (0, 0), 3.0)  
        detected_map[detected_map > 4] = 255  
        detected_map[detected_map < 255] = 0  
        detected_map = 255 - detected_map  
        updated_image_path = get_new_image_name(inputs, func_name="scribble")  
        image = Image.fromarray(detected_map)  
        image.save(updated_image_path)  
        return updated_image_path  
  
class scribble2image:  
    def __init__(self, device):  
        print("Initialize the scribble2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_scribble.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting scribble2image Inference")  
        print(f'sketch device {self.device}')  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        prompt = instruct_text  
        image = 255 - image  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="scribble2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class image2pose:  
    def __init__(self):  
        print("Direct human pose.")  
        self.detector = OpenposeDetector()  
        self.resolution = 512  
  
    def inference(self, inputs):  
        print("===>Starting image2pose Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        detected_map, _ = self.detector(resize_image(image, self.resolution))  
        detected_map = HWC3(detected_map)  
        image = resize_image(image, self.resolution)  
        H, W, C = image.shape  
        detected_map = cv2.resize(detected_map, (W, H), interpolation=cv2.INTER_LINEAR)  
        updated_image_path = get_new_image_name(inputs, func_name="human-pose")  
        image = Image.fromarray(detected_map)  
        image.save(updated_image_path)  
        return updated_image_path  
  
class pose2image:  
    def __init__(self, device):  
        print("Initialize the pose2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_openpose.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting pose2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        prompt = instruct_text  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="pose2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class image2seg:  
    def __init__(self):  
        print("Direct segmentations.")  
        self.detector = UniformerDetector()  
        self.resolution = 512  
  
    def inference(self, inputs):  
        print("===>Starting image2seg Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        detected_map = self.detector(resize_image(image, self.resolution))  
        detected_map = HWC3(detected_map)  
        image = resize_image(image, self.resolution)  
        H, W, C = image.shape  
        detected_map = cv2.resize(detected_map, (W, H), interpolation=cv2.INTER_LINEAR)  
        updated_image_path = get_new_image_name(inputs, func_name="segmentation")  
        image = Image.fromarray(detected_map)  
        image.save(updated_image_path)  
        return updated_image_path  
  
class seg2image:  
    def __init__(self, device):  
        print("Initialize the seg2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_seg.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting seg2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        prompt = instruct_text  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="segment2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class image2depth:  
    def __init__(self):  
        print("Direct depth estimation.")  
        self.detector = MidasDetector()  
        self.resolution = 512  
  
    def inference(self, inputs):  
        print("===>Starting image2depth Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        detected_map, _ = self.detector(resize_image(image, self.resolution))  
        detected_map = HWC3(detected_map)  
        image = resize_image(image, self.resolution)  
        H, W, C = image.shape  
        detected_map = cv2.resize(detected_map, (W, H), interpolation=cv2.INTER_LINEAR)  
        updated_image_path = get_new_image_name(inputs, func_name="depth")  
        image = Image.fromarray(detected_map)  
        image.save(updated_image_path)  
        return updated_image_path  
  
class depth2image:  
    def __init__(self, device):  
        print("Initialize depth2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_depth.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting depth2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        prompt = instruct_text  
        img = resize_image(HWC3(image), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  # Magic number. IDK why. Perhaps because 0.825**12<0.01 but 0.826**12>0.01  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="depth2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class image2normal:  
    def __init__(self):  
        print("Direct normal estimation.")  
        self.detector = MidasDetector()  
        self.resolution = 512  
        self.bg_threshold = 0.4  
  
    def inference(self, inputs):  
        print("===>Starting image2 normal Inference")  
        image = Image.open(inputs)  
        image = np.array(image)  
        image = HWC3(image)  
        _, detected_map = self.detector(resize_image(image, self.resolution), bg_th=self.bg_threshold)  
        detected_map = HWC3(detected_map)  
        image = resize_image(image, self.resolution)  
        H, W, C = image.shape  
        detected_map = cv2.resize(detected_map, (W, H), interpolation=cv2.INTER_LINEAR)  
        updated_image_path = get_new_image_name(inputs, func_name="normal-map")  
        image = Image.fromarray(detected_map)  
        image.save(updated_image_path)  
        return updated_image_path  
  
class normal2image:  
    def __init__(self, device):  
        print("Initialize normal2image model...")  
        model = create_model('ControlNet/models/cldm_v15.yaml', device=device).to(device)  
        model.load_state_dict(load_state_dict('ControlNet/models/control_sd15_normal.pth', location='mps'))  
        self.model = model.to(device)  
        self.device = device  
        self.ddim_sampler = DDIMSampler(self.model)  
        self.ddim_steps = 20  
        self.image_resolution = 512  
        self.num_samples = 1  
        self.save_memory = False  
        self.strength = 1.0  
        self.guess_mode = False  
        self.scale = 9.0  
        self.seed = -1  
        self.a_prompt = 'best quality, extremely detailed'  
        self.n_prompt = 'longbody, lowres, bad anatomy, bad hands, missing fingers, extra digit, fewer digits, cropped, worst quality, low quality'  
  
    def inference(self, inputs):  
        print("===>Starting normal2image Inference")  
        image_path, instruct_text = inputs.split(",")[0], ','.join(inputs.split(',')[1:])  
        image = Image.open(image_path)  
        image = np.array(image)  
        prompt = instruct_text  
        img = image[:, :, ::-1].copy()  
        img = resize_image(HWC3(img), self.image_resolution)  
        H, W, C = img.shape  
        img = cv2.resize(img, (W, H), interpolation=cv2.INTER_NEAREST)  
        control = torch.from_numpy(img.copy()).float().to(device=self.device) / 255.0  
        control = torch.stack([control for _ in range(self.num_samples)], dim=0)  
        control = einops.rearrange(control, 'b h w c -> b c h w').clone()  
        self.seed = random.randint(0, 65535)  
        seed_everything(self.seed)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        cond = {"c_concat": [control], "c_crossattn": [self.model.get_learned_conditioning([prompt + ',' + self.a_prompt] * self.num_samples)]}  
        un_cond = {"c_concat": None if self.guess_mode else [control], "c_crossattn": [self.model.get_learned_conditioning([self.n_prompt] * self.num_samples)]}  
        shape = (4, H // 8, W // 8)  
        self.model.control_scales = [self.strength * (0.825 ** float(12 - i)) for i in range(13)] if self.guess_mode else ([self.strength] * 13)  
        samples, intermediates = self.ddim_sampler.sample(self.ddim_steps, self.num_samples, shape, cond, verbose=False, eta=0., unconditional_guidance_scale=self.scale, unconditional_conditioning=un_cond)  
        if self.save_memory:  
            self.model.low_vram_shift(is_diffusing=False)  
        x_samples = self.model.decode_first_stage(samples)  
        x_samples = (einops.rearrange(x_samples, 'b c h w -> b h w c') * 127.5 + 127.5).cuda().numpy().clip(0, 255).astype(np.uint8)  
        updated_image_path = get_new_image_name(image_path, func_name="normal2image")  
        real_image = Image.fromarray(x_samples[0])  # default the index0 image  
        real_image.save(updated_image_path)  
        return updated_image_path  
  
class BLIPVQA:  
    def __init__(self, device):  
        print("Initializing BLIP VQA to %s" % device)  
        self.device = device  
        self.processor = BlipProcessor.from_pretrained("Salesforce/blip-vqa-base")  
        self.model = BlipForQuestionAnswering.from_pretrained("Salesforce/blip-vqa-base").to(self.device)  
  
    def get_answer_from_question_and_image(self, inputs):  
        image_path, question = inputs.split(",")  
        raw_image = Image.open(image_path).convert('RGB')  
        print(F'BLIPVQA :question :{question}')  
        inputs = self.processor(raw_image, question, return_tensors="pt").to(self.device)  
        out = self.model.generate(**inputs)  
        answer = self.processor.decode(out[0], skip_special_tokens=True)  
        return answer  
  
class ConversationBot:  
    def __init__(self):  
        print("Initializing VisualChatGPT")  
        self.llm = OpenAI(temperature=0)  
        #self.edit = ImageEditing(device="mps")  
        self.i2t = ImageCaptioning(device="mps")  
        self.t2i = T2I(device="mps")  
        # self.image2canny = image2canny()  
        # self.canny2image = canny2image(device="mps")  
        # self.image2line = image2line()  
        # self.line2image = line2image(device="mps")  
        # self.image2hed = image2hed()  
        # self.hed2image = hed2image(device="mps")  
        # self.image2scribble = image2scribble()  
        # self.scribble2image = scribble2image(device="mps")  
        # self.image2pose = image2pose()  
        # self.pose2image = pose2image(device="mps")  
        # self.BLIPVQA = BLIPVQA(device="mps")  
        # self.image2seg = image2seg()  
        # self.seg2image = seg2image(device="mps")  
        # self.image2depth = image2depth()  
        # self.depth2image = depth2image(device="mps")  
        # self.image2normal = image2normal()  
        # self.normal2image = normal2image(device="mps")  
        #self.pix2pix = Pix2Pix(device="mps")  
        self.memory = ConversationBufferMemory(memory_key="chat_history", output_key='output')  
        self.tools = [  
            Tool(name="Get Photo Description", func=self.i2t.inference,  
                 description="useful when you want to know what is inside the photo. receives image_path as input."  
                             "The input to this tool should be a string, representing the image_path."),  
            Tool(name="Generate Image From User Input Text", func=self.t2i.inference,  
                 description="useful when you want to generate an image from a user input text and save it to a file. like: generate an image of an object or something, or generate an image that includes some objects."  
                             "The input to this tool should be a string, representing the text used to generate image."),  
            # Tool(name="Get Photo Description", func=self.i2t.inference,  
            #      description="useful when you want to know what is inside the photo. receives image_path as input."  
            #                  "The input to this tool should be a string, representing the image_path."),  
            # Tool(name="Generate Image From User Input Text", func=self.t2i.inference,  
            #      description="useful when you want to generate an image from a user input text and save it to a file. like: generate an image of an object or something, or generate an image that includes some objects."  
            #                  "The input to this tool should be a string, representing the text used to generate image."),  
            # Tool(name="Remove Something From The Photo", func=self.edit.remove_part_of_image,  
            #      description="useful when you want to remove and object or something from the photo from its description or location."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the object need to be removed."),  
            # Tool(name="Replace Something From The Photo", func=self.edit.replace_part_of_image,  
            #      description="useful when you want to replace an object from the object description or location with another object from its description."  
            #                  "The input to this tool should be a comma seperated string of three, representing the image_path, the object to be replaced, the object to be replaced with"),  
  
            # Tool(name="Instruct Image Using Text", func=self.pix2pix.inference,  
            #      description="useful when you want to the style of the image to be like the text. like: make it look like a painting. or make it like a robot."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the text."),  
            # Tool(name="Answer Question About The Image", func=self.BLIPVQA.get_answer_from_question_and_image,  
            #      description="useful when you need an answer for a question based on an image. like: what is the background color of the last image, how many cats in this figure, what is in this figure."  
            #     "The input to this tool should be a comma seperated string of two, representing the image_path and the question"),  
            # Tool(name="Edge Detection On Image", func=self.image2canny.inference,  
            #      description="useful when you want to detect the edge of the image. like: detect the edges of this image, or canny detection on image, or peform edge detection on this image, or detect the canny image of this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Canny Image", func=self.canny2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and a canny image. like: generate a real image of a object or something from this canny image, or generate a new real image of a object or something from this edge image."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description."),  
            # Tool(name="Line Detection On Image", func=self.image2line.inference,  
            #      description="useful when you want to detect the straight line of the image. like: detect the straight lines of this image, or straight line detection on image, or peform straight line detection on this image, or detect the straight line image of this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Line Image", func=self.line2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and a straight line image. like: generate a real image of a object or something from this straight line image, or generate a new real image of a object or something from this straight lines."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description."),  
            # Tool(name="Hed Detection On Image", func=self.image2hed.inference,  
            #      description="useful when you want to detect the soft hed boundary of the image. like: detect the soft hed boundary of this image, or hed boundary detection on image, or peform hed boundary detection on this image, or detect soft hed boundary image of this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Soft Hed Boundary Image", func=self.hed2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and a soft hed boundary image. like: generate a real image of a object or something from this soft hed boundary image, or generate a new real image of a object or something from this hed boundary."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description"),  
            # Tool(name="Segmentation On Image", func=self.image2seg.inference,  
            #      description="useful when you want to detect segmentations of the image. like: segment this image, or generate segmentations on this image, or peform segmentation on this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Segmentations", func=self.seg2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and segmentations. like: generate a real image of a object or something from this segmentation image, or generate a new real image of a object or something from these segmentations."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description"),  
            # Tool(name="Predict Depth On Image", func=self.image2depth.inference,  
            #      description="useful when you want to detect depth of the image. like: generate the depth from this image, or detect the depth map on this image, or predict the depth for this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Depth",  func=self.depth2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and depth image. like: generate a real image of a object or something from this depth image, or generate a new real image of a object or something from the depth map."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description"),  
            # Tool(name="Predict Normal Map On Image", func=self.image2normal.inference,  
            #      description="useful when you want to detect norm map of the image. like: generate normal map from this image, or predict normal map of this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Normal Map", func=self.normal2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and normal map. like: generate a real image of a object or something from this normal map, or generate a new real image of a object or something from the normal map."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description"),  
            # Tool(name="Sketch Detection On Image", func=self.image2scribble.inference,  
            #      description="useful when you want to generate a scribble of the image. like: generate a scribble of this image, or generate a sketch from this image, detect the sketch from this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Sketch Image", func=self.scribble2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and a scribble image or a sketch image."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description"),  
            # Tool(name="Pose Detection On Image", func=self.image2pose.inference,  
            #      description="useful when you want to detect the human pose of the image. like: generate human poses of this image, or generate a pose image from this image."  
            #                  "The input to this tool should be a string, representing the image_path"),  
            # Tool(name="Generate Image Condition On Pose Image", func=self.pose2image.inference,  
            #      description="useful when you want to generate a new real image from both the user desciption and a human pose image. like: generate a real image of a human from this human pose image, or generate a new real image of a human from this pose."  
            #                  "The input to this tool should be a comma seperated string of two, representing the image_path and the user description")  
              
            ]  
        self.agent = initialize_agent(  
            self.tools,  
            self.llm,  
            agent="conversational-react-description",  
            verbose=True,  
            memory=self.memory,  
            return_intermediate_steps=True,  
            agent_kwargs={'prefix': VISUAL_CHATGPT_PREFIX, 'format_instructions': VISUAL_CHATGPT_FORMAT_INSTRUCTIONS, 'suffix': VISUAL_CHATGPT_SUFFIX}, )  
  
    def run_text(self, text, state):  
        print("===============Running run_text =============")  
        print("Inputs:", text, state)  
        print("======>Previous memory:\n %s" % self.agent.memory)  
        #self.agent.memory.buffer = cut_dialogue_history(self.agent.memory.buffer, keep_last_n_words=500)  
        res = self.agent({"input": text})  
        print("======>Current memory:\n %s" % self.agent.memory)  
        response = re.sub('(image/\S*png)', lambda m: f'![](/file={m.group(0)})*{m.group(0)}*', res['output'])  
        state = state + [(text, response)]  
        print("Outputs:", state)  
        return state, state  
  
    def run_image(self, image, state, txt):  
        print("===============Running run_image =============")  
        print("Inputs:", image, state)  
        print("======>Previous memory:\n %s" % self.agent.memory)  
        image_filename = os.path.join('image', str(uuid.uuid4())[0:8] + ".png")  
        print("======>Auto Resize Image...")  
        img = Image.open(image.name)  
        width, height = img.size  
        ratio = min(512 / width, 512 / height)  
        width_new, height_new = (round(width * ratio), round(height * ratio))  
        img = img.resize((width_new, height_new))  
        img = img.convert('RGB')  
        img.save(image_filename, "PNG")  
        print(f"Resize image form {width}x{height} to {width_new}x{height_new}")  
        description = self.i2t.inference(image_filename)  
        Human_prompt = "\nHuman: provide a figure named {}. The description is: {}. This information helps you to understand this image, but you should use tools to finish following tasks," \  
                       "rather than directly imagine from my description. If you understand, say \"Received\". \n".format(image_filename, description)  
        AI_prompt = "Received."  
        #self.agent.memory.buffer = self.agent.memory.buffer + Human_prompt + 'AI:' + AI_prompt  
        self.agent.memory.buffer.save_context({"input": Human_prompt}, {"output": AI_prompt})  
        print("======>Current memory:\n %s" % self.agent.memory)  
        state = state + [(f"![](/file={image_filename})*{image_filename}*", AI_prompt)]  
        print("Outputs:", state)  
        return state, state, txt + '' + image_filename +' 'if __name__ =='__main__':  
    bot = ConversationBot()  
    with gr.Blocks(css="#chatbot .overflow-y-auto{height:500px}") as demo:  
        chatbot = gr.Chatbot(elem_id="chatbot", label="Visual ChatGPT")  
        state = gr.State([])  
        with gr.Row():  
            with gr.Column(scale=0.7):  
                txt = gr.Textbox(show_label=False, placeholder="Enter text and press enter, or upload an image").style(container=False)  
            with gr.Column(scale=0.15, min_width=0):  
                clear = gr.Button("Clear️")  
            with gr.Column(scale=0.15, min_width=0):  
                btn = gr.UploadButton("Upload", file_types=["image"])  
  
        txt.submit(bot.run_text, [txt, state], [chatbot, state])  
        txt.submit(lambda: "", None, txt)  
        btn.upload(bot.run_image, [btn, state, txt], [chatbot, state, txt])  
        clear.click(bot.memory.clear)  
        clear.click(lambda: [], None, chatbot)  
        clear.click(lambda: [], None, state)  
        demo.launch(server_name="0.0.0.0", server_port=7860)

留神,以上代码是批改了 MPS 模式、langchain 库 bug 以及屏蔽了多个模型后的批改版本。

运行 Visual ChatGPT

折腾了大半天,终于能够无谬误运行了:

python3 visual_chatgpt.py

程序返回:

➜  visual-chatgpt git:(main) ✗ python visual_chatgpt.py                                                   
Initializing VisualChatGPT  
Initializing ImageCaptioning to mps  
Initializing T2I to mps  
/opt/homebrew/lib/python3.10/site-packages/transformers/models/clip/feature_extraction_clip.py:28: FutureWarning: The class CLIPFeatureExtractor is deprecated and will be removed in version 5 of Transformers. Please use CLIPImageProcessor instead.  
  warnings.warn(Running on local URL:  http://0.0.0.0:7860

编程的乐趣就在于,当你为了运行某个程序经验了千难万险,甚至濒临失望的时候,忽然,程序调通了,此时大脑皮层会大量分泌多巴胺(dopamine),那感觉,就像忽然领悟了人生妙谛,又像是终于明确了天人化生、万物助长的要道,简而言之,白日飞升,高兴加倍,那种精力上的享受,相对比玩电子游戏或者享受美食更加的高级。

随后拜访 http://localhost:7860:

间接用中文开聊即可,不须要 ControlNet 那些令人腻烦的疏导词。

后台程序逻辑:

Inputs: 给我一只大金毛 []  
======>Previous memory:  
 chat_memory=ChatMessageHistory(messages=[]) output_key='output' input_key=None return_messages=False human_prefix='Human' ai_prefix='AI' memory_key='chat_history'  
  
  
> Entering new AgentExecutor chain...  
 Yes  
Action: Generate Image From User Input Text  
Action Input: A golden retrieverSetting `pad_token_id` to `eos_token_id`:50256 for open-end generation.  
A golden retriever refined to A golden retriever,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,  
100%|█████████████████████████████████████████████████████████████████████████████████| 50/50 [00:47<00:00,  1.05it/s]  
Processed T2I.run, text: A golden retriever, image_filename: image/865c561f.png  
  
Observation: image/865c561f.png  
Thought: Do I need to use a tool? No  
AI: Here is a golden retriever for you: image/865c561f.png  
  
> Finished chain.  
======>Current memory:  
 chat_memory=ChatMessageHistory(messages=[HumanMessage(content='给我一只大金毛', additional_kwargs={}), AIMessage(content='Here is a golden retriever for you: image/865c561f.png', additional_kwargs={})]) output_key='output' input_key=None return_messages=False human_prefix='Human' ai_prefix='AI' memory_key='chat_history'  
Outputs: [('给我一只大金毛', 'Here is a golden retriever for you: ![](/file=image/865c561f.png)*image/865c561f.png*')]

通过观察,咱们能够得悉,尽管是中文聊天,但其实 ChatGPT 会把中文翻译为英文,将“给我一只大金毛”翻译为:“a golden retriever”。

随后通过模型训练生成图片,再将聊天记录增加到上下文列表中,对于 ChatGPT 的聊天上下文,请参照:从新定义性价比! 人工智能 AI 聊天 ChatGPT 新接口模型 gpt-3.5-turbo 闪电更新, 老本降 90%,Python3.10 接入

当然,为了能够线下单机环境将 Visual ChatGPT 胜利跑起来,所以屏蔽了多个 ControlNet 图像模型,因而有些图片场景并不那么尽如人意:

结语

有的时候,当咱们称誉一项技术的时候,咱们会称其为这样或者那样的行业标杆、教科书之类,然而对于 ChatGPT 来说,它曾经超过了所谓的什么标杆,或者说得更精确一些,它是标杆中的标杆,其余的所谓的类 ChatGPT 产品,别说望其项背了,就连 ChatGPT 的尾气也闻不到,说白了,想碰瓷都不晓得该怎么碰,因为神明早已在 ChatGPT 的命格中写下八个大字:前无古人,后无来者!最初,奉上批改后的我的项目代码,与众乡亲同飨:github.com/zcxey2911/visual\_chatgpt\_mps\_cut

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