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utils.py
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utils.py
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import os
import random
import numpy as np
import csv
import cv2
import pdb
from collections import defaultdict
import sys
from tqdm import tqdm
from PIL import Image
import depth
import torch.nn as nn
from skimage.transform import resize
import torchvision.transforms as T
import torch
import matplotlib.pyplot as plt
import matplotlib as mpl
import matplotlib.cm as cm
import math
import imageio
from skimage import io, img_as_float32
from skimage.color import gray2rgb
from sklearn.model_selection import train_test_split
from imageio import mimread,imsave
import pandas as pd
from scipy.spatial import ConvexHull
def count_test_video(path):
vis = {video[:video.find('#',8)] for video in
os.listdir(path)}
print(vis)
print(len(vis))
def create_same_id_test_set(path):
vis = os.listdir(path)
videos = np.random.choice(vis, replace=False, size=100)
f = open('./data/vox_evaluation.csv','w',encoding='utf-8')
source = []
driving = []
csv_writer = csv.writer(f)
csv_writer.writerow(["source","driving","frame"])
for i in range(2083):
v = np.random.choice(videos, replace=False, size=1)
imgs = os.listdir(os.path.join(path,v[0]))
pair = np.random.choice(imgs, replace=False, size=2)
src = os.path.join(path,v[0],pair[0])
dst = os.path.join(path,v[0],pair[1])
source.append(src)
driving.append(dst)
sources = np.array(source).reshape(-1,1)
driving = np.array(driving).reshape(-1,1)
content = np.concatenate((sources,driving),1)
csv_writer.writerows(content)
f.close()
def create_cross_id_test_set(path):
vis = os.listdir(path)
ids2video = defaultdict(list)
num = len('id10283')
for vi in vis:
ids2video[vi[:num]].append(vi)
ids = list(ids2video.keys())
videos = np.random.choice(vis, replace=False, size=100)
f = open('./data/vox_cross_id_evaluation.csv','w',encoding='utf-8')
source = []
driving = []
csv_writer = csv.writer(f)
csv_writer.writerow(["source","driving","frame"])
for i in range(2083):
id = np.random.choice(ids, replace=False, size=1)
vis = np.random.choice(ids2video[id[0]], replace=False, size=1)
imgs = os.listdir(os.path.join(path,vis[0]))
img = np.random.choice(imgs, replace=False, size=1)
src = os.path.join(path,vis[0],img[0])
other_id = list(set(ids).difference(set(id)))
id = np.random.choice(other_id, replace=False, size=1)
vis = np.random.choice(ids2video[id[0]], replace=False, size=1)
imgs = os.listdir(os.path.join(path,vis[0]))
img = np.random.choice(imgs, replace=False, size=1)
dst = os.path.join(path,vis[0],img[0])
source.append(src)
driving.append(dst)
sources = np.array(source).reshape(-1,1)
driving = np.array(driving).reshape(-1,1)
content = np.concatenate((sources,driving),1)
csv_writer.writerows(content)
f.close()
def concate_compared_results(resust_path,cp_path):
imgs = os.listdir(resust_path)
for im in tqdm(imgs):
ours = cv2.imread(os.path.join(resust_path,im))
fomm = cv2.imread(os.path.join(cp_path,im))
rst = np.concatenate((ours,fomm),0).astype(np.uint8)
cv2.imwrite(os.path.join('FID/compare',im),rst)
def render(path):
depth_encoder = depth.ResnetEncoder(18, False).cuda()
depth_decoder = depth.DepthDecoder(num_ch_enc=depth_encoder.num_ch_enc, scales=range(4)).cuda()
loaded_dict_enc = torch.load('depth/models/weights_19/encoder.pth')
loaded_dict_dec = torch.load('depth/models/weights_19/depth.pth')
filtered_dict_enc = {k: v for k, v in loaded_dict_enc.items() if k in depth_encoder.state_dict()}
depth_encoder.load_state_dict(filtered_dict_enc)
depth_decoder.load_state_dict(loaded_dict_dec)
depth_encoder.eval()
depth_decoder.eval()
cvimg = cv2.resize(cv2.imread(path),(256,256))
img = Image.open(path).convert('RGB').resize((256,256))
tensor_img = T.ToTensor()(img).unsqueeze(0).cuda()
outputs = depth_decoder(depth_encoder(tensor_img))
depth_source = outputs[("disp", 0)][0]
depth_source = depth_source.permute(1,2,0).detach().cpu().numpy()
heatmap = depth_source/np.max(depth_source)
heatmap = np.uint8(255 * heatmap)
heatmap = cv2.applyColorMap(heatmap, cv2.COLORMAP_JET)
superimposed_img1 = heatmap*0.6+cvimg
cv2.imwrite('{}.jpg'.format(path),superimposed_img1)
def depth_gray(path):
depth_encoder = depth.ResnetEncoder(18, False).cuda()
depth_decoder = depth.DepthDecoder(num_ch_enc=depth_encoder.num_ch_enc, scales=range(4)).cuda()
loaded_dict_enc = torch.load('depth/models/weights_19/encoder.pth')
loaded_dict_dec = torch.load('depth/models/weights_19/depth.pth')
filtered_dict_enc = {k: v for k, v in loaded_dict_enc.items() if k in depth_encoder.state_dict()}
depth_encoder.load_state_dict(filtered_dict_enc)
depth_decoder.load_state_dict(loaded_dict_dec)
depth_encoder.eval()
depth_decoder.eval()
img = Image.open(path).convert('RGB').resize((256,256))
tensor_img = T.ToTensor()(img).unsqueeze(0).cuda()
outputs = depth_decoder(depth_encoder(tensor_img))
depth_source = outputs[("disp", 0)][0]
depth_source = depth_source.permute(1,2,0).detach().cpu().numpy()*depth_source.permute(1,2,0).detach().cpu().numpy()
heatmap = 1-depth_source/np.max(depth_source)
heatmap = np.uint8(255 * heatmap)
cv2.imwrite('heatmap.jpg',heatmap)
def depth_rgb(path):
depth_encoder = depth.ResnetEncoder(18, False).cuda()
depth_decoder = depth.DepthDecoder(num_ch_enc=depth_encoder.num_ch_enc, scales=range(4)).cuda()
loaded_dict_enc = torch.load('depth/models/weights_19/encoder.pth')
loaded_dict_dec = torch.load('depth/models/weights_19/depth.pth')
filtered_dict_enc = {k: v for k, v in loaded_dict_enc.items() if k in depth_encoder.state_dict()}
depth_encoder.load_state_dict(filtered_dict_enc)
depth_decoder.load_state_dict(loaded_dict_dec)
depth_encoder.eval()
depth_decoder.eval()
img = Image.open(path).convert('RGB').resize((256,256))
tensor_img = T.ToTensor()(img).unsqueeze(0).cuda()
outputs = depth_decoder(depth_encoder(tensor_img))
disp = outputs[("disp", 0)]
# Saving colormapped depth image
disp_resized = torch.nn.functional.interpolate(disp, (256, 256), mode="bilinear", align_corners=False)
disp_resized_np = disp_resized.squeeze().detach().cpu().numpy()
vmax = np.percentile(disp_resized_np, 95)
normalizer = mpl.colors.Normalize(vmin=disp_resized_np.min(), vmax=vmax)
mapper = cm.ScalarMappable(norm=normalizer, cmap='rainbow')
colormapped_im = (mapper.to_rgba(disp_resized_np)[:, :, :3] * 255).astype(np.uint8)
plt.axis('off')
plt.imshow(colormapped_im)
# plt.colorbar(mapper)
plt.savefig(path+'.pdf')
# plt.savefig(path+'.png')
plt.clf()
def process_celeV(path):
train_path = os.path.join(path,'train')
test_path = os.path.join(path,'test')
ids = os.listdir(path)
f = open('./data/celeV_cross_id_evaluation.csv','w',encoding='utf-8')
# sample 2000 image sets from each identity
# if not os.path.exists(train_path):
# os.makedirs(train_path)
# if not os.path.exists(test_path):
# os.makedirs(test_path)
source = []
driving = []
csv_writer = csv.writer(f)
csv_writer.writerow(["source","driving","frame"])
for i in range(2083):
src_id = np.random.choice(ids, replace=False, size=1)
imgs = os.listdir(os.path.join(path,src_id[0],'Image'))
src_imgs = np.random.choice(imgs, replace=False, size=1)
src = os.path.join(path,src_id[0],'Image',src_imgs[0])
res_ids = list(set(ids).difference(set(src_id)))
dst_id = np.random.choice(res_ids, replace=False, size=1)
imgs = os.listdir(os.path.join(path,dst_id[0],'Image'))
dst_imgs = np.random.choice(imgs, replace=False, size=1)
dst = os.path.join(path,dst_id[0],'Image',dst_imgs[0])
source.append(src)
driving.append(dst)
sources = np.array(source).reshape(-1,1)
driving = np.array(driving).reshape(-1,1)
content = np.concatenate((sources,driving),1)
csv_writer.writerows(content)
f.close()
def compare():
x2face = '/data/fhongac/workspace/gitrepo/X2Face/UnwrapMosaic/FID/celebv'
fomm = '/data/fhongac/workspace/gitrepo/first-order-model/FID/celebv'
osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/FID/celebv'
dagan = '/data/fhongac/workspace/src/parallel-fom-rgbd/log/vox-adv-256rgbd_kp_num15_rgbd_attnv2/celebv/concate'
imgs = os.listdir(x2face)
for i in tqdm(range(len(imgs))):
im = imgs[i]
img_x2face = os.path.join(x2face,im)
img_x2face = cv2.imread(img_x2face)
img_fomm = os.path.join(fomm,im)
img_fomm = cv2.imread(img_fomm)
img_osfv = os.path.join(osfv,im)
img_osfv = cv2.imread(img_osfv)
img_dagan = os.path.join(dagan,im)
img_dagan = cv2.imread(img_dagan)
img = np.vstack((img_x2face, img_fomm,img_osfv,img_dagan))
cv2.imwrite('FID/multiMethod/{}.jpg'.format(i),img)
def aus(path):
import cv2
frame = cv2.imread(path)
from feat import Detector
detector = Detector()
# image_prediction = detector.detect_image(path)
out1 = detector.detect_image('FID/source/0.jpg')
out1.plot_aus(12, muscles={'all': "heatmap"}, gaze = None)
plt.savefig('a.jpg')
out2 = detector.detect_image('FID/source/1.jpg')
p1 = out1.facepose.values
p2 = out2.facepose.values
# landmarks = detector.detect_landmarks(frame, face)
# score = detector.detect_aus(frame,landmarks[0])
def evaluate_PRMSE_AUCON():
from feat import Detector
detector = Detector()
# x2face = '/data/fhongac/workspace/gitrepo/X2Face/UnwrapMosaic/FID'
# fomm = '/data/fhongac/workspace/gitrepo/first-order-model/FID'
# osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/FID'
# dagan = '/data/fhongac/workspace/src/parallel-fom-rgbd/FID'
# test = dagan
path = sys.argv[1]
imgs = os.listdir(path+'/gt')
PRMSE = 0
AUCON = 0
counter = 1e-9
CSIM = 0
csim_counter = 1e-9
##########################################CSIM##############################################################
from facenet_pytorch import MTCNN, InceptionResnetV1
# If required, create a face detection pipeline using MTCNN:
mtcnn = MTCNN(image_size=256, margin=0)
# Create an inception resnet (in eval mode):
resnet = InceptionResnetV1(pretrained='vggface2').eval()
#####################################################################################################################
for im in tqdm(imgs):
try:
gt = os.path.join(path,'gt',im)
gen = os.path.join(path,'generate',im)
# gt_aus = detector.detect_aus(gt)
# generate_aus = detector.detect_aus(gen)
# gt_pose = detector.detect_facepose(gt, detected_faces=None, landmarks=None)
# gt_pose = detector.detect_facepose(gt, detected_faces=None, landmarks=None)
out_gt = detector.detect_image(gt)
out_generat = detector.detect_image(gen)
gt_pose = out_gt.facepose.values
generate_pose = out_generat.facepose.values
gt_aus = out_gt.aus.values
generate_aus = out_generat.aus.values
row,num = generate_aus.shape
prmse=np.sqrt(np.power(gt_pose-generate_pose,2).sum()/3)
if math.isnan(prmse):
print(im)
raise RuntimeError('NaN')
PRMSE+=prmse
generate_aus = generate_aus>0.5
gt_aus = gt_aus>0.5
rst = ~ (generate_aus^gt_aus)
correct = rst.sum()
AUCON+=(correct/num)
counter+=1
except Exception as e:
print(e)
try:
source = Image.open(os.path.join(path,'source',im))
generate = Image.open(os.path.join(path,'generate',im))
# Get cropped and prewhitened image tensor
img_cropped = mtcnn(source,save_path='src.jpg')
# img_cropped = T.ToTensor()(source).cuda()
# Calculate embedding (unsqueeze to add batch dimension)
source_emb = resnet(img_cropped.unsqueeze(0))
# Get cropped and prewhitened image tensor
img_cropped = mtcnn(generate,save_path='dst.jpg')
# img_cropped = T.ToTensor()(generate).cuda()
# Calculate embedding (unsqueeze to add batch dimension)
generate_emb = resnet(img_cropped.unsqueeze(0))
CSIM+=torch.cosine_similarity(source_emb,generate_emb).item()
csim_counter+=1
except Exception as e:
print(e)
print(' PRMSE: {}, AUCON : {}, CSIM: {}'.format(PRMSE/counter, AUCON/counter,CSIM/csim_counter))
def mergeimgs(paths):
pth = paths[0]
imgps = os.listdir(pth)
for i in tqdm(range(len(imgps))):
imgp = imgps[i]
cats = []
for pth in paths:
img = os.path.join(pth,imgp)
img = cv2.imread(img)
cats.append(img)
img = np.vstack(cats)
cv2.imwrite('FID/mergeimgs/{}.jpg'.format(i),img)
def create_animate_pair():
f = open('./data/vox_cross_id_animate.csv','w',encoding='utf-8')
csv_writer = csv.writer(f)
csv_writer.writerow(["source_frame","driving_video"])
pairs = pd.read_csv('data/vox_cross_id_evaluation.csv')
source = pairs['source'].tolist()
driving = pairs['driving'].tolist()
source_frames = []
driving_videos = []
for src, dst in zip(source,driving):
video = os.path.dirname(dst).replace('vox1_frames','vox1')
source_frames.append(src)
driving_videos.append(video)
source_frames = np.array(source_frames).reshape(-1,1)
driving_videos = np.array(driving_videos).reshape(-1,1)
content = np.concatenate((source_frames,driving_videos),1)
csv_writer.writerows(content)
f.close()
def merge_abla_imgs(paths):
pth = paths[0]
imgps = os.listdir(pth)
for i in tqdm(range(len(imgps))):
imgp = imgps[i]
cats = []
for pth in paths:
img = os.path.join(pth,imgp)
img = cv2.imread(img)
cats.append(img)
img = np.vstack(cats)
cv2.imwrite('FID/abla/{}.jpg'.format(i),img)
def mergevideos():
videos_path1 = 'animation'
videos_path2 = '/data/fhongac/workspace/gitrepo/first-order-model/animation'
videos = os.listdir(videos_path1)
save_path = 'merge_animation'
for vi in tqdm(videos):
fomm = np.array(mimread('{}/{}'.format(videos_path2,vi),memtest=False))
ours = np.array(mimread('{}/{}'.format(videos_path1,vi),memtest=False))
reader = imageio.get_reader('{}/{}'.format(videos_path2,vi))
fps = reader.get_meta_data()['fps']
if len(fomm.shape) == 3:
fomm = np.array([gray2rgb(frame) for frame in fomm])
if fomm.shape[-1] == 4:
fomm = fomm[..., :3]
if len(ours.shape) == 3:
ours = np.array([gray2rgb(frame) for frame in ours])
if ours.shape[-1] == 4:
ours = ours[..., :3]
fomm = fomm[:,:,-256:,:]
src_dst = ours[:,:,:512,:]
ours = ours[:,:,-256:,:]
merge = np.concatenate((src_dst,fomm,ours),2)
imageio.mimsave('{}/{}'.format(save_path,vi), merge, fps=fps)
def extractFrames():
videos_pairs = pd.read_csv('data/vox_cross_id_animate.csv')
source = videos_pairs['source_frame'].tolist()
driving = videos_pairs['driving_video'].tolist()
frame_pairs = pd.read_csv('data/vox_cross_id_evaluation.csv')
# source = videos_pairs['source_frame'].tolist()
driving_frame = frame_pairs['driving'].tolist()
concate = 'FID/video_cross_id'
generate = 'FID/video_generate'
videos = 'animation'
for i, (src, dst,number) in tqdm(enumerate(zip(source,driving,driving_frame))):
video = np.array(mimread('{}/{}.mp4'.format(videos,i),memtest=False))
if len(video.shape) == 3:
video = np.array([gray2rgb(frame) for frame in video])
if video.shape[-1] == 4:
video = video[..., :3]
num = int(os.path.basename(number)[:7])
video_array = img_as_float32(video)
frame = (video_array[num]*255).astype(np.uint8)
imsave('{}/{}.jpg'.format(concate,i),frame)
imsave('{}/{}.jpg'.format(generate,i),frame[:,-256:,:])
class depth_network(nn.Module):
def __init__(self):
super(depth_network, self).__init__()
self.depth_encoder = depth.ResnetEncoder(18, False).cuda()
self.depth_decoder = depth.DepthDecoder(num_ch_enc=self.depth_encoder.num_ch_enc, scales=range(4)).cuda()
def forward(self,x):
outputs = self.depth_decoder(self.depth_encoder(x))
return outputs
def viewNetworkStructure():
network = depth_network().cuda()
print(network)
import hiddenlayer as h
vis_graph = h.build_graph(network, torch.zeros([1,3,256,256]).cuda()) # 获取绘制图像的对象
vis_graph.theme = h.graph.THEMES["blue"].copy() # 指定主题颜色
vis_graph.save("network_graph/depth_network.png") # 保存图像的路径
def drawKPline():
kp10 = [2.292730636,0.870793269,0.719648837]
kp15 = [2.335680558,0.872849592,0.7229482939818654]
kp20 = [2.268743373,0.882716346, 0.67557838]
kp25 = [3.395401378,0.827983638,0.662669217]
data = np.array([kp10,kp15,kp20,kp25])
x=[0,1,2,3]
fig, ax = plt.subplots()
ax.spines['right'].set_visible(False)
ax.spines['top'].set_visible(False)
l1=plt.plot(x,data[:,0],'r--',label='PRMSE')
l2=plt.plot(x,data[:,1],'g--',label='AUCON')
l3=plt.plot(x,data[:,2],'b--',label='CSIM')
plt.plot(x,data[:,0],'ro-',x,data[:,1],'g+-',x,data[:,2],'b^-')
plt.grid(linestyle=':')
# ax.tick_params(bottom=False)
plt.xticks(x,["kp=10","kp=15","kp=20","kp=25"]) #去掉横坐标值
# plt.yticks([]) #去掉纵坐标值
# plt.setp(ax.get_xticklabels(), visible=False)
# plt.setp(ax.get_yticklabels(), visible=False)
plt.legend()
plt.savefig('network_graph/kp.pdf')
def all_depth(path):
imgs = os.listdir(path+'/gt')
depth_encoder = depth.ResnetEncoder(18, False).cuda()
depth_decoder = depth.DepthDecoder(num_ch_enc=depth_encoder.num_ch_enc, scales=range(4)).cuda()
loaded_dict_enc = torch.load('depth/models/weights_19/encoder.pth')
loaded_dict_dec = torch.load('depth/models/weights_19/depth.pth')
filtered_dict_enc = {k: v for k, v in loaded_dict_enc.items() if k in depth_encoder.state_dict()}
depth_encoder.load_state_dict(filtered_dict_enc)
depth_decoder.load_state_dict(loaded_dict_dec)
depth_encoder.eval()
depth_decoder.eval()
for im in tqdm(imgs):
driving = os.path.join(path,'gt',im)
source = os.path.join(path,'generate',im)
img = Image.open(path).convert('RGB').resize((256,256))
tensor_img = T.ToTensor()(img).unsqueeze(0).cuda()
outputs = depth_decoder(depth_encoder(tensor_img))
disp = outputs[("disp", 0)]
# Saving colormapped depth image
disp_resized = torch.nn.functional.interpolate(disp, (256, 256), mode="bilinear", align_corners=False)
disp_resized_np = disp_resized.squeeze().detach().cpu().numpy()
vmax = np.percentile(disp_resized_np, 95)
normalizer = mpl.colors.Normalize(vmin=disp_resized_np.min(), vmax=vmax)
mapper = cm.ScalarMappable(norm=normalizer, cmap='rainbow')
colormapped_im = (mapper.to_rgba(disp_resized_np)[:, :, :3] * 255).astype(np.uint8)
plt.axis('off')
plt.imshow(colormapped_im)
# plt.colorbar(mapper)
plt.savefig(path+'.pdf')
# plt.savefig(path+'.png')
plt.clf()
def changevideos():
# videos_path1 = 'animation'
# videos_path2 = '/data/fhongac/workspace/gitrepo/first-order-model/animation'
# videos = os.listdir(videos_path1)
# save_path = 'merge_animation'
# for vi in tqdm(videos):
# fomm = np.array(mimread('{}/{}'.format(videos_path2,vi),memtest=False))
# ours = np.array(mimread('{}/{}'.format(videos_path1,vi),memtest=False))
# reader = imageio.get_reader('{}/{}'.format(videos_path2,vi))
# fps = reader.get_meta_data()['fps']
# if len(fomm.shape) == 3:
# fomm = np.array([gray2rgb(frame) for frame in fomm])
# if fomm.shape[-1] == 4:
# fomm = fomm[..., :3]
# if len(ours.shape) == 3:
# ours = np.array([gray2rgb(frame) for frame in ours])
# if ours.shape[-1] == 4:
# ours = ours[..., :3]
# fomm = fomm[:,:,-256:,:]
# src_dst = ours[:,:,:512,:]
# ours = ours[:,:,-256:,:]
# merge = np.concatenate((src_dst,fomm,ours),2)
# imageio.mimsave('{}/{}'.format(save_path,vi), merge, fps=fps)
# 155
# path = 'merge_animation/155.mp4'
# disp = '/data/fhongac/workspace/src/depthEstimate/7PbDDjXgYzU/id10287#bP0bKbQQlzc#003638#003940_disp.mp4'
# osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/155.mp4'
# save = 'FID/animation/155.mp4'
# path = 'merge_animation/523.mp4'
# disp = '/data/fhongac/workspace/src/depthEstimate/7PbDDjXgYzU/id10287#4oOmqI1myzY#000381#000729_disp.mp4'
# osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/523.mp4'
# save = 'FID/animation/523.mp4'
# path = 'merge_animation/705.mp4'
# disp = '/data/fhongac/workspace/src/depthEstimate/705.mp4'
# osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/705.mp4'
# save = 'FID/animation/705.mp4'
# path = 'merge_animation/2062.mp4'
# disp = '/data/fhongac/workspace/src/depthEstimate/2062.mp4'
# osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/2062.mp4'
# save = 'FID/animation/2062.mp4'
# path = 'merge_animation/1841.mp4'
# disp = '/data/fhongac/workspace/src/depthEstimate/1841.mp4'
# osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/1841.mp4'
# save = 'FID/animation/1841.mp4'
path = 'merge_animation/1758.mp4'
disp = '/data/fhongac/workspace/src/depthEstimate/1758.mp4'
osfv = '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/1758.mp4'
save = 'FID/animation/1758.mp4'
video = np.array(mimread('{}'.format(path),memtest=False))
reader = imageio.get_reader('{}'.format(path))
fps = reader.get_meta_data()['fps']
video = np.array([gray2rgb(frame) for frame in video])
disp = np.array(mimread('{}'.format(disp),memtest=False))
disp = np.array([gray2rgb(frame) for frame in disp])
osfv = np.array(mimread('{}'.format(osfv),memtest=False))
osfv = np.array([gray2rgb(frame) for frame in osfv])
bz,h,w,c = video.shape
up_video = np.concatenate((video[:,:,:int(w/2),:],disp),2)
down_video = np.concatenate((video[:,:,int(w/2):int(w/4)*3,:],osfv,video[:,:,int(w/4)*3:,:]),2)
up_zeros = np.ones((bz,20,256*3,3))*255
mid_zeros = np.ones((bz,40,256*3,3))*255
down_zeros = np.ones((bz,40,256*3,3))*255
video = np.concatenate((up_zeros,up_video, mid_zeros, down_video,down_zeros),1)
imageio.mimsave('{}'.format(save), video, fps=fps)
print('aa')
def find_best_frame_video():
import pandas as pd
pairs = pd.read_csv('./data/celeV_cross_id_evaluation.csv')
sources = pairs['source']
drivings = pairs['driving']
best_frame = []
for i,(src,dri) in tqdm(enumerate(zip(sources,drivings))):
source_image = imageio.imread(src)
source_image = resize(source_image, (256, 256))[..., :3]
vpath = os.path.dirname(dri)
imgs = os.listdir(vpath)
driving_video = []
for j, im in enumerate(imgs):
image = imageio.imread(os.path.join(vpath,im))
driving_video.append(resize(image, (256, 256))[..., :3])
idx = find_best_frame(source_image,driving_video)
bf = os.path.join(vpath,imgs[idx])
best_frame.append(bf)
f = open('./data/celeV_cross_id_evaluation_best_frame.csv','w',encoding='utf-8')
csv_writer = csv.writer(f)
csv_writer.writerow(["source","driving","best_frame"])
sources = np.array(sources).reshape(-1,1)
drivings = np.array(drivings).reshape(-1,1)
best_frame = np.array(best_frame).reshape(-1,1)
content = np.concatenate((sources,drivings,best_frame),1)
csv_writer.writerows(content)
f.close()
def find_best_frame(source, driving, cpu=False):
import face_alignment
def normalize_kp(kp):
kp = kp - kp.mean(axis=0, keepdims=True)
area = ConvexHull(kp[:, :2]).volume
area = np.sqrt(area)
kp[:, :2] = kp[:, :2] / area
return kp
fa = face_alignment.FaceAlignment(face_alignment.LandmarksType._2D, flip_input=True,
device='cpu' if cpu else 'cuda')
kp_source = fa.get_landmarks(255 * source)[0]
kp_source = normalize_kp(kp_source)
norm = float('inf')
frame_num = 0
for i, image in tqdm(enumerate(driving)):
kp_driving = fa.get_landmarks(255 * image)[0]
kp_driving = normalize_kp(kp_driving)
new_norm = (np.abs(kp_source - kp_driving) ** 2).sum()
if new_norm < norm:
norm = new_norm
frame_num = i
return frame_num
if __name__ == '__main__':
# create_test_set('/data/fhongac/origDataset/vox1_frames/test')
# concate_compared_results('FID/generate','/data/fhongac/workspace/gitrepo/first-order-model/FID/generate')
# concate_compared_results('FID/concate','/data/fhongac/workspace/gitrepo/first-order-model/FID/concate')
# create_cross_id_test_set('/data/fhongac/origDataset/vox1_frames/test')
# render('ppt_figure/0000021.jpg')
# depth_rgb('ppt_figure/293.jpg')
# process_celeV('/data/fhongac/origDataset/CelebV')
# compare()
# evaluate_PRMSE_AUCON() # CUDA_VISIBLE_DEVICES=7 python utils.py
# viewNetworkStructure()
# aus('11.png')
# mergeimgs(['/data/fhongac/workspace/gitrepo/first-order-model/checkpoint/vox_cross_id/concate',
# '/data/fhongac/workspace/gitrepo/One-Shot_Free-View_Neural_Talking_Head_Synthesis/checkpoint/vox_cross_id/concate',
# '/data/fhongac/workspace/src/parallel-fom-rgbd/log/vox-adv-256rgbd_kp_num15_rgbd_attnv2/vox_cross_id/concate'])
# create_animate_pair()
# merge_abla_imgs(['/data/fhongac/workspace/gitrepo/first-order-model/FID/cross_id','log/vox-adv-256baseline/vox_cross_id/concate', 'log/vox-adv-256rgbd_kp_num15/vox_cross_id/concate','log/vox-adv-256rgbd_kp_num15_rgbd_attnv2_wo_D/vox_cross_id/concate','log/vox-adv-256rgbd_kp_num15_rgbd_attnv2/vox_cross_id/concate'])
# extractFrames()
# mergevideos()
# drawKPline()
# changevideos()
find_best_frame_video()