stable-diffusion-finetune/ldm/modules/evaluate/evaluate_perceptualsim.py

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2022-06-09 10:56:34 +02:00
import argparse
import glob
import os
from tqdm import tqdm
from collections import namedtuple
import numpy as np
import torch
import torchvision.transforms as transforms
from torchvision import models
from PIL import Image
from ldm.modules.evaluate.ssim import ssim
transform = transforms.Compose([transforms.ToTensor()])
def normalize_tensor(in_feat, eps=1e-10):
norm_factor = torch.sqrt(torch.sum(in_feat ** 2, dim=1)).view(
in_feat.size()[0], 1, in_feat.size()[2], in_feat.size()[3]
)
return in_feat / (norm_factor.expand_as(in_feat) + eps)
def cos_sim(in0, in1):
in0_norm = normalize_tensor(in0)
in1_norm = normalize_tensor(in1)
N = in0.size()[0]
X = in0.size()[2]
Y = in0.size()[3]
return torch.mean(
torch.mean(
torch.sum(in0_norm * in1_norm, dim=1).view(N, 1, X, Y), dim=2
).view(N, 1, 1, Y),
dim=3,
).view(N)
class squeezenet(torch.nn.Module):
def __init__(self, requires_grad=False, pretrained=True):
super(squeezenet, self).__init__()
pretrained_features = models.squeezenet1_1(
pretrained=pretrained
).features
self.slice1 = torch.nn.Sequential()
self.slice2 = torch.nn.Sequential()
self.slice3 = torch.nn.Sequential()
self.slice4 = torch.nn.Sequential()
self.slice5 = torch.nn.Sequential()
self.slice6 = torch.nn.Sequential()
self.slice7 = torch.nn.Sequential()
self.N_slices = 7
for x in range(2):
self.slice1.add_module(str(x), pretrained_features[x])
for x in range(2, 5):
self.slice2.add_module(str(x), pretrained_features[x])
for x in range(5, 8):
self.slice3.add_module(str(x), pretrained_features[x])
for x in range(8, 10):
self.slice4.add_module(str(x), pretrained_features[x])
for x in range(10, 11):
self.slice5.add_module(str(x), pretrained_features[x])
for x in range(11, 12):
self.slice6.add_module(str(x), pretrained_features[x])
for x in range(12, 13):
self.slice7.add_module(str(x), pretrained_features[x])
if not requires_grad:
for param in self.parameters():
param.requires_grad = False
def forward(self, X):
h = self.slice1(X)
h_relu1 = h
h = self.slice2(h)
h_relu2 = h
h = self.slice3(h)
h_relu3 = h
h = self.slice4(h)
h_relu4 = h
h = self.slice5(h)
h_relu5 = h
h = self.slice6(h)
h_relu6 = h
h = self.slice7(h)
h_relu7 = h
vgg_outputs = namedtuple(
"SqueezeOutputs",
["relu1", "relu2", "relu3", "relu4", "relu5", "relu6", "relu7"],
)
out = vgg_outputs(
h_relu1, h_relu2, h_relu3, h_relu4, h_relu5, h_relu6, h_relu7
)
return out
class alexnet(torch.nn.Module):
def __init__(self, requires_grad=False, pretrained=True):
super(alexnet, self).__init__()
alexnet_pretrained_features = models.alexnet(
pretrained=pretrained
).features
self.slice1 = torch.nn.Sequential()
self.slice2 = torch.nn.Sequential()
self.slice3 = torch.nn.Sequential()
self.slice4 = torch.nn.Sequential()
self.slice5 = torch.nn.Sequential()
self.N_slices = 5
for x in range(2):
self.slice1.add_module(str(x), alexnet_pretrained_features[x])
for x in range(2, 5):
self.slice2.add_module(str(x), alexnet_pretrained_features[x])
for x in range(5, 8):
self.slice3.add_module(str(x), alexnet_pretrained_features[x])
for x in range(8, 10):
self.slice4.add_module(str(x), alexnet_pretrained_features[x])
for x in range(10, 12):
self.slice5.add_module(str(x), alexnet_pretrained_features[x])
if not requires_grad:
for param in self.parameters():
param.requires_grad = False
def forward(self, X):
h = self.slice1(X)
h_relu1 = h
h = self.slice2(h)
h_relu2 = h
h = self.slice3(h)
h_relu3 = h
h = self.slice4(h)
h_relu4 = h
h = self.slice5(h)
h_relu5 = h
alexnet_outputs = namedtuple(
"AlexnetOutputs", ["relu1", "relu2", "relu3", "relu4", "relu5"]
)
out = alexnet_outputs(h_relu1, h_relu2, h_relu3, h_relu4, h_relu5)
return out
class vgg16(torch.nn.Module):
def __init__(self, requires_grad=False, pretrained=True):
super(vgg16, self).__init__()
vgg_pretrained_features = models.vgg16(pretrained=pretrained).features
self.slice1 = torch.nn.Sequential()
self.slice2 = torch.nn.Sequential()
self.slice3 = torch.nn.Sequential()
self.slice4 = torch.nn.Sequential()
self.slice5 = torch.nn.Sequential()
self.N_slices = 5
for x in range(4):
self.slice1.add_module(str(x), vgg_pretrained_features[x])
for x in range(4, 9):
self.slice2.add_module(str(x), vgg_pretrained_features[x])
for x in range(9, 16):
self.slice3.add_module(str(x), vgg_pretrained_features[x])
for x in range(16, 23):
self.slice4.add_module(str(x), vgg_pretrained_features[x])
for x in range(23, 30):
self.slice5.add_module(str(x), vgg_pretrained_features[x])
if not requires_grad:
for param in self.parameters():
param.requires_grad = False
def forward(self, X):
h = self.slice1(X)
h_relu1_2 = h
h = self.slice2(h)
h_relu2_2 = h
h = self.slice3(h)
h_relu3_3 = h
h = self.slice4(h)
h_relu4_3 = h
h = self.slice5(h)
h_relu5_3 = h
vgg_outputs = namedtuple(
"VggOutputs",
["relu1_2", "relu2_2", "relu3_3", "relu4_3", "relu5_3"],
)
out = vgg_outputs(h_relu1_2, h_relu2_2, h_relu3_3, h_relu4_3, h_relu5_3)
return out
class resnet(torch.nn.Module):
def __init__(self, requires_grad=False, pretrained=True, num=18):
super(resnet, self).__init__()
if num == 18:
self.net = models.resnet18(pretrained=pretrained)
elif num == 34:
self.net = models.resnet34(pretrained=pretrained)
elif num == 50:
self.net = models.resnet50(pretrained=pretrained)
elif num == 101:
self.net = models.resnet101(pretrained=pretrained)
elif num == 152:
self.net = models.resnet152(pretrained=pretrained)
self.N_slices = 5
self.conv1 = self.net.conv1
self.bn1 = self.net.bn1
self.relu = self.net.relu
self.maxpool = self.net.maxpool
self.layer1 = self.net.layer1
self.layer2 = self.net.layer2
self.layer3 = self.net.layer3
self.layer4 = self.net.layer4
def forward(self, X):
h = self.conv1(X)
h = self.bn1(h)
h = self.relu(h)
h_relu1 = h
h = self.maxpool(h)
h = self.layer1(h)
h_conv2 = h
h = self.layer2(h)
h_conv3 = h
h = self.layer3(h)
h_conv4 = h
h = self.layer4(h)
h_conv5 = h
outputs = namedtuple(
"Outputs", ["relu1", "conv2", "conv3", "conv4", "conv5"]
)
out = outputs(h_relu1, h_conv2, h_conv3, h_conv4, h_conv5)
return out
# Off-the-shelf deep network
class PNet(torch.nn.Module):
"""Pre-trained network with all channels equally weighted by default"""
def __init__(self, pnet_type="vgg", pnet_rand=False, use_gpu=True):
super(PNet, self).__init__()
self.use_gpu = use_gpu
self.pnet_type = pnet_type
self.pnet_rand = pnet_rand
self.shift = torch.Tensor([-0.030, -0.088, -0.188]).view(1, 3, 1, 1)
self.scale = torch.Tensor([0.458, 0.448, 0.450]).view(1, 3, 1, 1)
if self.pnet_type in ["vgg", "vgg16"]:
self.net = vgg16(pretrained=not self.pnet_rand, requires_grad=False)
elif self.pnet_type == "alex":
self.net = alexnet(
pretrained=not self.pnet_rand, requires_grad=False
)
elif self.pnet_type[:-2] == "resnet":
self.net = resnet(
pretrained=not self.pnet_rand,
requires_grad=False,
num=int(self.pnet_type[-2:]),
)
elif self.pnet_type == "squeeze":
self.net = squeezenet(
pretrained=not self.pnet_rand, requires_grad=False
)
self.L = self.net.N_slices
if use_gpu:
self.net.cuda()
self.shift = self.shift.cuda()
self.scale = self.scale.cuda()
def forward(self, in0, in1, retPerLayer=False):
in0_sc = (in0 - self.shift.expand_as(in0)) / self.scale.expand_as(in0)
in1_sc = (in1 - self.shift.expand_as(in0)) / self.scale.expand_as(in0)
outs0 = self.net.forward(in0_sc)
outs1 = self.net.forward(in1_sc)
if retPerLayer:
all_scores = []
for (kk, out0) in enumerate(outs0):
cur_score = 1.0 - cos_sim(outs0[kk], outs1[kk])
if kk == 0:
val = 1.0 * cur_score
else:
val = val + cur_score
if retPerLayer:
all_scores += [cur_score]
if retPerLayer:
return (val, all_scores)
else:
return val
# The SSIM metric
def ssim_metric(img1, img2, mask=None):
return ssim(img1, img2, mask=mask, size_average=False)
# The PSNR metric
def psnr(img1, img2, mask=None,reshape=False):
b = img1.size(0)
if not (mask is None):
b = img1.size(0)
mse_err = (img1 - img2).pow(2) * mask
if reshape:
mse_err = mse_err.reshape(b, -1).sum(dim=1) / (
3 * mask.reshape(b, -1).sum(dim=1).clamp(min=1)
)
else:
mse_err = mse_err.view(b, -1).sum(dim=1) / (
3 * mask.view(b, -1).sum(dim=1).clamp(min=1)
)
else:
if reshape:
mse_err = (img1 - img2).pow(2).reshape(b, -1).mean(dim=1)
else:
mse_err = (img1 - img2).pow(2).view(b, -1).mean(dim=1)
psnr = 10 * (1 / mse_err).log10()
return psnr
# The perceptual similarity metric
def perceptual_sim(img1, img2, vgg16):
# First extract features
dist = vgg16(img1 * 2 - 1, img2 * 2 - 1)
return dist
def load_img(img_name, size=None):
try:
img = Image.open(img_name)
if type(size) == int:
img = img.resize((size, size))
elif size is not None:
img = img.resize((size[1], size[0]))
img = transform(img).cuda()
img = img.unsqueeze(0)
except Exception as e:
print("Failed at loading %s " % img_name)
print(e)
img = torch.zeros(1, 3, 256, 256).cuda()
raise
return img
def compute_perceptual_similarity(folder, pred_img, tgt_img, take_every_other):
# Load VGG16 for feature similarity
vgg16 = PNet().to("cuda")
vgg16.eval()
vgg16.cuda()
values_percsim = []
values_ssim = []
values_psnr = []
folders = os.listdir(folder)
for i, f in tqdm(enumerate(sorted(folders))):
pred_imgs = glob.glob(folder + f + "/" + pred_img)
tgt_imgs = glob.glob(folder + f + "/" + tgt_img)
assert len(tgt_imgs) == 1
perc_sim = 10000
ssim_sim = -10
psnr_sim = -10
for p_img in pred_imgs:
t_img = load_img(tgt_imgs[0])
p_img = load_img(p_img, size=t_img.shape[2:])
t_perc_sim = perceptual_sim(p_img, t_img, vgg16).item()
perc_sim = min(perc_sim, t_perc_sim)
ssim_sim = max(ssim_sim, ssim_metric(p_img, t_img).item())
psnr_sim = max(psnr_sim, psnr(p_img, t_img).item())
values_percsim += [perc_sim]
values_ssim += [ssim_sim]
values_psnr += [psnr_sim]
if take_every_other:
n_valuespercsim = []
n_valuesssim = []
n_valuespsnr = []
for i in range(0, len(values_percsim) // 2):
n_valuespercsim += [
min(values_percsim[2 * i], values_percsim[2 * i + 1])
]
n_valuespsnr += [max(values_psnr[2 * i], values_psnr[2 * i + 1])]
n_valuesssim += [max(values_ssim[2 * i], values_ssim[2 * i + 1])]
values_percsim = n_valuespercsim
values_ssim = n_valuesssim
values_psnr = n_valuespsnr
avg_percsim = np.mean(np.array(values_percsim))
std_percsim = np.std(np.array(values_percsim))
avg_psnr = np.mean(np.array(values_psnr))
std_psnr = np.std(np.array(values_psnr))
avg_ssim = np.mean(np.array(values_ssim))
std_ssim = np.std(np.array(values_ssim))
return {
"Perceptual similarity": (avg_percsim, std_percsim),
"PSNR": (avg_psnr, std_psnr),
"SSIM": (avg_ssim, std_ssim),
}
def compute_perceptual_similarity_from_list(pred_imgs_list, tgt_imgs_list,
take_every_other,
simple_format=True):
# Load VGG16 for feature similarity
vgg16 = PNet().to("cuda")
vgg16.eval()
vgg16.cuda()
values_percsim = []
values_ssim = []
values_psnr = []
equal_count = 0
ambig_count = 0
for i, tgt_img in enumerate(tqdm(tgt_imgs_list)):
pred_imgs = pred_imgs_list[i]
tgt_imgs = [tgt_img]
assert len(tgt_imgs) == 1
if type(pred_imgs) != list:
pred_imgs = [pred_imgs]
perc_sim = 10000
ssim_sim = -10
psnr_sim = -10
assert len(pred_imgs)>0
for p_img in pred_imgs:
t_img = load_img(tgt_imgs[0])
p_img = load_img(p_img, size=t_img.shape[2:])
t_perc_sim = perceptual_sim(p_img, t_img, vgg16).item()
perc_sim = min(perc_sim, t_perc_sim)
ssim_sim = max(ssim_sim, ssim_metric(p_img, t_img).item())
psnr_sim = max(psnr_sim, psnr(p_img, t_img).item())
values_percsim += [perc_sim]
values_ssim += [ssim_sim]
if psnr_sim != np.float("inf"):
values_psnr += [psnr_sim]
else:
if torch.allclose(p_img, t_img):
equal_count += 1
print("{} equal src and wrp images.".format(equal_count))
else:
ambig_count += 1
print("{} ambiguous src and wrp images.".format(ambig_count))
if take_every_other:
n_valuespercsim = []
n_valuesssim = []
n_valuespsnr = []
for i in range(0, len(values_percsim) // 2):
n_valuespercsim += [
min(values_percsim[2 * i], values_percsim[2 * i + 1])
]
n_valuespsnr += [max(values_psnr[2 * i], values_psnr[2 * i + 1])]
n_valuesssim += [max(values_ssim[2 * i], values_ssim[2 * i + 1])]
values_percsim = n_valuespercsim
values_ssim = n_valuesssim
values_psnr = n_valuespsnr
avg_percsim = np.mean(np.array(values_percsim))
std_percsim = np.std(np.array(values_percsim))
avg_psnr = np.mean(np.array(values_psnr))
std_psnr = np.std(np.array(values_psnr))
avg_ssim = np.mean(np.array(values_ssim))
std_ssim = np.std(np.array(values_ssim))
if simple_format:
# just to make yaml formatting readable
return {
"Perceptual similarity": [float(avg_percsim), float(std_percsim)],
"PSNR": [float(avg_psnr), float(std_psnr)],
"SSIM": [float(avg_ssim), float(std_ssim)],
}
else:
return {
"Perceptual similarity": (avg_percsim, std_percsim),
"PSNR": (avg_psnr, std_psnr),
"SSIM": (avg_ssim, std_ssim),
}
def compute_perceptual_similarity_from_list_topk(pred_imgs_list, tgt_imgs_list,
take_every_other, resize=False):
# Load VGG16 for feature similarity
vgg16 = PNet().to("cuda")
vgg16.eval()
vgg16.cuda()
values_percsim = []
values_ssim = []
values_psnr = []
individual_percsim = []
individual_ssim = []
individual_psnr = []
for i, tgt_img in enumerate(tqdm(tgt_imgs_list)):
pred_imgs = pred_imgs_list[i]
tgt_imgs = [tgt_img]
assert len(tgt_imgs) == 1
if type(pred_imgs) != list:
assert False
pred_imgs = [pred_imgs]
perc_sim = 10000
ssim_sim = -10
psnr_sim = -10
sample_percsim = list()
sample_ssim = list()
sample_psnr = list()
for p_img in pred_imgs:
if resize:
t_img = load_img(tgt_imgs[0], size=(256,256))
else:
t_img = load_img(tgt_imgs[0])
p_img = load_img(p_img, size=t_img.shape[2:])
t_perc_sim = perceptual_sim(p_img, t_img, vgg16).item()
sample_percsim.append(t_perc_sim)
perc_sim = min(perc_sim, t_perc_sim)
t_ssim = ssim_metric(p_img, t_img).item()
sample_ssim.append(t_ssim)
ssim_sim = max(ssim_sim, t_ssim)
t_psnr = psnr(p_img, t_img).item()
sample_psnr.append(t_psnr)
psnr_sim = max(psnr_sim, t_psnr)
values_percsim += [perc_sim]
values_ssim += [ssim_sim]
values_psnr += [psnr_sim]
individual_percsim.append(sample_percsim)
individual_ssim.append(sample_ssim)
individual_psnr.append(sample_psnr)
if take_every_other:
assert False, "Do this later, after specifying topk to get proper results"
n_valuespercsim = []
n_valuesssim = []
n_valuespsnr = []
for i in range(0, len(values_percsim) // 2):
n_valuespercsim += [
min(values_percsim[2 * i], values_percsim[2 * i + 1])
]
n_valuespsnr += [max(values_psnr[2 * i], values_psnr[2 * i + 1])]
n_valuesssim += [max(values_ssim[2 * i], values_ssim[2 * i + 1])]
values_percsim = n_valuespercsim
values_ssim = n_valuesssim
values_psnr = n_valuespsnr
avg_percsim = np.mean(np.array(values_percsim))
std_percsim = np.std(np.array(values_percsim))
avg_psnr = np.mean(np.array(values_psnr))
std_psnr = np.std(np.array(values_psnr))
avg_ssim = np.mean(np.array(values_ssim))
std_ssim = np.std(np.array(values_ssim))
individual_percsim = np.array(individual_percsim)
individual_psnr = np.array(individual_psnr)
individual_ssim = np.array(individual_ssim)
return {
"avg_of_best": {
"Perceptual similarity": [float(avg_percsim), float(std_percsim)],
"PSNR": [float(avg_psnr), float(std_psnr)],
"SSIM": [float(avg_ssim), float(std_ssim)],
},
"individual": {
"PSIM": individual_percsim,
"PSNR": individual_psnr,
"SSIM": individual_ssim,
}
}
if __name__ == "__main__":
args = argparse.ArgumentParser()
args.add_argument("--folder", type=str, default="")
args.add_argument("--pred_image", type=str, default="")
args.add_argument("--target_image", type=str, default="")
args.add_argument("--take_every_other", action="store_true", default=False)
args.add_argument("--output_file", type=str, default="")
opts = args.parse_args()
folder = opts.folder
pred_img = opts.pred_image
tgt_img = opts.target_image
results = compute_perceptual_similarity(
folder, pred_img, tgt_img, opts.take_every_other
)
f = open(opts.output_file, 'w')
for key in results:
print("%s for %s: \n" % (key, opts.folder))
print(
"\t {:0.4f} | {:0.4f} \n".format(results[key][0], results[key][1])
)
f.write("%s for %s: \n" % (key, opts.folder))
f.write(
"\t {:0.4f} | {:0.4f} \n".format(results[key][0], results[key][1])
)
f.close()