TF之pix2pix:基于TF利用Facades数据集训练pix2pix模型、测试并进行生成过程全记录
2023-09-14 09:04:47 时间
TF之pix2pix:基于TF利用Facades数据集训练pix2pix模型、测试并进行生成过程全记录
目录
TB监控
1、SCALARS
2、IMAGES
inputs_summary | outputs_summary | ||
predict_fake_summary | predict_real_summary | ||
targets_summary |
3、GRAPHS
4、DISTRIBUTIONS
输出结果
训练代码运行过程全记录
2 epoch:2126~2218
开始训练
aspect_ratio = 1.0
batch_size = 1
beta1 = 0.5
checkpoint = None
display_freq = 0
flip = True
gan_weight = 1.0
input_dir = facades/train
l1_weight = 100.0
lab_colorization = False
lr = 0.0002
max_epochs = 200
max_steps = None
mode = train
ndf = 64
ngf = 64
output_dir = facades_train
output_filetype = png
progress_freq = 50
save_freq = 5000
scale_size = 286
seed = 407313043
summary_freq = 100
trace_freq = 0
which_direction = BtoA
2018-10-07 21:26:49.558601:
parameter_count = 57183616
progress epoch 1 step 50 image/sec 0.4 remaining 35m
discrim_loss 0.59409106
gen_loss_GAN 0.3667453
gen_loss_L1 0.14627346
recording summary
progress epoch 1 step 100 image/sec 0.3 remaining 33m
discrim_loss 0.77973217
gen_loss_GAN 0.74193096
gen_loss_L1 0.21620709
progress epoch 1 step 150 image/sec 0.4 remaining 30m
discrim_loss 0.7097481
gen_loss_GAN 1.2259353
gen_loss_L1 0.27181715
recording summary
progress epoch 1 step 200 image/sec 0.4 remaining 28m
discrim_loss 0.6670909
gen_loss_GAN 1.5955695
gen_loss_L1 0.30515844
progress epoch 1 step 250 image/sec 0.4 remaining 25m
discrim_loss 0.5505945
gen_loss_GAN 1.897398
gen_loss_L1 0.3195855
recording summary
progress epoch 1 step 300 image/sec 0.4 remaining 23m
discrim_loss 0.54358536
gen_loss_GAN 2.1270702
gen_loss_L1 0.33635142
progress epoch 1 step 350 image/sec 0.4 remaining 21m
discrim_loss 0.53915083
gen_loss_GAN 2.234504
gen_loss_L1 0.33556485
recording summary
progress epoch 1 step 400 image/sec 0.4 remaining 18m
discrim_loss 0.5494336
gen_loss_GAN 2.349324
gen_loss_L1 0.33941123
progress epoch 2 step 50 image/sec 0.4 remaining 16m
discrim_loss 0.5763757
gen_loss_GAN 2.3618762
gen_loss_L1 0.3413253
recording summary
progress epoch 2 step 100 image/sec 0.4 remaining 14m
discrim_loss 0.63876843
gen_loss_GAN 2.2650375
gen_loss_L1 0.3409966
progress epoch 2 step 150 image/sec 0.4 remaining 11m
discrim_loss 0.6011929
gen_loss_GAN 2.264903
gen_loss_L1 0.34726414
recording summary
progress epoch 2 step 200 image/sec 0.4 remaining 9m
discrim_loss 0.59052
gen_loss_GAN 2.302569
gen_loss_L1 0.3522855
progress epoch 2 step 250 image/sec 0.3 remaining 7m
discrim_loss 0.57109314
gen_loss_GAN 2.324084
gen_loss_L1 0.35149702
recording summary
progress epoch 2 step 300 image/sec 0.3 remaining 4m
discrim_loss 0.4946928
gen_loss_GAN 2.5188313
gen_loss_L1 0.3564302
progress epoch 2 step 350 image/sec 0.3 remaining 2m
discrim_loss 0.5365153
gen_loss_GAN 2.5414586
gen_loss_L1 0.35425124
recording summary
progress epoch 2 step 400 image/sec 0.3 remaining 0m
discrim_loss 0.56210524
gen_loss_GAN 2.5018184
gen_loss_L1 0.35051015
saving model
测试代码全记录
开始测试
loaded lab_colorization = False
loaded ndf = 64
loaded ngf = 64
loaded which_direction = BtoA
aspect_ratio = 1.0
batch_size = 1
beta1 = 0.5
checkpoint = facades_train
display_freq = 0
flip = False
gan_weight = 1.0
input_dir = facades/val
l1_weight = 100.0
lab_colorization = False
lr = 0.0002
max_epochs = None
max_steps = None
mode = test
ndf = 64
ngf = 64
output_dir = facades_test
output_filetype = png
progress_freq = 50
save_freq = 5000
scale_size = 256
seed = 651085994
summary_freq = 100
trace_freq = 0
which_direction = BtoA
examples count = 100
parameter_count = 57183616
loading model from checkpoint
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wrote index at facades_test\index.html
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