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trainer.py
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"""
Copyright (C) 2019 NVIDIA Corporation. All rights reserved.
Licensed under the CC BY-NC-SA 4.0 license (https://creativecommons.org/licenses/by-nc-sa/4.0/legalcode).
"""
from networks import AdaINGen, MsImageDis
from reIDmodel import ft_net, ft_netAB, PCB
from utils import get_model_list, vgg_preprocess, load_vgg16, get_scheduler
from torch.autograd import Variable
import torch
import torch.nn as nn
import copy
import os
import cv2
import numpy as np
from random_erasing import RandomErasing
import random
import yaml
#fp16
try:
from apex import amp
from apex.fp16_utils import *
except ImportError:
print('This is not an error. If you want to use low precision, i.e., fp16, please install the apex with cuda support (https://github.com/NVIDIA/apex) and update pytorch to 1.0')
def to_gray(half=False): #simple
def forward(x):
x = torch.mean(x, dim=1, keepdim=True)
if half:
x = x.half()
return x
return forward
def to_edge(x):
x = x.data.cpu()
out = torch.FloatTensor(x.size(0), x.size(2), x.size(3))
for i in range(x.size(0)):
xx = recover(x[i,:,:,:]) # 3 channel, 256x128x3
xx = cv2.cvtColor(xx, cv2.COLOR_RGB2GRAY) # 256x128x1
xx = cv2.Canny(xx, 10, 200) #256x128
xx = xx/255.0 - 0.5 # {-0.5,0.5}
xx += np.random.randn(xx.shape[0],xx.shape[1])*0.1 #add random noise
xx = torch.from_numpy(xx.astype(np.float32))
out[i,:,:] = xx
out = out.unsqueeze(1)
return out.cuda()
def scale2(x):
if x.size(2) > 128: # do not need to scale the input
return x
x = torch.nn.functional.upsample(x, scale_factor=2, mode='nearest') #bicubic is not available for the time being.
return x
def recover(inp):
inp = inp.numpy().transpose((1, 2, 0))
mean = np.array([0.485, 0.456, 0.406])
std = np.array([0.229, 0.224, 0.225])
inp = std * inp + mean
inp = inp * 255.0
inp = np.clip(inp, 0, 255)
inp = inp.astype(np.uint8)
return inp
def train_bn(m):
classname = m.__class__.__name__
if classname.find('BatchNorm') != -1:
m.train()
def fliplr(img):
'''flip horizontal'''
inv_idx = torch.arange(img.size(3)-1,-1,-1).long().cuda() # N x C x H x W
img_flip = img.index_select(3,inv_idx)
return img_flip
def update_teacher(model_s, model_t, alpha=0.999):
for param_s, param_t in zip(model_s.parameters(), model_t.parameters()):
param_t.data.mul_(alpha).add_(1 - alpha, param_s.data)
def predict_label(teacher_models, inputs, num_class, alabel, slabel, teacher_style=0):
# teacher_style:
# 0: Our smooth dynamic label
# 1: Pseudo label, hard dynamic label
# 2: Conditional label, hard static label
# 3: LSRO, static smooth label
# 4: Dynamic Soft Two-label
# alabel is appearance label
if teacher_style == 0:
count = 0
sm = nn.Softmax(dim=1)
for teacher_model in teacher_models:
_, outputs_t1 = teacher_model(inputs)
outputs_t1 = sm(outputs_t1.detach())
_, outputs_t2 = teacher_model(fliplr(inputs))
outputs_t2 = sm(outputs_t2.detach())
if count==0:
outputs_t = outputs_t1 + outputs_t2
else:
outputs_t = outputs_t * opt.alpha # old model decay
outputs_t += outputs_t1 + outputs_t2
count +=2
elif teacher_style == 1: # dynamic one-hot label
count = 0
sm = nn.Softmax(dim=1)
for teacher_model in teacher_models:
_, outputs_t1 = teacher_model(inputs)
outputs_t1 = sm(outputs_t1.detach()) # change softmax to max
_, outputs_t2 = teacher_model(fliplr(inputs))
outputs_t2 = sm(outputs_t2.detach())
if count==0:
outputs_t = outputs_t1 + outputs_t2
else:
outputs_t = outputs_t * opt.alpha # old model decay
outputs_t += outputs_t1 + outputs_t2
count +=2
_, dlabel = torch.max(outputs_t.data, 1)
outputs_t = torch.zeros(inputs.size(0), num_class).cuda()
for i in range(inputs.size(0)):
outputs_t[i, dlabel[i]] = 1
elif teacher_style == 2: # appearance label
outputs_t = torch.zeros(inputs.size(0), num_class).cuda()
for i in range(inputs.size(0)):
outputs_t[i, alabel[i]] = 1
elif teacher_style == 3: # LSRO
outputs_t = torch.ones(inputs.size(0), num_class).cuda()
elif teacher_style == 4: #Two-label
count = 0
sm = nn.Softmax(dim=1)
for teacher_model in teacher_models:
_, outputs_t1 = teacher_model(inputs)
outputs_t1 = sm(outputs_t1.detach())
_, outputs_t2 = teacher_model(fliplr(inputs))
outputs_t2 = sm(outputs_t2.detach())
if count==0:
outputs_t = outputs_t1 + outputs_t2
else:
outputs_t = outputs_t * opt.alpha # old model decay
outputs_t += outputs_t1 + outputs_t2
count +=2
mask = torch.zeros(outputs_t.shape)
mask = mask.cuda()
for i in range(inputs.size(0)):
mask[i, alabel[i]] = 1
mask[i, slabel[i]] = 1
outputs_t = outputs_t*mask
else:
print('not valid style. teacher-style is in [0-3].')
s = torch.sum(outputs_t, dim=1, keepdim=True)
s = s.expand_as(outputs_t)
outputs_t = outputs_t/s
return outputs_t
######################################################################
# Load model
#---------------------------
def load_network(network, name):
save_path = os.path.join('./models',name,'net_last.pth')
network.load_state_dict(torch.load(save_path))
return network
def load_config(name):
config_path = os.path.join('./models',name,'opts.yaml')
with open(config_path, 'r') as stream:
config = yaml.safe_load(stream)
return config
class DGNet_Trainer(nn.Module):
def __init__(self, hyperparameters, gpu_ids=[0]):
super(DGNet_Trainer, self).__init__()
lr_g = hyperparameters['lr_g']
lr_d = hyperparameters['lr_d']
ID_class = hyperparameters['ID_class']
if not 'apex' in hyperparameters.keys():
hyperparameters['apex'] = False
self.fp16 = hyperparameters['apex']
# Initiate the networks
# We do not need to manually set fp16 in the network for the new apex. So here I set fp16=False.
self.gen_a = AdaINGen(hyperparameters['input_dim_a'], hyperparameters['gen'], fp16 = False) # auto-encoder for domain a
self.gen_b = self.gen_a # auto-encoder for domain b
if not 'ID_stride' in hyperparameters.keys():
hyperparameters['ID_stride'] = 2
if hyperparameters['ID_style']=='PCB':
self.id_a = PCB(ID_class)
elif hyperparameters['ID_style']=='AB':
self.id_a = ft_netAB(ID_class, stride = hyperparameters['ID_stride'], norm=hyperparameters['norm_id'], pool=hyperparameters['pool'])
else:
self.id_a = ft_net(ID_class, norm=hyperparameters['norm_id'], pool=hyperparameters['pool']) # return 2048 now
self.id_b = self.id_a
self.dis_a = MsImageDis(3, hyperparameters['dis'], fp16 = False) # discriminator for domain a
self.dis_b = self.dis_a # discriminator for domain b
# load teachers
if hyperparameters['teacher'] != "":
teacher_name = hyperparameters['teacher']
print(teacher_name)
teacher_names = teacher_name.split(',')
teacher_model = nn.ModuleList()
teacher_count = 0
for teacher_name in teacher_names:
config_tmp = load_config(teacher_name)
if 'stride' in config_tmp:
stride = config_tmp['stride']
else:
stride = 2
model_tmp = ft_net(ID_class, stride = stride)
teacher_model_tmp = load_network(model_tmp, teacher_name)
teacher_model_tmp.model.fc = nn.Sequential() # remove the original fc layer in ImageNet
teacher_model_tmp = teacher_model_tmp.cuda()
if self.fp16:
teacher_model_tmp = amp.initialize(teacher_model_tmp, opt_level="O1")
teacher_model.append(teacher_model_tmp.cuda().eval())
teacher_count +=1
self.teacher_model = teacher_model
if hyperparameters['train_bn']:
self.teacher_model = self.teacher_model.apply(train_bn)
self.instancenorm = nn.InstanceNorm2d(512, affine=False)
# RGB to one channel
if hyperparameters['single']=='edge':
self.single = to_edge
else:
self.single = to_gray(False)
# Random Erasing when training
if not 'erasing_p' in hyperparameters.keys():
self.erasing_p = 0
else:
self.erasing_p = hyperparameters['erasing_p']
self.single_re = RandomErasing(probability = self.erasing_p, mean=[0.0, 0.0, 0.0])
if not 'T_w' in hyperparameters.keys():
hyperparameters['T_w'] = 1
# Setup the optimizers
beta1 = hyperparameters['beta1']
beta2 = hyperparameters['beta2']
dis_params = list(self.dis_a.parameters()) #+ list(self.dis_b.parameters())
gen_params = list(self.gen_a.parameters()) #+ list(self.gen_b.parameters())
self.dis_opt = torch.optim.Adam([p for p in dis_params if p.requires_grad],
lr=lr_d, betas=(beta1, beta2), weight_decay=hyperparameters['weight_decay'])
self.gen_opt = torch.optim.Adam([p for p in gen_params if p.requires_grad],
lr=lr_g, betas=(beta1, beta2), weight_decay=hyperparameters['weight_decay'])
# id params
if hyperparameters['ID_style']=='PCB':
ignored_params = (list(map(id, self.id_a.classifier0.parameters() ))
+list(map(id, self.id_a.classifier1.parameters() ))
+list(map(id, self.id_a.classifier2.parameters() ))
+list(map(id, self.id_a.classifier3.parameters() ))
)
base_params = filter(lambda p: id(p) not in ignored_params, self.id_a.parameters())
lr2 = hyperparameters['lr2']
self.id_opt = torch.optim.SGD([
{'params': base_params, 'lr': lr2},
{'params': self.id_a.classifier0.parameters(), 'lr': lr2*10},
{'params': self.id_a.classifier1.parameters(), 'lr': lr2*10},
{'params': self.id_a.classifier2.parameters(), 'lr': lr2*10},
{'params': self.id_a.classifier3.parameters(), 'lr': lr2*10}
], weight_decay=hyperparameters['weight_decay'], momentum=0.9, nesterov=True)
elif hyperparameters['ID_style']=='AB':
ignored_params = (list(map(id, self.id_a.classifier1.parameters()))
+ list(map(id, self.id_a.classifier2.parameters())))
base_params = filter(lambda p: id(p) not in ignored_params, self.id_a.parameters())
lr2 = hyperparameters['lr2']
self.id_opt = torch.optim.SGD([
{'params': base_params, 'lr': lr2},
{'params': self.id_a.classifier1.parameters(), 'lr': lr2*10},
{'params': self.id_a.classifier2.parameters(), 'lr': lr2*10}
], weight_decay=hyperparameters['weight_decay'], momentum=0.9, nesterov=True)
else:
ignored_params = list(map(id, self.id_a.classifier.parameters() ))
base_params = filter(lambda p: id(p) not in ignored_params, self.id_a.parameters())
lr2 = hyperparameters['lr2']
self.id_opt = torch.optim.SGD([
{'params': base_params, 'lr': lr2},
{'params': self.id_a.classifier.parameters(), 'lr': lr2*10}
], weight_decay=hyperparameters['weight_decay'], momentum=0.9, nesterov=True)
self.dis_scheduler = get_scheduler(self.dis_opt, hyperparameters)
self.gen_scheduler = get_scheduler(self.gen_opt, hyperparameters)
self.id_scheduler = get_scheduler(self.id_opt, hyperparameters)
self.id_scheduler.gamma = hyperparameters['gamma2']
#ID Loss
self.id_criterion = nn.CrossEntropyLoss()
self.criterion_teacher = nn.KLDivLoss(size_average=False)
# Load VGG model if needed
if 'vgg_w' in hyperparameters.keys() and hyperparameters['vgg_w'] > 0:
self.vgg = load_vgg16(hyperparameters['vgg_model_path'] + '/models')
self.vgg.eval()
for param in self.vgg.parameters():
param.requires_grad = False
# save memory
if self.fp16:
# Name the FP16_Optimizer instance to replace the existing optimizer
assert torch.backends.cudnn.enabled, "fp16 mode requires cudnn backend to be enabled."
self.gen_a = self.gen_a.cuda()
self.dis_a = self.dis_a.cuda()
self.id_a = self.id_a.cuda()
self.gen_b = self.gen_a
self.dis_b = self.dis_a
self.id_b = self.id_a
self.gen_a, self.gen_opt = amp.initialize(self.gen_a, self.gen_opt, opt_level="O1")
self.dis_a, self.dis_opt = amp.initialize(self.dis_a, self.dis_opt, opt_level="O1")
self.id_a, self.id_opt = amp.initialize(self.id_a, self.id_opt, opt_level="O1")
def to_re(self, x):
out = torch.FloatTensor(x.size(0), x.size(1), x.size(2), x.size(3))
out = out.cuda()
for i in range(x.size(0)):
out[i,:,:,:] = self.single_re(x[i,:,:,:])
return out
def recon_criterion(self, input, target):
diff = input - target.detach()
return torch.mean(torch.abs(diff[:]))
def recon_criterion_sqrt(self, input, target):
diff = input - target
return torch.mean(torch.sqrt(torch.abs(diff[:])+1e-8))
def recon_criterion2(self, input, target):
diff = input - target
return torch.mean(diff[:]**2)
def recon_cos(self, input, target):
cos = torch.nn.CosineSimilarity()
cos_dis = 1 - cos(input, target)
return torch.mean(cos_dis[:])
def forward(self, x_a, x_b, xp_a, xp_b):
s_a = self.gen_a.encode(self.single(x_a))
s_b = self.gen_b.encode(self.single(x_b))
f_a, p_a = self.id_a(scale2(x_a))
f_b, p_b = self.id_b(scale2(x_b))
x_ba = self.gen_a.decode(s_b, f_a)
x_ab = self.gen_b.decode(s_a, f_b)
x_a_recon = self.gen_a.decode(s_a, f_a)
x_b_recon = self.gen_b.decode(s_b, f_b)
fp_a, pp_a = self.id_a(scale2(xp_a))
fp_b, pp_b = self.id_b(scale2(xp_b))
# decode the same person
x_a_recon_p = self.gen_a.decode(s_a, fp_a)
x_b_recon_p = self.gen_b.decode(s_b, fp_b)
# Random Erasing only effect the ID and PID loss.
if self.erasing_p > 0:
x_a_re = self.to_re(scale2(x_a.clone()))
x_b_re = self.to_re(scale2(x_b.clone()))
xp_a_re = self.to_re(scale2(xp_a.clone()))
xp_b_re = self.to_re(scale2(xp_b.clone()))
_, p_a = self.id_a(x_a_re)
_, p_b = self.id_b(x_b_re)
# encode the same ID different photo
_, pp_a = self.id_a(xp_a_re)
_, pp_b = self.id_b(xp_b_re)
return x_ab, x_ba, s_a, s_b, f_a, f_b, p_a, p_b, pp_a, pp_b, x_a_recon, x_b_recon, x_a_recon_p, x_b_recon_p
def gen_update(self, x_ab, x_ba, s_a, s_b, f_a, f_b, p_a, p_b, pp_a, pp_b, x_a_recon, x_b_recon, x_a_recon_p, x_b_recon_p, x_a, x_b, xp_a, xp_b, l_a, l_b, hyperparameters, iteration, num_gpu):
# ppa, ppb is the same person
self.gen_opt.zero_grad()
self.id_opt.zero_grad()
# no gradient
x_ba_copy = Variable(x_ba.data, requires_grad=False)
x_ab_copy = Variable(x_ab.data, requires_grad=False)
rand_num = random.uniform(0,1)
#################################
# encode structure
if hyperparameters['use_encoder_again']>=rand_num:
# encode again (encoder is tuned, input is fixed)
s_a_recon = self.gen_b.enc_content(self.single(x_ab_copy))
s_b_recon = self.gen_a.enc_content(self.single(x_ba_copy))
else:
# copy the encoder
self.enc_content_copy = copy.deepcopy(self.gen_a.enc_content)
self.enc_content_copy = self.enc_content_copy.eval()
# encode again (encoder is fixed, input is tuned)
s_a_recon = self.enc_content_copy(self.single(x_ab))
s_b_recon = self.enc_content_copy(self.single(x_ba))
#################################
# encode appearance
self.id_a_copy = copy.deepcopy(self.id_a)
self.id_a_copy = self.id_a_copy.eval()
if hyperparameters['train_bn']:
self.id_a_copy = self.id_a_copy.apply(train_bn)
self.id_b_copy = self.id_a_copy
# encode again (encoder is fixed, input is tuned)
f_a_recon, p_a_recon = self.id_a_copy(scale2(x_ba))
f_b_recon, p_b_recon = self.id_b_copy(scale2(x_ab))
# teacher Loss
# Tune the ID model
log_sm = nn.LogSoftmax(dim=1)
if hyperparameters['teacher_w'] >0 and hyperparameters['teacher'] != "":
if hyperparameters['ID_style'] == 'normal':
_, p_a_student = self.id_a(scale2(x_ba_copy))
p_a_student = log_sm(p_a_student)
p_a_teacher = predict_label(self.teacher_model, scale2(x_ba_copy), num_class = hyperparameters['ID_class'], alabel = l_a, slabel = l_b, teacher_style = hyperparameters['teacher_style'])
self.loss_teacher = self.criterion_teacher(p_a_student, p_a_teacher) / p_a_student.size(0)
_, p_b_student = self.id_b(scale2(x_ab_copy))
p_b_student = log_sm(p_b_student)
p_b_teacher = predict_label(self.teacher_model, scale2(x_ab_copy), num_class = hyperparameters['ID_class'], alabel = l_b, slabel = l_a, teacher_style = hyperparameters['teacher_style'])
self.loss_teacher += self.criterion_teacher(p_b_student, p_b_teacher) / p_b_student.size(0)
elif hyperparameters['ID_style'] == 'AB':
# normal teacher-student loss
# BA -> LabelA(smooth) + LabelB(batchB)
_, p_ba_student = self.id_a(scale2(x_ba_copy))# f_a, s_b
p_a_student = log_sm(p_ba_student[0])
with torch.no_grad():
p_a_teacher = predict_label(self.teacher_model, scale2(x_ba_copy), num_class = hyperparameters['ID_class'], alabel = l_a, slabel = l_b, teacher_style = hyperparameters['teacher_style'])
self.loss_teacher = self.criterion_teacher(p_a_student, p_a_teacher) / p_a_student.size(0)
_, p_ab_student = self.id_b(scale2(x_ab_copy)) # f_b, s_a
p_b_student = log_sm(p_ab_student[0])
with torch.no_grad():
p_b_teacher = predict_label(self.teacher_model, scale2(x_ab_copy), num_class = hyperparameters['ID_class'], alabel = l_b, slabel = l_a, teacher_style = hyperparameters['teacher_style'])
self.loss_teacher += self.criterion_teacher(p_b_student, p_b_teacher) / p_b_student.size(0)
# branch b loss
# here we give different label
loss_B = self.id_criterion(p_ba_student[1], l_b) + self.id_criterion(p_ab_student[1], l_a)
self.loss_teacher = hyperparameters['T_w'] * self.loss_teacher + hyperparameters['B_w'] * loss_B
else:
self.loss_teacher = 0.0
# auto-encoder image reconstruction
self.loss_gen_recon_x_a = self.recon_criterion(x_a_recon, x_a)
self.loss_gen_recon_x_b = self.recon_criterion(x_b_recon, x_b)
self.loss_gen_recon_xp_a = self.recon_criterion(x_a_recon_p, x_a)
self.loss_gen_recon_xp_b = self.recon_criterion(x_b_recon_p, x_b)
# feature reconstruction
self.loss_gen_recon_s_a = self.recon_criterion(s_a_recon, s_a) if hyperparameters['recon_s_w'] > 0 else 0
self.loss_gen_recon_s_b = self.recon_criterion(s_b_recon, s_b) if hyperparameters['recon_s_w'] > 0 else 0
self.loss_gen_recon_f_a = self.recon_criterion(f_a_recon, f_a) if hyperparameters['recon_f_w'] > 0 else 0
self.loss_gen_recon_f_b = self.recon_criterion(f_b_recon, f_b) if hyperparameters['recon_f_w'] > 0 else 0
x_aba = self.gen_a.decode(s_a_recon, f_a_recon) if hyperparameters['recon_x_cyc_w'] > 0 else None
x_bab = self.gen_b.decode(s_b_recon, f_b_recon) if hyperparameters['recon_x_cyc_w'] > 0 else None
# ID loss AND Tune the Generated image
if hyperparameters['ID_style']=='PCB':
self.loss_id = self.PCB_loss(p_a, l_a) + self.PCB_loss(p_b, l_b)
self.loss_pid = self.PCB_loss(pp_a, l_a) + self.PCB_loss(pp_b, l_b)
self.loss_gen_recon_id = self.PCB_loss(p_a_recon, l_a) + self.PCB_loss(p_b_recon, l_b)
elif hyperparameters['ID_style']=='AB':
weight_B = hyperparameters['teacher_w'] * hyperparameters['B_w']
self.loss_id = self.id_criterion(p_a[0], l_a) + self.id_criterion(p_b[0], l_b) \
+ weight_B * ( self.id_criterion(p_a[1], l_a) + self.id_criterion(p_b[1], l_b) )
self.loss_pid = self.id_criterion(pp_a[0], l_a) + self.id_criterion(pp_b[0], l_b) #+ weight_B * ( self.id_criterion(pp_a[1], l_a) + self.id_criterion(pp_b[1], l_b) )
self.loss_gen_recon_id = self.id_criterion(p_a_recon[0], l_a) + self.id_criterion(p_b_recon[0], l_b)
else:
self.loss_id = self.id_criterion(p_a, l_a) + self.id_criterion(p_b, l_b)
self.loss_pid = self.id_criterion(pp_a, l_a) + self.id_criterion(pp_b, l_b)
self.loss_gen_recon_id = self.id_criterion(p_a_recon, l_a) + self.id_criterion(p_b_recon, l_b)
#print(f_a_recon, f_a)
self.loss_gen_cycrecon_x_a = self.recon_criterion(x_aba, x_a) if hyperparameters['recon_x_cyc_w'] > 0 else 0
self.loss_gen_cycrecon_x_b = self.recon_criterion(x_bab, x_b) if hyperparameters['recon_x_cyc_w'] > 0 else 0
# GAN loss
if num_gpu>1:
self.loss_gen_adv_a = self.dis_a.module.calc_gen_loss(self.dis_a, x_ba)
self.loss_gen_adv_b = self.dis_b.module.calc_gen_loss(self.dis_b, x_ab)
else:
self.loss_gen_adv_a = self.dis_a.calc_gen_loss(self.dis_a, x_ba)
self.loss_gen_adv_b = self.dis_b.calc_gen_loss(self.dis_b, x_ab)
# domain-invariant perceptual loss
self.loss_gen_vgg_a = self.compute_vgg_loss(self.vgg, x_ba, x_b) if hyperparameters['vgg_w'] > 0 else 0
self.loss_gen_vgg_b = self.compute_vgg_loss(self.vgg, x_ab, x_a) if hyperparameters['vgg_w'] > 0 else 0
if iteration > hyperparameters['warm_iter']:
hyperparameters['recon_f_w'] += hyperparameters['warm_scale']
hyperparameters['recon_f_w'] = min(hyperparameters['recon_f_w'], hyperparameters['max_w'])
hyperparameters['recon_s_w'] += hyperparameters['warm_scale']
hyperparameters['recon_s_w'] = min(hyperparameters['recon_s_w'], hyperparameters['max_w'])
hyperparameters['recon_x_cyc_w'] += hyperparameters['warm_scale']
hyperparameters['recon_x_cyc_w'] = min(hyperparameters['recon_x_cyc_w'], hyperparameters['max_cyc_w'])
if iteration > hyperparameters['warm_teacher_iter']:
hyperparameters['teacher_w'] += hyperparameters['warm_scale']
hyperparameters['teacher_w'] = min(hyperparameters['teacher_w'], hyperparameters['max_teacher_w'])
# total loss
self.loss_gen_total = hyperparameters['gan_w'] * self.loss_gen_adv_a + \
hyperparameters['gan_w'] * self.loss_gen_adv_b + \
hyperparameters['recon_x_w'] * self.loss_gen_recon_x_a + \
hyperparameters['recon_xp_w'] * self.loss_gen_recon_xp_a + \
hyperparameters['recon_f_w'] * self.loss_gen_recon_f_a + \
hyperparameters['recon_s_w'] * self.loss_gen_recon_s_a + \
hyperparameters['recon_x_w'] * self.loss_gen_recon_x_b + \
hyperparameters['recon_xp_w'] * self.loss_gen_recon_xp_b + \
hyperparameters['recon_f_w'] * self.loss_gen_recon_f_b + \
hyperparameters['recon_s_w'] * self.loss_gen_recon_s_b + \
hyperparameters['recon_x_cyc_w'] * self.loss_gen_cycrecon_x_a + \
hyperparameters['recon_x_cyc_w'] * self.loss_gen_cycrecon_x_b + \
hyperparameters['id_w'] * self.loss_id + \
hyperparameters['pid_w'] * self.loss_pid + \
hyperparameters['recon_id_w'] * self.loss_gen_recon_id + \
hyperparameters['vgg_w'] * self.loss_gen_vgg_a + \
hyperparameters['vgg_w'] * self.loss_gen_vgg_b + \
hyperparameters['teacher_w'] * self.loss_teacher
if self.fp16:
with amp.scale_loss(self.loss_gen_total, [self.gen_opt,self.id_opt]) as scaled_loss:
scaled_loss.backward()
self.gen_opt.step()
self.id_opt.step()
else:
self.loss_gen_total.backward()
self.gen_opt.step()
self.id_opt.step()
print("L_total: %.4f, L_gan: %.4f, Lx: %.4f, Lxp: %.4f, Lrecycle:%.4f, Lf: %.4f, Ls: %.4f, Recon-id: %.4f, id: %.4f, pid:%.4f, teacher: %.4f"%( self.loss_gen_total, \
hyperparameters['gan_w'] * (self.loss_gen_adv_a + self.loss_gen_adv_b), \
hyperparameters['recon_x_w'] * (self.loss_gen_recon_x_a + self.loss_gen_recon_x_b), \
hyperparameters['recon_xp_w'] * (self.loss_gen_recon_xp_a + self.loss_gen_recon_xp_b), \
hyperparameters['recon_x_cyc_w'] * (self.loss_gen_cycrecon_x_a + self.loss_gen_cycrecon_x_b), \
hyperparameters['recon_f_w'] * (self.loss_gen_recon_f_a + self.loss_gen_recon_f_b), \
hyperparameters['recon_s_w'] * (self.loss_gen_recon_s_a + self.loss_gen_recon_s_b), \
hyperparameters['recon_id_w'] * self.loss_gen_recon_id, \
hyperparameters['id_w'] * self.loss_id,\
hyperparameters['pid_w'] * self.loss_pid,\
hyperparameters['teacher_w'] * self.loss_teacher ) )
def compute_vgg_loss(self, vgg, img, target):
img_vgg = vgg_preprocess(img)
target_vgg = vgg_preprocess(target)
img_fea = vgg(img_vgg)
target_fea = vgg(target_vgg)
return torch.mean((self.instancenorm(img_fea) - self.instancenorm(target_fea)) ** 2)
def PCB_loss(self, inputs, labels):
loss = 0.0
for part in inputs:
loss += self.id_criterion(part, labels)
return loss/len(inputs)
def sample(self, x_a, x_b):
self.eval()
x_a_recon, x_b_recon, x_ba1, x_ab1, x_aba, x_bab = [], [], [], [], [], []
for i in range(x_a.size(0)):
s_a = self.gen_a.encode( self.single(x_a[i].unsqueeze(0)) )
s_b = self.gen_b.encode( self.single(x_b[i].unsqueeze(0)) )
f_a, _ = self.id_a( scale2(x_a[i].unsqueeze(0)))
f_b, _ = self.id_b( scale2(x_b[i].unsqueeze(0)))
x_a_recon.append(self.gen_a.decode(s_a, f_a))
x_b_recon.append(self.gen_b.decode(s_b, f_b))
x_ba = self.gen_a.decode(s_b, f_a)
x_ab = self.gen_b.decode(s_a, f_b)
x_ba1.append(x_ba)
x_ab1.append(x_ab)
#cycle
s_b_recon = self.gen_a.enc_content(self.single(x_ba))
s_a_recon = self.gen_b.enc_content(self.single(x_ab))
f_a_recon, _ = self.id_a(scale2(x_ba))
f_b_recon, _ = self.id_b(scale2(x_ab))
x_aba.append(self.gen_a.decode(s_a_recon, f_a_recon))
x_bab.append(self.gen_b.decode(s_b_recon, f_b_recon))
x_a_recon, x_b_recon = torch.cat(x_a_recon), torch.cat(x_b_recon)
x_aba, x_bab = torch.cat(x_aba), torch.cat(x_bab)
x_ba1, x_ab1 = torch.cat(x_ba1), torch.cat(x_ab1)
self.train()
return x_a, x_a_recon, x_aba, x_ab1, x_b, x_b_recon, x_bab, x_ba1
def dis_update(self, x_ab, x_ba, x_a, x_b, hyperparameters, num_gpu):
self.dis_opt.zero_grad()
# D loss
if num_gpu>1:
self.loss_dis_a, reg_a = self.dis_a.module.calc_dis_loss(self.dis_a, x_ba.detach(), x_a)
self.loss_dis_b, reg_b = self.dis_b.module.calc_dis_loss(self.dis_b, x_ab.detach(), x_b)
else:
self.loss_dis_a, reg_a = self.dis_a.calc_dis_loss(self.dis_a, x_ba.detach(), x_a)
self.loss_dis_b, reg_b = self.dis_b.calc_dis_loss(self.dis_b, x_ab.detach(), x_b)
self.loss_dis_total = hyperparameters['gan_w'] * self.loss_dis_a + hyperparameters['gan_w'] * self.loss_dis_b
print("DLoss: %.4f"%self.loss_dis_total, "Reg: %.4f"%(reg_a+reg_b) )
if self.fp16:
with amp.scale_loss(self.loss_dis_total, self.dis_opt) as scaled_loss:
scaled_loss.backward()
else:
self.loss_dis_total.backward()
self.dis_opt.step()
def update_learning_rate(self):
if self.dis_scheduler is not None:
self.dis_scheduler.step()
if self.gen_scheduler is not None:
self.gen_scheduler.step()
if self.id_scheduler is not None:
self.id_scheduler.step()
def resume(self, checkpoint_dir, hyperparameters):
# Load generators
last_model_name = get_model_list(checkpoint_dir, "gen")
state_dict = torch.load(last_model_name)
self.gen_a.load_state_dict(state_dict['a'])
self.gen_b = self.gen_a
iterations = int(last_model_name[-11:-3])
# Load discriminators
last_model_name = get_model_list(checkpoint_dir, "dis")
state_dict = torch.load(last_model_name)
self.dis_a.load_state_dict(state_dict['a'])
self.dis_b = self.dis_a
# Load ID dis
last_model_name = get_model_list(checkpoint_dir, "id")
state_dict = torch.load(last_model_name)
self.id_a.load_state_dict(state_dict['a'])
self.id_b = self.id_a
# Load optimizers
try:
state_dict = torch.load(os.path.join(checkpoint_dir, 'optimizer.pt'))
self.dis_opt.load_state_dict(state_dict['dis'])
self.gen_opt.load_state_dict(state_dict['gen'])
self.id_opt.load_state_dict(state_dict['id'])
except:
pass
# Reinitilize schedulers
self.dis_scheduler = get_scheduler(self.dis_opt, hyperparameters, iterations)
self.gen_scheduler = get_scheduler(self.gen_opt, hyperparameters, iterations)
print('Resume from iteration %d' % iterations)
return iterations
def save(self, snapshot_dir, iterations, num_gpu=1):
# Save generators, discriminators, and optimizers
gen_name = os.path.join(snapshot_dir, 'gen_%08d.pt' % (iterations + 1))
dis_name = os.path.join(snapshot_dir, 'dis_%08d.pt' % (iterations + 1))
id_name = os.path.join(snapshot_dir, 'id_%08d.pt' % (iterations + 1))
opt_name = os.path.join(snapshot_dir, 'optimizer.pt')
torch.save({'a': self.gen_a.state_dict()}, gen_name)
if num_gpu>1:
torch.save({'a': self.dis_a.module.state_dict()}, dis_name)
else:
torch.save({'a': self.dis_a.state_dict()}, dis_name)
torch.save({'a': self.id_a.state_dict()}, id_name)
torch.save({'gen': self.gen_opt.state_dict(), 'id': self.id_opt.state_dict(), 'dis': self.dis_opt.state_dict()}, opt_name)