#!/usr/bin/env python from __future__ import annotations import argparse import functools import os import pathlib import sys import tarfile import gradio as gr import huggingface_hub import numpy as np import torch sys.path.insert(0, 'face_detection') sys.path.insert(0, 'face_parsing') sys.path.insert(0, 'roi_tanh_warping') from ibug.face_detection import RetinaFacePredictor from ibug.face_parsing.parser import WEIGHT, FaceParser from ibug.face_parsing.utils import label_colormap REPO_URL = 'https://github.com/hhj1897/face_parsing' TITLE = 'hhj1897/face_parsing' DESCRIPTION = f'This is a demo for {REPO_URL}.' ARTICLE = None TOKEN = os.environ['TOKEN'] def parse_args() -> argparse.Namespace: parser = argparse.ArgumentParser() parser.add_argument('--device', type=str, default='cpu') parser.add_argument('--theme', type=str) parser.add_argument('--live', action='store_true') parser.add_argument('--share', action='store_true') parser.add_argument('--port', type=int) parser.add_argument('--disable-queue', dest='enable_queue', action='store_false') parser.add_argument('--allow-flagging', type=str, default='never') parser.add_argument('--allow-screenshot', action='store_true') return parser.parse_args() def load_sample_images() -> list[pathlib.Path]: image_dir = pathlib.Path('images') if not image_dir.exists(): image_dir.mkdir() dataset_repo = 'hysts/input-images' filenames = ['000.tar', '001.tar'] for name in filenames: path = huggingface_hub.hf_hub_download(dataset_repo, name, repo_type='dataset', use_auth_token=TOKEN) with tarfile.open(path) as f: f.extractall(image_dir.as_posix()) return sorted(image_dir.rglob('*.jpg')) def load_detector(device: torch.device) -> RetinaFacePredictor: model = RetinaFacePredictor( threshold=0.8, device=device, model=RetinaFacePredictor.get_model('mobilenet0.25')) return model def load_model(model_name: str, device: torch.device) -> FaceParser: encoder, decoder, num_classes = model_name.split('-') num_classes = int(num_classes) model = FaceParser(device=device, encoder=encoder, decoder=decoder, num_classes=num_classes) model.num_classes = num_classes return model def predict(image: np.ndarray, model_name: str, max_num_faces: int, detector: RetinaFacePredictor, models: dict[str, FaceParser]) -> np.ndarray: model = models[model_name] colormap = label_colormap(model.num_classes) # RGB -> BGR image = image[:, :, ::-1] faces = detector(image, rgb=False) if len(faces) == 0: raise RuntimeError('No face was found.') faces = sorted(list(faces), key=lambda x: -x[4])[:max_num_faces][::-1] masks = model.predict_img(image, faces, rgb=False) mask_image = np.zeros_like(image) for mask in masks: temp = colormap[mask] mask_image[temp > 0] = temp[temp > 0] res = image.astype(float) * 0.5 + mask_image[:, :, ::-1] * 0.5 res = np.clip(np.round(res), 0, 255).astype(np.uint8) return res[:, :, ::-1] def main(): gr.close_all() args = parse_args() device = torch.device(args.device) detector = load_detector(device) model_names = list(WEIGHT.keys()) models = {name: load_model(name, device=device) for name in model_names} func = functools.partial(predict, detector=detector, models=models) func = functools.update_wrapper(func, predict) image_paths = load_sample_images() examples = [[path.as_posix(), model_names[1], 10] for path in image_paths] gr.Interface( func, [ gr.inputs.Image(type='numpy', label='Input'), gr.inputs.Radio(model_names, type='value', default=model_names[1], label='Model'), gr.inputs.Slider( 1, 20, step=1, default=10, label='Max Number of Faces'), ], gr.outputs.Image(type='numpy', label='Output'), examples=examples, title=TITLE, description=DESCRIPTION, article=ARTICLE, theme=args.theme, allow_screenshot=args.allow_screenshot, allow_flagging=args.allow_flagging, live=args.live, ).launch( enable_queue=args.enable_queue, server_port=args.port, share=args.share, ) if __name__ == '__main__': main()