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import argparse
import cv2
import numpy as np
import os
import onnxruntime as ort
from axengine import InferenceSession
import numpy as np
import cv2
import argparse
import os.path as osp
from loguru import logger
from numpy import ndarray
import pickle as pkl
import torch
import torch.nn.functional as F
from cropper import Cropper
import imageio
import subprocess
from utils.timer import Timer
from typing import Union
from scipy.spatial import ConvexHull # pylint: disable=E0401,E0611
appearance_feature_extractor, motion_extractor, warping_module, spade_generator, stitching_retargeting_module = None, None, None, None, None
def parse_args() -> argparse.Namespace:
parser = argparse.ArgumentParser(
prog="LivePortrait",
description="LivePortrait: A Real-time 3D Live Portrait Animation System"
)
parser.add_argument(
"--source",
type=str,
required=True,
help="Path to source image.",
)
parser.add_argument(
"--driving",
type=str,
required=True,
help="Path to driving image.",
)
parser.add_argument(
"--models",
type=str,
required=True,
help="Path to onnx models.",
)
parser.add_argument(
"--output-dir",
type=str,
default="./output",
help="Path to infer results.",
)
return parser.parse_args()
def images2video(images, wfp, **kwargs):
fps = kwargs.get('fps', 30)
video_format = kwargs.get('format', 'mp4') # default is mp4 format
codec = kwargs.get('codec', 'libx264') # default is libx264 encoding
quality = kwargs.get('quality') # video quality
pixelformat = kwargs.get('pixelformat', 'yuv420p') # video pixel format
image_mode = kwargs.get('image_mode', 'rgb')
macro_block_size = kwargs.get('macro_block_size', 2)
ffmpeg_params = ['-crf', str(kwargs.get('crf', 18))]
writer = imageio.get_writer(
wfp, fps=fps, format=video_format,
codec=codec, quality=quality, ffmpeg_params=ffmpeg_params, pixelformat=pixelformat, macro_block_size=macro_block_size
)
n = len(images)
for i in range(n):
if image_mode.lower() == 'bgr':
writer.append_data(images[i][..., ::-1])
else:
writer.append_data(images[i])
writer.close()
def has_audio_stream(video_path: str) -> bool:
"""
Check if the video file contains an audio stream.
:param video_path: Path to the video file
:return: True if the video contains an audio stream, False otherwise
"""
if osp.isdir(video_path):
return False
cmd = [
'ffprobe',
'-v', 'error',
'-select_streams', 'a',
'-show_entries', 'stream=codec_type',
'-of', 'default=noprint_wrappers=1:nokey=1',
f'"{video_path}"'
]
try:
# result = subprocess.run(cmd, capture_output=True, text=True)
result = exec_cmd(' '.join(cmd))
if result.returncode != 0:
logger.info(f"Error occurred while probing video: {result.stderr}")
return False
# Check if there is any output from ffprobe command
return bool(result.stdout.strip())
except Exception as e:
logger.info(
f"Error occurred while probing video: {video_path}, "
"you may need to install ffprobe! (https://ffmpeg.org/download.html) "
"Now set audio to false!",
style="bold red"
)
return False
def tensor_to_numpy(data: Union[np.ndarray, torch.Tensor]) -> np.ndarray:
"""transform torch.Tensor into numpy.ndarray"""
if isinstance(data, torch.Tensor):
return data.data.cpu().numpy()
return data
def calc_motion_multiplier(
kp_source: Union[np.ndarray, torch.Tensor],
kp_driving_initial: Union[np.ndarray, torch.Tensor]
) -> float:
"""calculate motion_multiplier based on the source image and the first driving frame"""
kp_source_np = tensor_to_numpy(kp_source)
kp_driving_initial_np = tensor_to_numpy(kp_driving_initial)
source_area = ConvexHull(kp_source_np.squeeze(0)).volume
driving_area = ConvexHull(kp_driving_initial_np.squeeze(0)).volume
motion_multiplier = np.sqrt(source_area) / np.sqrt(driving_area)
# motion_multiplier = np.cbrt(source_area) / np.cbrt(driving_area)
return motion_multiplier
def load_video(video_info, n_frames=-1):
reader = imageio.get_reader(video_info, "ffmpeg")
ret = []
for idx, frame_rgb in enumerate(reader):
if n_frames > 0 and idx >= n_frames:
break
ret.append(frame_rgb)
reader.close()
return ret
def fast_check_ffmpeg():
try:
subprocess.run(["ffmpeg", "-version"], capture_output=True, check=True)
return True
except:
return False
def is_video(file_path):
if file_path.lower().endswith((".mp4", ".mov", ".avi", ".webm")) or osp.isdir(file_path):
return True
return False
def is_image(file_path):
image_extensions = ('.jpg', '.jpeg', '.png', '.gif', '.bmp', '.tiff', '.webp')
return file_path.lower().endswith(image_extensions)
def get_fps(filepath, default_fps=25):
try:
fps = cv2.VideoCapture(filepath).get(cv2.CAP_PROP_FPS)
if fps in (0, None):
fps = default_fps
except Exception as e:
logger.info(e)
fps = default_fps
return fps
def calculate_distance_ratio(lmk: np.ndarray, idx1: int, idx2: int, idx3: int, idx4: int, eps: float = 1e-6) -> np.ndarray:
return (np.linalg.norm(lmk[:, idx1] - lmk[:, idx2], axis=1, keepdims=True) /
(np.linalg.norm(lmk[:, idx3] - lmk[:, idx4], axis=1, keepdims=True) + eps))
def calc_eye_close_ratio(lmk: np.ndarray, target_eye_ratio: np.ndarray = None) -> np.ndarray:
lefteye_close_ratio = calculate_distance_ratio(lmk, 6, 18, 0, 12)
righteye_close_ratio = calculate_distance_ratio(lmk, 30, 42, 24, 36)
if target_eye_ratio is not None:
return np.concatenate([lefteye_close_ratio, righteye_close_ratio, target_eye_ratio], axis=1)
else:
return np.concatenate([lefteye_close_ratio, righteye_close_ratio], axis=1)
def calc_lip_close_ratio(lmk: np.ndarray) -> np.ndarray:
return calculate_distance_ratio(lmk, 90, 102, 48, 66)
def concat_frames(driving_image_lst, source_image_lst, I_p_lst):
# TODO: add more concat style, e.g., left-down corner driving
out_lst = []
h, w, _ = I_p_lst[0].shape
source_image_resized_lst = [cv2.resize(img, (w, h)) for img in source_image_lst]
for idx, _ in enumerate(I_p_lst):
I_p = I_p_lst[idx]
source_image_resized = source_image_resized_lst[idx] if len(source_image_lst) > 1 else source_image_resized_lst[0]
if driving_image_lst is None:
out = np.hstack((source_image_resized, I_p))
else:
driving_image = driving_image_lst[idx]
driving_image_resized = cv2.resize(driving_image, (w, h))
out = np.hstack((driving_image_resized, source_image_resized, I_p))
out_lst.append(out)
return out_lst
def concat_feat(kp_source: torch.Tensor, kp_driving: torch.Tensor) -> torch.Tensor:
"""
kp_source: (bs, k, 3)
kp_driving: (bs, k, 3)
Return: (bs, 2k*3)
"""
bs_src = kp_source.shape[0]
bs_dri = kp_driving.shape[0]
assert bs_src == bs_dri, 'batch size must be equal'
feat = torch.cat([kp_source.view(bs_src, -1), kp_driving.view(bs_dri, -1)], dim=1)
return feat
DTYPE = np.float32
CV2_INTERP = cv2.INTER_LINEAR
def _transform_img(img, M, dsize, flags=CV2_INTERP, borderMode=None):
""" conduct similarity or affine transformation to the image, do not do border operation!
img:
M: 2x3 matrix or 3x3 matrix
dsize: target shape (width, height)
"""
if isinstance(dsize, tuple) or isinstance(dsize, list):
_dsize = tuple(dsize)
else:
_dsize = (dsize, dsize)
if borderMode is not None:
return cv2.warpAffine(img, M[:2, :], dsize=_dsize, flags=flags, borderMode=borderMode, borderValue=(0, 0, 0))
else:
return cv2.warpAffine(img, M[:2, :], dsize=_dsize, flags=flags)
def prepare_paste_back(mask_crop, crop_M_c2o, dsize):
"""prepare mask for later image paste back
"""
mask_ori = _transform_img(mask_crop, crop_M_c2o, dsize)
mask_ori = mask_ori.astype(np.float32) / 255.
return mask_ori
def paste_back(img_crop, M_c2o, img_ori, mask_ori):
"""paste back the image
"""
dsize = (img_ori.shape[1], img_ori.shape[0])
result = _transform_img(img_crop, M_c2o, dsize=dsize)
result = np.clip(mask_ori * result + (1 - mask_ori) * img_ori, 0, 255).astype(np.uint8)
return result
def prefix(filename):
"""a.jpg -> a"""
pos = filename.rfind(".")
if pos == -1:
return filename
return filename[:pos]
def basename(filename):
"""a/b/c.jpg -> c"""
return prefix(osp.basename(filename))
def mkdir(d, log=False):
# return self-assined `d`, for one line code
if not osp.exists(d):
os.makedirs(d, exist_ok=True)
if log:
logger.info(f"Make dir: {d}")
return d
def dct2device(dct: dict, device):
for key in dct:
if isinstance(dct[key], torch.Tensor):
dct[key] = dct[key].to(device)
else:
dct[key] = torch.tensor(dct[key]).to(device)
return dct
PI = np.pi
def headpose_pred_to_degree(pred):
"""
pred: (bs, 66) or (bs, 1) or others
"""
if pred.ndim > 1 and pred.shape[1] == 66:
# NOTE: note that the average is modified to 97.5
device = pred.device
idx_tensor = [idx for idx in range(0, 66)]
idx_tensor = torch.FloatTensor(idx_tensor).to(device)
pred = F.softmax(pred, dim=1)
degree = torch.sum(pred*idx_tensor, axis=1) * 3 - 97.5
return degree
return pred
def get_rotation_matrix(pitch_, yaw_, roll_):
""" the input is in degree
"""
# transform to radian
pitch = pitch_ / 180 * PI
yaw = yaw_ / 180 * PI
roll = roll_ / 180 * PI
device = pitch.device
if pitch.ndim == 1:
pitch = pitch.unsqueeze(1)
if yaw.ndim == 1:
yaw = yaw.unsqueeze(1)
if roll.ndim == 1:
roll = roll.unsqueeze(1)
# calculate the euler matrix
bs = pitch.shape[0]
ones = torch.ones([bs, 1]).to(device)
zeros = torch.zeros([bs, 1]).to(device)
x, y, z = pitch, yaw, roll
rot_x = torch.cat([
ones, zeros, zeros,
zeros, torch.cos(x), -torch.sin(x),
zeros, torch.sin(x), torch.cos(x)
], dim=1).reshape([bs, 3, 3])
rot_y = torch.cat([
torch.cos(y), zeros, torch.sin(y),
zeros, ones, zeros,
-torch.sin(y), zeros, torch.cos(y)
], dim=1).reshape([bs, 3, 3])
rot_z = torch.cat([
torch.cos(z), -torch.sin(z), zeros,
torch.sin(z), torch.cos(z), zeros,
zeros, zeros, ones
], dim=1).reshape([bs, 3, 3])
rot = rot_z @ rot_y @ rot_x
return rot.permute(0, 2, 1) # transpose
def make_abs_path(fn):
return osp.join(osp.dirname(osp.realpath(__file__)), fn)
def load_image_rgb(image_path: str):
if not osp.exists(image_path):
raise FileNotFoundError(f"Image not found: {image_path}")
img = cv2.imread(image_path, cv2.IMREAD_COLOR)
return cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
def resize_to_limit(img: np.ndarray, max_dim=1920, division=2):
"""
ajust the size of the image so that the maximum dimension does not exceed max_dim, and the width and the height of the image are multiples of n.
:param img: the image to be processed.
:param max_dim: the maximum dimension constraint.
:param n: the number that needs to be multiples of.
:return: the adjusted image.
"""
h, w = img.shape[:2]
# ajust the size of the image according to the maximum dimension
if max_dim > 0 and max(h, w) > max_dim:
if h > w:
new_h = max_dim
new_w = int(w * (max_dim / h))
else:
new_w = max_dim
new_h = int(h * (max_dim / w))
img = cv2.resize(img, (new_w, new_h))
# ensure that the image dimensions are multiples of n
division = max(division, 1)
new_h = img.shape[0] - (img.shape[0] % division)
new_w = img.shape[1] - (img.shape[1] % division)
if new_h == 0 or new_w == 0:
# when the width or height is less than n, no need to process
return img
if new_h != img.shape[0] or new_w != img.shape[1]:
img = img[:new_h, :new_w]
return img
def preprocess(input_data):
img_rgb = load_image_rgb(input_data)
img_rgb = resize_to_limit(img_rgb)
return [img_rgb]
def postprocess(output_data):
# Implement your postprocessing steps here
# For example, you might convert the output to a specific format
return output_data
def infer(model, input_data):
input_name = model.get_inputs()[0].name
output_name = model.get_outputs()[0].name
input_data = preprocess(input_data) # rgb, resize & limit
result = model.run([output_name], {input_name: input_data})
return postprocess(result)
def partial_fields(target_class, kwargs):
return target_class(**{k: v for k, v in kwargs.items() if hasattr(target_class, k)})
def calc_ratio(lmk_lst):
input_eye_ratio_lst = []
input_lip_ratio_lst = []
for lmk in lmk_lst:
# for eyes retargeting
input_eye_ratio_lst.append(calc_eye_close_ratio(lmk[None]))
# for lip retargeting
input_lip_ratio_lst.append(calc_lip_close_ratio(lmk[None]))
return input_eye_ratio_lst, input_lip_ratio_lst
def prepare_videos(imgs) -> torch.Tensor:
""" construct the input as standard
imgs: NxBxHxWx3, uint8
"""
device = "cpu"
if isinstance(imgs, list):
_imgs = np.array(imgs)[..., np.newaxis] # TxHxWx3x1
elif isinstance(imgs, np.ndarray):
_imgs = imgs
else:
raise ValueError(f'imgs type error: {type(imgs)}')
y = _imgs.astype(np.float32) / 255.
y = np.clip(y, 0, 1) # clip to 0~1
y = torch.from_numpy(y).permute(0, 4, 3, 1, 2) # TxHxWx3x1 -> Tx1x3xHxW
y = y.to(device)
return y
def get_kp_info(x: torch.Tensor) -> dict:
""" get the implicit keypoint information
x: Bx3xHxW, normalized to 0~1
flag_refine_info: whether to trandform the pose to degrees and the dimention of the reshape
return: A dict contains keys: 'pitch', 'yaw', 'roll', 't', 'exp', 'scale', 'kp'
"""
outs = motion_extractor.run(None, input_feed={"input": x.numpy()}) # TODO: axengine 中的 run 输入参数与 ort 还是些许不同
# import pdb; pdb.set_trace()
# outs = list(outs.values())
kp_info = {}
kp_info['pitch'] = torch.from_numpy(outs[0])
kp_info['yaw'] = torch.from_numpy(outs[1])
kp_info['roll'] = torch.from_numpy(outs[2])
kp_info['t'] = torch.from_numpy(outs[3])
kp_info['exp'] = torch.from_numpy(outs[4])
kp_info['scale'] = torch.from_numpy(outs[5])
kp_info['kp'] = torch.from_numpy(outs[6])
flag_refine_info: bool = True
if flag_refine_info:
bs = kp_info['kp'].shape[0]
kp_info['pitch'] = headpose_pred_to_degree(kp_info['pitch'])[:, None] # Bx1
kp_info['yaw'] = headpose_pred_to_degree(kp_info['yaw'])[:, None] # Bx1
kp_info['roll'] = headpose_pred_to_degree(kp_info['roll'])[:, None] # Bx1
kp_info['kp'] = kp_info['kp'].reshape(bs, -1, 3) # BxNx3
kp_info['exp'] = kp_info['exp'].reshape(bs, -1, 3) # BxNx3
return kp_info
def transform_keypoint(kp_info: dict):
"""
transform the implicit keypoints with the pose, shift, and expression deformation
kp: BxNx3
"""
kp = kp_info['kp'] # (bs, k, 3)
pitch, yaw, roll = kp_info['pitch'], kp_info['yaw'], kp_info['roll']
t, exp = kp_info['t'], kp_info['exp']
scale = kp_info['scale']
pitch = headpose_pred_to_degree(pitch)
yaw = headpose_pred_to_degree(yaw)
roll = headpose_pred_to_degree(roll)
bs = kp.shape[0]
if kp.ndim == 2:
num_kp = kp.shape[1] // 3 # Bx(num_kpx3)
else:
num_kp = kp.shape[1] # Bxnum_kpx3
rot_mat = get_rotation_matrix(pitch, yaw, roll) # (bs, 3, 3), 欧拉角转换为旋转矩阵
# Eqn.2: s * (R * x_c,s + exp) + t
kp_transformed = kp.view(bs, num_kp, 3) @ rot_mat + exp.view(bs, num_kp, 3)
kp_transformed *= scale[..., None] # (bs, k, 3) * (bs, 1, 1) = (bs, k, 3)
kp_transformed[:, :, 0:2] += t[:, None, 0:2] # remove z, only apply tx ty
return kp_transformed
def make_motion_template(I_lst, c_eyes_lst, c_lip_lst, **kwargs):
n_frames = I_lst.shape[0]
template_dct = {
'n_frames': n_frames,
'output_fps': kwargs.get('output_fps', 25),
'motion': [],
'c_eyes_lst': [],
'c_lip_lst': [],
}
for i in range(n_frames):
# collect s, R, δ and t for inference
I_i = I_lst[i]
x_i_info = get_kp_info(I_i)
x_s = transform_keypoint(x_i_info)
R_i = get_rotation_matrix(x_i_info['pitch'], x_i_info['yaw'], x_i_info['roll'])
item_dct = {
'scale': x_i_info['scale'].cpu().numpy().astype(np.float32),
'R': R_i.cpu().numpy().astype(np.float32),
'exp': x_i_info['exp'].cpu().numpy().astype(np.float32),
't': x_i_info['t'].cpu().numpy().astype(np.float32),
'kp': x_i_info['kp'].cpu().numpy().astype(np.float32),
'x_s': x_s.cpu().numpy().astype(np.float32),
}
template_dct['motion'].append(item_dct)
c_eyes = c_eyes_lst[i].astype(np.float32)
template_dct['c_eyes_lst'].append(c_eyes)
c_lip = c_lip_lst[i].astype(np.float32)
template_dct['c_lip_lst'].append(c_lip)
return template_dct
def prepare_source(img: np.ndarray) -> torch.Tensor:
""" construct the input as standard
img: HxWx3, uint8, 256x256
"""
device = "cpu"
h, w = img.shape[:2]
x = img.copy()
if x.ndim == 3:
x = x[np.newaxis].astype(np.float32) / 255. # HxWx3 -> 1xHxWx3, normalized to 0~1
elif x.ndim == 4:
x = x.astype(np.float32) / 255. # BxHxWx3, normalized to 0~1
else:
raise ValueError(f'img ndim should be 3 or 4: {x.ndim}')
x = np.clip(x, 0, 1) # clip to 0~1
x = torch.from_numpy(x).permute(0, 3, 1, 2) # 1xHxWx3 -> 1x3xHxW
x = x.to(device)
return x
def extract_feature_3d(x: torch.Tensor) -> torch.Tensor:
""" get the appearance feature of the image by F
x: Bx3xHxW, normalized to 0~1
"""
outs = appearance_feature_extractor.run(None, input_feed={"input": x.numpy()})[0]
# outs = list(outs.values())[0]
# import pdb; pdb.set_trace()
return torch.from_numpy(outs)
def stitch(kp_source: torch.Tensor, kp_driving: torch.Tensor) -> torch.Tensor:
"""
kp_source: BxNx3
kp_driving: BxNx3
Return: Bx(3*num_kp+2)
"""
feat_stiching = concat_feat(kp_source, kp_driving)
delta = stitching_retargeting_module.run(None, input_feed={"input": feat_stiching.numpy()})[0]
# delta = list(delta.values())[0]
return torch.from_numpy(delta)
def stitching(kp_source: torch.Tensor, kp_driving: torch.Tensor) -> torch.Tensor:
""" conduct the stitching
kp_source: Bxnum_kpx3
kp_driving: Bxnum_kpx3
"""
bs, num_kp = kp_source.shape[:2]
kp_driving_new = kp_driving.clone()
delta = stitch(kp_source, kp_driving_new)
delta_exp = delta[..., :3*num_kp].reshape(bs, num_kp, 3) # 1x20x3
delta_tx_ty = delta[..., 3*num_kp:3*num_kp+2].reshape(bs, 1, 2) # 1x1x2
kp_driving_new += delta_exp
kp_driving_new[..., :2] += delta_tx_ty
return kp_driving_new
def warp_decode(feature_3d: torch.Tensor, kp_source: torch.Tensor, kp_driving: torch.Tensor) -> torch.Tensor:
""" get the image after the warping of the implicit keypoints
feature_3d: Bx32x16x64x64, feature volume
kp_source: BxNx3
kp_driving: BxNx3
"""
warp_timer = Timer()
warp_timer.tic()
outs = warping_module.run([], {"feature_3d": feature_3d.numpy(), "kp_driving": kp_driving.numpy(), "kp_source": kp_source.numpy()})[2]
warp_timer.toc()
logger.debug(f'warp time: {warp_timer.diff:.3f}s')
# outs = warping_module.run(input_feed={"feature_3d": feature_3d.numpy(), "kp_driving": kp_driving.numpy(), "kp_source": kp_source.numpy()})['out']
outs = spade_generator.run(None, input_feed={"input": outs})[0]
# outs = list(outs.values())[0]
ret_dct = {}
ret_dct['out'] = torch.from_numpy(outs)
return ret_dct
def parse_output(out: torch.Tensor) -> np.ndarray:
""" construct the output as standard
return: 1xHxWx3, uint8
"""
out = np.transpose(out.data.cpu().numpy(), [0, 2, 3, 1]) # 1x3xHxW -> 1xHxWx3
out = np.clip(out, 0, 1) # clip to 0~1
out = np.clip(out * 255, 0, 255).astype(np.uint8) # 0~1 -> 0~255
return out
def load_model(model_type, model_path=None):
if model_type == 'appearance_feature_extractor':
model = InferenceSession(f"{model_path}/feature_extractor.axmodel")
elif model_type == 'motion_extractor':
model = InferenceSession(f'{model_path}/motion_extractor.axmodel')
elif model_type == 'warping_module':
model = ort.InferenceSession(f'{model_path}/warp.onnx', providers=["CPUExecutionProvider"])
# model = InferenceSession(f'{model_path}/warp.axmodel')
elif model_type == 'spade_generator':
model = InferenceSession(f'{model_path}/spade_generator.axmodel')
elif model_type == 'stitching_retargeting_module':
model = InferenceSession(f'{model_path}/stitching_retargeting.axmodel')
return model
def main():
args = parse_args()
global appearance_feature_extractor
appearance_feature_extractor = load_model("appearance_feature_extractor", args.models)
global motion_extractor
motion_extractor = load_model("motion_extractor", args.models)
global warping_module
warping_module = load_model("warping_module", args.models)
global spade_generator
spade_generator = load_model("spade_generator", args.models)
global stitching_retargeting_module
stitching_retargeting_module = load_model("stitching_retargeting_module", args.models)
source = args.source
driving = args.driving
ffmpeg_dir = os.path.join(os.getcwd(), "ffmpeg")
if osp.exists(ffmpeg_dir):
os.environ["PATH"] += (os.pathsep + ffmpeg_dir)
if not fast_check_ffmpeg():
raise ImportError(
"FFmpeg is not installed. Please install FFmpeg (including ffmpeg and ffprobe) before running this script. https://ffmpeg.org/download.html"
)
source_rgb_lst = preprocess(source) # rgb, resize & limit
if is_video(args.driving):
flag_is_driving_video = True
# load from video file, AND make motion template
output_fps = int(get_fps(args.driving))
driving_rgb_lst = load_video(args.driving)
elif is_image(args.driving):
flag_is_driving_video = False
output_fps = 25
driving_rgb_lst = [load_image_rgb(driving)] # rgb
else:
raise Exception(f"{args.driving} is not a supported type!")
######## make motion template ########
cropper: Cropper = Cropper()
logger.info("Start making driving motion template...")
driving_n_frames = len(driving_rgb_lst)
n_frames = driving_n_frames
driving_lmk_crop_lst = cropper.calc_lmks_from_cropped_video(driving_rgb_lst) # cropper.
driving_rgb_crop_256x256_lst = [cv2.resize(_, (256, 256)) for _ in driving_rgb_lst] # force to resize to 256x256
#######################################
c_d_eyes_lst, c_d_lip_lst = calc_ratio(driving_lmk_crop_lst)
# save the motion template
I_d_lst = prepare_videos(driving_rgb_crop_256x256_lst)
driving_template_dct = make_motion_template(I_d_lst, c_d_eyes_lst, c_d_lip_lst, output_fps=output_fps)
# wfp_template = remove_suffix(args.driving) + '.pkl'
# dump(wfp_template, driving_template_dct)
# logger.info(f"Dump motion template to {wfp_template}")
if not flag_is_driving_video:
c_d_eyes_lst = c_d_eyes_lst * n_frames
c_d_lip_lst = c_d_lip_lst * n_frames
I_p_pstbk_lst = []
logger.info("Prepared pasteback mask done.")
I_p_lst = []
R_d_0, x_d_0_info = None, None
flag_normalize_lip = False # inf_cfg.flag_normalize_lip # not overwrite
flag_source_video_eye_retargeting = False # inf_cfg.flag_source_video_eye_retargeting # not overwrite
lip_delta_before_animation, eye_delta_before_animation = None, None
######## process source info ########
# if the input is a source image, process it only once
flag_do_crop = True
if flag_do_crop:
crop_info = cropper.crop_source_image(source_rgb_lst[0])
if crop_info is None:
raise Exception("No face detected in the source image!")
source_lmk = crop_info['lmk_crop']
img_crop_256x256 = crop_info['img_crop_256x256']
else:
source_lmk = cropper.calc_lmk_from_cropped_image(source_rgb_lst[0])
img_crop_256x256 = cv2.resize(source_rgb_lst[0], (256, 256)) # force to resize to 256x256
I_s = prepare_source(img_crop_256x256)
x_s_info = get_kp_info(I_s)
x_c_s = x_s_info['kp']
R_s = get_rotation_matrix(x_s_info['pitch'], x_s_info['yaw'], x_s_info['roll'])
f_s = extract_feature_3d(I_s)
x_s = transform_keypoint(x_s_info)
# let lip-open scalar to be 0 at first
mask_crop: ndarray = cv2.imread(make_abs_path('./utils/resources/mask_template.png'), cv2.IMREAD_COLOR)
mask_ori_float = prepare_paste_back(mask_crop, crop_info['M_c2o'], dsize=(source_rgb_lst[0].shape[1], source_rgb_lst[0].shape[0]))
with open(make_abs_path('./utils/resources/lip_array.pkl'), 'rb') as f:
lip_array = pkl.load(f)
device = "cpu"
flag_is_source_video = False
######## animate ########
if flag_is_driving_video: # or (flag_is_source_video and not flag_is_driving_video)
logger.info(f"The animated video consists of {n_frames} frames.")
else:
logger.info(f"The output of image-driven portrait animation is an image.")
for i in range(n_frames):
x_d_i_info = driving_template_dct['motion'][i]
x_d_i_info = dct2device(x_d_i_info, device)
R_d_i = x_d_i_info['R'] if 'R' in x_d_i_info.keys() else x_d_i_info['R_d'] # compatible with previous keys
if i == 0: # cache the first frame
R_d_0 = R_d_i
x_d_0_info = x_d_i_info.copy()
delta_new = x_s_info['exp'].clone()
R_new = x_d_r_lst_smooth[i] if flag_is_source_video else (R_d_i @ R_d_0.permute(0, 2, 1)) @ R_s
if flag_is_driving_video:
delta_new = x_s_info['exp'] + (x_d_i_info['exp'] - x_d_0_info['exp'])
else:
delta_new = x_s_info['exp'] + (x_d_i_info['exp'] - torch.from_numpy(lip_array).to(dtype=torch.float32, device=device))
# delta_new = x_s_info['exp'] + (x_d_i_info['exp'] - torch.from_numpy(lip_array).to(dtype=torch.float32, device=device))
scale_new = x_s_info['scale'] if flag_is_source_video else x_s_info['scale'] * (x_d_i_info['scale'] / x_d_0_info['scale'])
t_new = x_s_info['t'] if flag_is_source_video else x_s_info['t'] + (x_d_i_info['t'] - x_d_0_info['t'])
t_new[..., 2].fill_(0) # zero tz
x_d_i_new = scale_new * (x_c_s @ R_new + delta_new) + t_new
if i == 0 and flag_is_driving_video:
x_d_0_new = x_d_i_new
motion_multiplier = calc_motion_multiplier(x_s, x_d_0_new)
# motion_multiplier *= inf_cfg.driving_multiplier
x_d_diff = (x_d_i_new - x_d_0_new) * motion_multiplier
x_d_i_new = x_d_diff + x_s
# Algorithm 1:
# with stitching and without retargeting
x_d_i_new = stitching(x_s, x_d_i_new)
x_d_i_new = x_s + (x_d_i_new - x_s) * 1.0
out = warp_decode(f_s, x_s, x_d_i_new)
I_p_i = parse_output(out['out'])[0]
I_p_lst.append(I_p_i)
I_p_pstbk = paste_back(I_p_i, crop_info['M_c2o'], source_rgb_lst[0], mask_ori_float)
I_p_pstbk_lst.append(I_p_pstbk)
mkdir(args.output_dir)
wfp_concat = None
######### build the final concatenation result #########
# driving frame | source frame | generation
frames_concatenated = concat_frames(driving_rgb_crop_256x256_lst, [img_crop_256x256], I_p_lst)
if flag_is_driving_video or (flag_is_source_video and not flag_is_driving_video):
flag_source_has_audio = flag_is_source_video and has_audio_stream(args.source)
flag_driving_has_audio = has_audio_stream(args.driving)
wfp_concat = osp.join(args.output_dir, f'{basename(args.source)}--{basename(args.driving)}_concat.mp4')
# NOTE: update output fps
output_fps = source_fps if flag_is_source_video else output_fps
images2video(frames_concatenated, wfp=wfp_concat, fps=output_fps)
if flag_source_has_audio or flag_driving_has_audio:
# final result with concatenation
wfp_concat_with_audio = osp.join(args.output_dir, f'{basename(args.source)}--{basename(args.driving)}_concat_with_audio.mp4')
audio_from_which_video = args.driving if ((flag_driving_has_audio and args.audio_priority == 'driving') or (not flag_source_has_audio)) else args.source
logger.info(f"Audio is selected from {audio_from_which_video}, concat mode")
add_audio_to_video(wfp_concat, audio_from_which_video, wfp_concat_with_audio)
os.replace(wfp_concat_with_audio, wfp_concat)
logger.info(f"Replace {wfp_concat_with_audio} with {wfp_concat}")
# save the animated result
wfp = osp.join(args.output_dir, f'{basename(args.source)}--{basename(args.driving)}.mp4')
if I_p_pstbk_lst is not None and len(I_p_pstbk_lst) > 0:
images2video(I_p_pstbk_lst, wfp=wfp, fps=output_fps)
else:
images2video(I_p_lst, wfp=wfp, fps=output_fps)
######### build the final result #########
if flag_source_has_audio or flag_driving_has_audio:
wfp_with_audio = osp.join(args.output_dir, f'{basename(args.source)}--{basename(args.driving)}_with_audio.mp4')
audio_from_which_video = args.driving if ((flag_driving_has_audio and args.audio_priority == 'driving') or (not flag_source_has_audio)) else args.source
logger.info(f"Audio is selected from {audio_from_which_video}")
add_audio_to_video(wfp, audio_from_which_video, wfp_with_audio)
os.replace(wfp_with_audio, wfp)
logger.info(f"Replace {wfp_with_audio} with {wfp}")
# final log
# if wfp_template not in (None, ''):
# logger.info(f'Animated template: {wfp_template}, you can specify `-d` argument with this template path next time to avoid cropping video, motion making and protecting privacy.', style='bold green')
logger.info(f'Animated video: {wfp}')
logger.info(f'Animated video with concat: {wfp_concat}')
else:
wfp_concat = osp.join(args.output_dir, f'{basename(source)}--{basename(driving)}_concat.jpg')
cv2.imwrite(wfp_concat, frames_concatenated[0][..., ::-1])
wfp = osp.join(args.output_dir, f'{basename(source)}--{basename(driving)}.jpg')
if I_p_pstbk_lst is not None and len(I_p_pstbk_lst) > 0:
cv2.imwrite(wfp, I_p_pstbk_lst[0][..., ::-1])
else:
cv2.imwrite(wfp, frames_concatenated[0][..., ::-1])
# final log
logger.info(f'Animated image: {wfp}')
logger.info(f'Animated image with concat: {wfp_concat}')
if __name__ == "__main__":
"""
Usage:
python3 infer.py --source ../assets/examples/source/s0.jpg --driving ../assets/examples/driving/d8.jpg --models ./axmdoels --output-dir ./axmodel_infer
"""
timer = Timer()
timer.tic()
main()
elapse = timer.toc()
logger.debug(f'LivePortrait axmodel infer time: {elapse:.3f}s')
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