import gradio as gr import argparse import os from musepose_inference import MusePoseInference from pose_align import PoseAlignmentInference from downloading_weights import download_models class App: def __init__(self, args): self.args = args self.pose_alignment_infer = PoseAlignmentInference( model_dir=args.model_dir, output_dir=args.output_dir ) self.musepose_infer = MusePoseInference( model_dir=args.model_dir, output_dir=args.output_dir ) if not args.disable_model_download_at_start: download_models(model_dir=args.model_dir) def musepose_demo(self): with gr.Blocks() as demo: md_header = self.header() with gr.Tabs(): with gr.TabItem('Step1: Pose Alignment'): with gr.Row(): with gr.Column(scale=3): img_input = gr.Image(label="Input Image here", type="filepath", scale=5) vid_dance_input = gr.Video(label="Input Dance Video", scale=5) with gr.Column(scale=3): vid_dance_output = gr.Video(label="Aligned pose output will be displayed here", scale=5) vid_dance_output_demo = gr.Video(label="Output demo video will be displayed here", scale=5) with gr.Column(scale=3): with gr.Column(): nb_detect_resolution = gr.Number(label="Detect Resolution", value=512, precision=0) nb_image_resolution = gr.Number(label="Image Resolution.", value=720, precision=0) nb_align_frame = gr.Number(label="Align Frame", value=0, precision=0) nb_max_frame = gr.Number(label="Max Frame", value=300, precision=0) with gr.Row(): btn_align_pose = gr.Button("ALIGN POSE", variant="primary") with gr.Column(): examples = [ [os.path.join("assets", "videos", "dance.mp4"), os.path.join("assets", "images", "ref.png"), 512, 720, 0, 300]] ex_step1 = gr.Examples(examples=examples, inputs=[vid_dance_input, img_input, nb_detect_resolution, nb_image_resolution, nb_align_frame, nb_max_frame], outputs=[vid_dance_output, vid_dance_output_demo], fn=self.pose_alignment_infer.align_pose, cache_examples="lazy") btn_align_pose.click(fn=self.pose_alignment_infer.align_pose, inputs=[vid_dance_input, img_input, nb_detect_resolution, nb_image_resolution, nb_align_frame, nb_max_frame], outputs=[vid_dance_output, vid_dance_output_demo]) with gr.TabItem('Step2: MusePose Inference'): with gr.Row(): with gr.Column(scale=3): img_input = gr.Image(label="Input Image here", type="filepath", scale=5) vid_pose_input = gr.Video(label="Input Aligned Pose Video here", scale=5) with gr.Column(scale=3): vid_output = gr.Video(label="Output Video will be displayed here", scale=5) vid_output_demo = gr.Video(label="Output demo video will be displayed here", scale=5) with gr.Column(scale=3): with gr.Column(): weight_dtype = gr.Dropdown(label="Compute Type", choices=["fp16", "fp32"], value="fp16") nb_width = gr.Number(label="Width.", value=512, precision=0) nb_height = gr.Number(label="Height.", value=512, precision=0) nb_video_frame_length = gr.Number(label="Video Frame Length", value=300, precision=0) nb_video_slice_frame_length = gr.Number(label="Video Slice Frame Number ", value=48, precision=0) nb_video_slice_overlap_frame_number = gr.Number( label="Video Slice Overlap Frame Number", value=4, precision=0) nb_cfg = gr.Number(label="CFG (Classifier Free Guidance)", value=3.5, precision=0) nb_seed = gr.Number(label="Seed", value=99, precision=0) nb_steps = gr.Number(label="DDIM Sampling Steps", value=20, precision=0) nb_fps = gr.Number(label="FPS (Frames Per Second) ", value=-1, precision=0, info="Set to '-1' to use same FPS with pose's") nb_skip = gr.Number(label="SKIP (Frame Sample Rate = SKIP+1)", value=1, precision=0) with gr.Row(): btn_generate = gr.Button("GENERATE", variant="primary") with gr.Column(): examples = [ [os.path.join("assets", "images", "ref.png"), os.path.join("assets", "videos", "pose.mp4"), "fp16", 512, 512, 300, 48, 4, 3.5, 99, 20, -1, 1]] ex_step2 = gr.Examples(examples=examples, inputs=[img_input, vid_pose_input, weight_dtype, nb_width, nb_height, nb_video_frame_length, nb_video_slice_frame_length, nb_video_slice_overlap_frame_number, nb_cfg, nb_seed, nb_steps, nb_fps, nb_skip], outputs=[vid_output, vid_output_demo], fn=self.musepose_infer.infer_musepose, cache_examples="lazy") btn_generate.click(fn=self.musepose_infer.infer_musepose, inputs=[img_input, vid_pose_input, weight_dtype, nb_width, nb_height, nb_video_frame_length, nb_video_slice_frame_length, nb_video_slice_overlap_frame_number, nb_cfg, nb_seed, nb_steps, nb_fps, nb_skip], outputs=[vid_output, vid_output_demo]) return demo @staticmethod def header(): header = gr.HTML( """

Gradio demo for MusePose

Demo list you can try in other environment:

""" ) return header def launch(self): demo = self.musepose_demo() demo.queue().launch( share=self.args.share ) if __name__ == "__main__": parser = argparse.ArgumentParser() parser.add_argument('--model_dir', type=str, default=os.path.join("pretrained_weights"), help='Pretrained models directory for MusePose') parser.add_argument('--output_dir', type=str, default=os.path.join("outputs"), help='Output directory for the result') parser.add_argument('--disable_model_download_at_start', type=bool, default=False, nargs='?', const=True, help='Disable model download at start or not') parser.add_argument('--share', type=bool, default=False, nargs='?', const=True, help='Gradio makes sharable link if it is true') args = parser.parse_args() app = App(args=args) app.launch()