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import argparse
import os
from omegaconf import OmegaConf
import numpy as np
import cv2
import torch
import glob
import pickle
import sys
from tqdm import tqdm
import copy
import json
from musetalk.utils.utils import get_file_type,get_video_fps,datagen
from musetalk.utils.preprocessing import get_landmark_and_bbox,read_imgs,coord_placeholder
from musetalk.utils.blending import get_image,get_image_prepare_material,get_image_blending
from musetalk.utils.utils import load_all_model
import shutil
import threading
import queue
import time
# load model weights
audio_processor, vae, unet, pe = load_all_model()
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
timesteps = torch.tensor([0], device=device)
pe = pe.half()
vae.vae = vae.vae.half()
unet.model = unet.model.half()
def video2imgs(vid_path, save_path, ext = '.png',cut_frame = 10000000):
cap = cv2.VideoCapture(vid_path)
count = 0
while True:
if count > cut_frame:
break
ret, frame = cap.read()
if ret:
cv2.imwrite(f"{save_path}/{count:08d}.png", frame)
count += 1
else:
break
def osmakedirs(path_list):
for path in path_list:
os.makedirs(path) if not os.path.exists(path) else None
@torch.no_grad()
class Avatar:
def __init__(self, avatar_id, video_path, bbox_shift, batch_size, preparation):
self.avatar_id = avatar_id
self.video_path = video_path
self.bbox_shift = bbox_shift
self.avatar_path = f"./results/avatars/{avatar_id}"
self.full_imgs_path = f"{self.avatar_path}/full_imgs"
self.coords_path = f"{self.avatar_path}/coords.pkl"
self.latents_out_path= f"{self.avatar_path}/latents.pt"
self.video_out_path = f"{self.avatar_path}/vid_output/"
self.mask_out_path =f"{self.avatar_path}/mask"
self.mask_coords_path =f"{self.avatar_path}/mask_coords.pkl"
self.avatar_info_path = f"{self.avatar_path}/avator_info.json"
self.avatar_info = {
"avatar_id":avatar_id,
"video_path":video_path,
"bbox_shift":bbox_shift
}
self.preparation = preparation
self.batch_size = batch_size
self.idx = 0
self.init()
def init(self):
if self.preparation:
if os.path.exists(self.avatar_path):
response = input(f"{self.avatar_id} exists, Do you want to re-create it ? (y/n)")
if response.lower() == "y":
shutil.rmtree(self.avatar_path)
print("*********************************")
print(f" creating avator: {self.avatar_id}")
print("*********************************")
osmakedirs([self.avatar_path,self.full_imgs_path,self.video_out_path,self.mask_out_path])
self.prepare_material()
else:
self.input_latent_list_cycle = torch.load(self.latents_out_path)
with open(self.coords_path, 'rb') as f:
self.coord_list_cycle = pickle.load(f)
input_img_list = glob.glob(os.path.join(self.full_imgs_path, '*.[jpJP][pnPN]*[gG]'))
input_img_list = sorted(input_img_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0]))
self.frame_list_cycle = read_imgs(input_img_list)
with open(self.mask_coords_path, 'rb') as f:
self.mask_coords_list_cycle = pickle.load(f)
input_mask_list = glob.glob(os.path.join(self.mask_out_path, '*.[jpJP][pnPN]*[gG]'))
input_mask_list = sorted(input_mask_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0]))
self.mask_list_cycle = read_imgs(input_mask_list)
else:
print("*********************************")
print(f" creating avator: {self.avatar_id}")
print("*********************************")
osmakedirs([self.avatar_path,self.full_imgs_path,self.video_out_path,self.mask_out_path])
self.prepare_material()
else:
if not os.path.exists(self.avatar_path):
print(f"{self.avatar_id} does not exist, you should set preparation to True")
sys.exit()
with open(self.avatar_info_path, "r") as f:
avatar_info = json.load(f)
if avatar_info['bbox_shift'] != self.avatar_info['bbox_shift']:
response = input(f" 【bbox_shift】 is changed, you need to re-create it ! (c/continue)")
if response.lower() == "c":
shutil.rmtree(self.avatar_path)
print("*********************************")
print(f" creating avator: {self.avatar_id}")
print("*********************************")
osmakedirs([self.avatar_path,self.full_imgs_path,self.video_out_path,self.mask_out_path])
self.prepare_material()
else:
sys.exit()
else:
self.input_latent_list_cycle = torch.load(self.latents_out_path)
with open(self.coords_path, 'rb') as f:
self.coord_list_cycle = pickle.load(f)
input_img_list = glob.glob(os.path.join(self.full_imgs_path, '*.[jpJP][pnPN]*[gG]'))
input_img_list = sorted(input_img_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0]))
self.frame_list_cycle = read_imgs(input_img_list)
with open(self.mask_coords_path, 'rb') as f:
self.mask_coords_list_cycle = pickle.load(f)
input_mask_list = glob.glob(os.path.join(self.mask_out_path, '*.[jpJP][pnPN]*[gG]'))
input_mask_list = sorted(input_mask_list, key=lambda x: int(os.path.splitext(os.path.basename(x))[0]))
self.mask_list_cycle = read_imgs(input_mask_list)
def prepare_material(self):
print("preparing data materials ... ...")
with open(self.avatar_info_path, "w") as f:
json.dump(self.avatar_info, f)
if os.path.isfile(self.video_path):
video2imgs(self.video_path, self.full_imgs_path, ext = 'png')
else:
print(f"copy files in {self.video_path}")
files = os.listdir(self.video_path)
files.sort()
files = [file for file in files if file.split(".")[-1]=="png"]
for filename in files:
shutil.copyfile(f"{self.video_path}/{filename}", f"{self.full_imgs_path}/{filename}")
input_img_list = sorted(glob.glob(os.path.join(self.full_imgs_path, '*.[jpJP][pnPN]*[gG]')))
print("extracting landmarks...")
coord_list, frame_list = get_landmark_and_bbox(input_img_list, self.bbox_shift)
input_latent_list = []
idx = -1
# maker if the bbox is not sufficient
coord_placeholder = (0.0,0.0,0.0,0.0)
for bbox, frame in zip(coord_list, frame_list):
idx = idx + 1
if bbox == coord_placeholder:
continue
x1, y1, x2, y2 = bbox
crop_frame = frame[y1:y2, x1:x2]
resized_crop_frame = cv2.resize(crop_frame,(256,256),interpolation = cv2.INTER_LANCZOS4)
latents = vae.get_latents_for_unet(resized_crop_frame)
input_latent_list.append(latents)
self.frame_list_cycle = frame_list + frame_list[::-1]
self.coord_list_cycle = coord_list + coord_list[::-1]
self.input_latent_list_cycle = input_latent_list + input_latent_list[::-1]
self.mask_coords_list_cycle = []
self.mask_list_cycle = []
for i,frame in enumerate(tqdm(self.frame_list_cycle)):
cv2.imwrite(f"{self.full_imgs_path}/{str(i).zfill(8)}.png",frame)
face_box = self.coord_list_cycle[i]
mask,crop_box = get_image_prepare_material(frame,face_box)
cv2.imwrite(f"{self.mask_out_path}/{str(i).zfill(8)}.png",mask)
self.mask_coords_list_cycle += [crop_box]
self.mask_list_cycle.append(mask)
with open(self.mask_coords_path, 'wb') as f:
pickle.dump(self.mask_coords_list_cycle, f)
with open(self.coords_path, 'wb') as f:
pickle.dump(self.coord_list_cycle, f)
torch.save(self.input_latent_list_cycle, os.path.join(self.latents_out_path))
#
def process_frames(self,
res_frame_queue,
video_len,
skip_save_images):
print(video_len)
while True:
if self.idx>=video_len-1:
break
try:
start = time.time()
res_frame = res_frame_queue.get(block=True, timeout=1)
except queue.Empty:
continue
bbox = self.coord_list_cycle[self.idx%(len(self.coord_list_cycle))]
ori_frame = copy.deepcopy(self.frame_list_cycle[self.idx%(len(self.frame_list_cycle))])
x1, y1, x2, y2 = bbox
try:
res_frame = cv2.resize(res_frame.astype(np.uint8),(x2-x1,y2-y1))
except:
continue
mask = self.mask_list_cycle[self.idx%(len(self.mask_list_cycle))]
mask_crop_box = self.mask_coords_list_cycle[self.idx%(len(self.mask_coords_list_cycle))]
#combine_frame = get_image(ori_frame,res_frame,bbox)
combine_frame = get_image_blending(ori_frame,res_frame,bbox,mask,mask_crop_box)
if skip_save_images is False:
cv2.imwrite(f"{self.avatar_path}/tmp/{str(self.idx).zfill(8)}.png",combine_frame)
self.idx = self.idx + 1
def inference(self,
audio_path,
out_vid_name,
fps,
skip_save_images):
os.makedirs(self.avatar_path+'/tmp',exist_ok =True)
print("start inference")
############################################## extract audio feature ##############################################
start_time = time.time()
whisper_feature = audio_processor.audio2feat(audio_path)
whisper_chunks = audio_processor.feature2chunks(feature_array=whisper_feature,fps=fps)
print(f"processing audio:{audio_path} costs {(time.time() - start_time) * 1000}ms")
############################################## inference batch by batch ##############################################
video_num = len(whisper_chunks)
res_frame_queue = queue.Queue()
self.idx = 0
# # Create a sub-thread and start it
process_thread = threading.Thread(target=self.process_frames, args=(res_frame_queue, video_num, skip_save_images))
process_thread.start()
gen = datagen(whisper_chunks,
self.input_latent_list_cycle,
self.batch_size)
start_time = time.time()
res_frame_list = []
for i, (whisper_batch,latent_batch) in enumerate(tqdm(gen,total=int(np.ceil(float(video_num)/self.batch_size)))):
audio_feature_batch = torch.from_numpy(whisper_batch)
audio_feature_batch = audio_feature_batch.to(device=unet.device,
dtype=unet.model.dtype)
audio_feature_batch = pe(audio_feature_batch)
latent_batch = latent_batch.to(dtype=unet.model.dtype)
pred_latents = unet.model(latent_batch,
timesteps,
encoder_hidden_states=audio_feature_batch).sample
recon = vae.decode_latents(pred_latents)
for res_frame in recon:
res_frame_queue.put(res_frame)
# Close the queue and sub-thread after all tasks are completed
process_thread.join()
if args.skip_save_images is True:
print('Total process time of {} frames without saving images = {}s'.format(
video_num,
time.time()-start_time))
else:
print('Total process time of {} frames including saving images = {}s'.format(
video_num,
time.time()-start_time))
if out_vid_name is not None and args.skip_save_images is False:
# optional
cmd_img2video = f"ffmpeg -y -v warning -r {fps} -f image2 -i {self.avatar_path}/tmp/%08d.png -vcodec libx264 -vf format=rgb24,scale=out_color_matrix=bt709,format=yuv420p -crf 18 {self.avatar_path}/temp.mp4"
print(cmd_img2video)
os.system(cmd_img2video)
output_vid = os.path.join(self.video_out_path, out_vid_name+".mp4") # on
cmd_combine_audio = f"ffmpeg -y -v warning -i {audio_path} -i {self.avatar_path}/temp.mp4 {output_vid}"
print(cmd_combine_audio)
os.system(cmd_combine_audio)
os.remove(f"{self.avatar_path}/temp.mp4")
shutil.rmtree(f"{self.avatar_path}/tmp")
print(f"result is save to {output_vid}")
print("\n")
if __name__ == "__main__":
'''
This script is used to simulate online chatting and applies necessary pre-processing such as face detection and face parsing in advance. During online chatting, only UNet and the VAE decoder are involved, which makes MuseTalk real-time.
'''
parser = argparse.ArgumentParser()
parser.add_argument("--inference_config",
type=str,
default="configs/inference/realtime.yaml",
)
parser.add_argument("--fps",
type=int,
default=25,
)
parser.add_argument("--batch_size",
type=int,
default=4,
)
parser.add_argument("--skip_save_images",
action="store_true",
help="Whether skip saving images for better generation speed calculation",
)
args = parser.parse_args()
inference_config = OmegaConf.load(args.inference_config)
print(inference_config)
for avatar_id in inference_config:
data_preparation = inference_config[avatar_id]["preparation"]
video_path = inference_config[avatar_id]["video_path"]
bbox_shift = inference_config[avatar_id]["bbox_shift"]
avatar = Avatar(
avatar_id = avatar_id,
video_path = video_path,
bbox_shift = bbox_shift,
batch_size = args.batch_size,
preparation= data_preparation)
audio_clips = inference_config[avatar_id]["audio_clips"]
for audio_num, audio_path in audio_clips.items():
print("Inferring using:",audio_path)
avatar.inference(audio_path,
audio_num,
args.fps,
args.skip_save_images)
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