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import os
import gradio as gr
from gradio_client import Client, handle_file
from pathlib import Path
from gradio.utils import get_cache_folder

import torch
import torchvision.transforms as transforms
from PIL import Image

import cv2
import numpy as np

class Examples(gr.helpers.Examples):
    def __init__(self, *args, cached_folder=None, **kwargs):
        super().__init__(*args, **kwargs, _initiated_directly=False)
        if cached_folder is not None:
            self.cached_folder = cached_folder
            # self.cached_file = Path(self.cached_folder) / "log.csv"
        self.create()


# user click the image to get points, and show the points on the image
def get_point(img, sel_pix, evt: gr.SelectData):
    if len(sel_pix) < 5:
        sel_pix.append((evt.index, 1))    # default foreground_point
    img = cv2.imread(img)
    img = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
    # draw points
    
    for point, label in sel_pix:
        cv2.drawMarker(img, point, colors[label], markerType=markers[label], markerSize=20, thickness=5)
    # if img[..., 0][0, 0] == img[..., 2][0, 0]:  # BGR to RGB
    #     img = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
    print(sel_pix)
    return img, sel_pix


# undo the selected point
def undo_points(orig_img, sel_pix):
    if isinstance(orig_img, int):   # if orig_img is int, the image if select from examples
        temp = cv2.imread(image_examples[orig_img][0])
        temp = cv2.cvtColor(temp, cv2.COLOR_BGR2RGB)
    else:
        temp = cv2.imread(orig_img)
        temp = cv2.cvtColor(temp, cv2.COLOR_BGR2RGB)
    # draw points
    if len(sel_pix) != 0:
        sel_pix.pop()
        for point, label in sel_pix:
            cv2.drawMarker(temp, point, colors[label], markerType=markers[label], markerSize=20, thickness=5)
    if temp[..., 0][0, 0] == temp[..., 2][0, 0]:  # BGR to RGB
        temp = cv2.cvtColor(temp, cv2.COLOR_BGR2RGB)
    return temp, sel_pix


# HF_TOKEN = os.environ.get('HF_KEY')

# client = Client("Canyu/Diception",
#                 max_workers=3,
#                 hf_token=HF_TOKEN)

colors = [(255, 0, 0), (0, 255, 0)]
markers = [1, 5]

map_prompt = {
    'depth': '[[image2depth]]',
    'normal': '[[image2normal]]',
    'human pose': '[[image2pose]]',
    'entity segmentation': '[[image2panoptic coarse]]',
    'point segmentation': '[[image2segmentation]]',
    'semantic segmentation': '[[image2semantic]]',
}

def download_additional_params(model_name, filename="add_params.bin"):
    # 下载文件并返回文件路径
    file_path = hf_hub_download(repo_id=model_name, filename=filename, use_auth_token=HF_TOKEN)
    return file_path

# 加载 additional_params.bin 文件
def load_additional_params(model_name):
    # 下载 additional_params.bin
    params_path = download_additional_params(model_name)
    
    # 使用 torch.load() 加载文件内容
    additional_params = torch.load(params_path, map_location='cpu')
    
    # 返回加载的参数内容
    return additional_params

def process_image_check(path_input, prompt, sel_points, semantic):
    print('=========== PROCESS IMAGE CHECK ===========')
    print(f"Image Path: {path_input}")
    print(f"Prompt: {prompt}")
    print(f"Selected Points (before processing): {sel_points}")
    print(f"Semantic Input: {semantic}")
    print('===========================================')
    if path_input is None:
        raise gr.Error(
            "Missing image in the left pane: please upload an image first."
        )
    if len(prompt) == 0:
        raise gr.Error(
            "At least 1 prediction type is needed."
        )
    if 'point segmentation' in prompt and len(sel_points) == 0:
        raise gr.Error(
            "At least 1 point is needed."
        )
    if 'point segmentation' not in prompt and len(sel_points) != 0:
        raise gr.Error(
            "You must select 'point segmentation' when performing point segmentation."
        )

    if 'semantic segmentation' in prompt and semantic == None:
        raise gr.Error(
            "Target category is needed."
        )
    if 'semantic segmentation' not in prompt and semantic != None:
        raise gr.Error(
            "You must select 'semantic segmentation' when performing semantic segmentation."
        )



def process_image_4(image_path, prompt):

    inputs = []
    for p in prompt:
        cur_p = map_prompt[p]

        coor_point = []
        point_labels = []
        

        cur_input = {
                # 'original_size': [[w,h]],
                # 'target_size': [[768, 768]],
                'prompt': [cur_p],
                'coor_point': coor_point,
                'point_labels': point_labels,
            }
        inputs.append(cur_input)

    return inputs


def inf(image_path, prompt, sel_points, semantic):
    inputs = process_image_4(image_path, prompt, sel_points, semantic)
    # return None
    return client.predict(
      image=handle_file(image_path),
      data=inputs,
      api_name="/inf"
    )

def clear_cache():
    return None, None

def run_demo_server():
    options = ['depth', 'normal', 'entity segmentation', 'human pose', 'point segmentation', 'semantic segmentation']
    gradio_theme = gr.themes.Default()
    with gr.Blocks(
        theme=gradio_theme,
        title="Matting",
    ) as demo:
        selected_points = gr.State([])      # store points
        original_image = gr.State(value=None)   # store original image without points, default None
        with gr.Row():
            gr.Markdown("# Diception Demo")
        with gr.Row():
            gr.Markdown("### All results are generated using the same single model. To facilitate input processing, we separate point-prompted segmentation and semantic segmentation, as they require input points and segmentation targets.")
        with gr.Row():
            checkbox_group = gr.CheckboxGroup(choices=options, label="Select options:")
        with gr.Row():
            semantic_input = gr.Textbox(label="Category Name (for semantic segmentation only, in COCO)", placeholder="e.g. person/cat/dog/elephant......")
        with gr.Row():
            with gr.Column():
                input_image = gr.Image(
                    label="Input Image",
                    type="filepath",
                )

                with gr.Column():
                    with gr.Row():
                        gr.Markdown('You can click on the image to select points prompt. At most 5 point.')
                    undo_button = gr.Button('Undo point')

                with gr.Row():
                    matting_image_submit_btn = gr.Button(
                        value="Estimate Matting", variant="primary"
                    )
                    matting_image_reset_btn = gr.Button(value="Reset")
                
                with gr.Row():
                    img_clear_button = gr.Button("Clear Cache")
                
            with gr.Column():
                # matting_image_output = gr.Image(label='Output')
                matting_image_output =  gr.Image(label='Matting Output')
                    
                        #     label="Matting Output",
                        #     type="filepath",
                        #     show_download_button=True,
                        #     show_share_button=True,
                        #     interactive=False,
                        #     elem_classes="slider",
                        #     position=0.25,
                        # )
                
            

        img_clear_button.click(clear_cache, outputs=[input_image, matting_image_output])

        matting_image_submit_btn.click(
            fn=process_image_check,
            inputs=[input_image, checkbox_group, selected_points, semantic_input],
            outputs=None,
            preprocess=False,
            queue=False,
        ).success(
            # fn=process_pipe_matting,
            fn=inf,
            inputs=[input_image, checkbox_group, selected_points, semantic_input],
            outputs=[matting_image_output],
            concurrency_limit=1,
        )

        matting_image_reset_btn.click(
            fn=lambda: (
                None,
                None,
            ),
            inputs=[],
            outputs=[
                input_image,
                matting_image_output,
            ],
            queue=False,
        )


        # once user upload an image, the original image is stored in `original_image`
        def store_img(img):
            return img, []  # when new image is uploaded, `selected_points` should be empty
        input_image.upload(
            store_img,
            [input_image],
            [original_image, selected_points]
        )

        input_image.select(
            get_point,
            [input_image, selected_points],
            [input_image, selected_points],
        )

        undo_button.click(
            undo_points,
            [original_image, selected_points],
            [input_image, selected_points]
        )

        # gr.Examples(
        #     fn=inf,
        #     examples=[
        #         ["assets/person.jpg", ['depth', 'normal', 'entity segmentation', 'pose']]             
        #     ],
        #     inputs=[input_image, checkbox_group],
        #     outputs=[matting_image_output],
        #     cache_examples=True,
        #     # cache_examples=False,
        #     # cached_folder="cache_dir",
        # )
        
    demo.queue(
        api_open=False,
    ).launch()


if __name__ == '__main__':

    run_demo_server()