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import torch |
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import pandas as pd |
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from .OCR_network import * |
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from torch.nn import CTCLoss, MSELoss, L1Loss |
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from torch.nn.utils import clip_grad_norm_ |
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import random |
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import unicodedata |
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import sys |
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import torchvision.models as models |
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from models.transformer import * |
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from .BigGAN_networks import * |
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from params import * |
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from .OCR_network import * |
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from models.blocks import LinearBlock, Conv2dBlock, ResBlocks, ActFirstResBlock |
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from util.util import toggle_grad, loss_hinge_dis, loss_hinge_gen, ortho, default_ortho, toggle_grad, prepare_z_y, \ |
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make_one_hot, to_device, multiple_replace, random_word |
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from data.dataset import TextDataset, TextDatasetval |
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import cv2 |
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import time |
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import matplotlib.pyplot as plt |
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import shutil |
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def get_rgb(x): |
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R = 255 - int(int(x>0.5)*255*(x-0.5)/0.5) |
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G = 0 |
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B = 255 + int(int(x<0.5)*255*(x-0.5)/0.5) |
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return R, G, B |
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def get_page_from_words(word_lists, MAX_IMG_WIDTH = 800): |
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line_all = [] |
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line_t = [] |
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width_t = 0 |
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for i in word_lists: |
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width_t = width_t + i.shape[1] + 16 |
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if width_t>MAX_IMG_WIDTH: |
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line_all.append(np.concatenate(line_t, 1)) |
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line_t = [] |
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width_t = i.shape[1] + 16 |
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line_t.append(i) |
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line_t.append(np.ones((i.shape[0], 16))) |
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if len(line_all) == 0: |
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line_all.append(np.concatenate(line_t, 1)) |
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max_lin_widths = MAX_IMG_WIDTH |
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gap_h = np.ones([16,max_lin_widths]) |
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page_= [] |
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for l in line_all: |
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pad_ = np.ones([l.shape[0],max_lin_widths - l.shape[1]]) |
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page_.append(np.concatenate([l, pad_], 1)) |
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page_.append(gap_h) |
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page = np.concatenate(page_, 0) |
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return page*255 |
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class FCNDecoder(nn.Module): |
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def __init__(self, ups=3, n_res=2, dim=512, out_dim=1, res_norm='adain', activ='relu', pad_type='reflect'): |
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super(FCNDecoder, self).__init__() |
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self.model = [] |
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self.model += [ResBlocks(n_res, dim, res_norm, |
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activ, pad_type=pad_type)] |
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for i in range(ups): |
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self.model += [nn.Upsample(scale_factor=2), |
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Conv2dBlock(dim, dim // 2, 5, 1, 2, |
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norm='in', |
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activation=activ, |
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pad_type=pad_type)] |
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dim //= 2 |
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self.model += [Conv2dBlock(dim, out_dim, 7, 1, 3, |
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norm='none', |
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activation='tanh', |
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pad_type=pad_type)] |
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self.model = nn.Sequential(*self.model) |
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def forward(self, x): |
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y = self.model(x) |
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return y |
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class Generator(nn.Module): |
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def __init__(self): |
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super(Generator, self).__init__() |
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INP_CHANNEL = NUM_EXAMPLES |
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if IS_SEQ: INP_CHANNEL = 1 |
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encoder_layer = TransformerEncoderLayer(TN_HIDDEN_DIM, TN_NHEADS, TN_DIM_FEEDFORWARD, |
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TN_DROPOUT, "relu", True) |
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encoder_norm = nn.LayerNorm(TN_HIDDEN_DIM) if True else None |
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self.encoder = TransformerEncoder(encoder_layer, TN_ENC_LAYERS, encoder_norm) |
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decoder_layer = TransformerDecoderLayer(TN_HIDDEN_DIM, TN_NHEADS, TN_DIM_FEEDFORWARD, |
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TN_DROPOUT, "relu", True) |
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decoder_norm = nn.LayerNorm(TN_HIDDEN_DIM) |
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self.decoder = TransformerDecoder(decoder_layer, TN_DEC_LAYERS, decoder_norm, |
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return_intermediate=True) |
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self.Feat_Encoder = nn.Sequential(*([nn.Conv2d(INP_CHANNEL, 64, kernel_size=7, stride=2, padding=3, bias=False)] +list(models.resnet18(pretrained=True).children())[1:-2])) |
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self.query_embed = nn.Embedding(VOCAB_SIZE, TN_HIDDEN_DIM) |
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self.linear_q = nn.Linear(TN_DIM_FEEDFORWARD, TN_DIM_FEEDFORWARD*8) |
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self.DEC = FCNDecoder(res_norm = 'in') |
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self._muE = nn.Linear(512,512) |
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self._logvarE = nn.Linear(512,512) |
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self._muD = nn.Linear(512,512) |
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self._logvarD = nn.Linear(512,512) |
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self.l1loss = nn.L1Loss() |
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self.noise = torch.distributions.Normal(loc=torch.tensor([0.]), scale=torch.tensor([1.0])) |
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def reparameterize(self, mu, logvar): |
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mu = torch.unbind(mu , 1) |
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logvar = torch.unbind(logvar , 1) |
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outs = [] |
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for m,l in zip(mu, logvar): |
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sigma = torch.exp(l) |
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eps = torch.cuda.FloatTensor(l.size()[0],1).normal_(0,1) |
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eps = eps.expand(sigma.size()) |
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out = m + sigma*eps |
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outs.append(out) |
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return torch.stack(outs, 1) |
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def Eval(self, ST, QRS): |
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batch_size = ST.shape[0] |
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if IS_SEQ: |
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B, N, R, C = ST.shape |
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FEAT_ST = self.Feat_Encoder(ST.view(B*N, 1, R, C)) |
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FEAT_ST = FEAT_ST.view(B, 512, 1, -1) |
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else: |
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FEAT_ST = self.Feat_Encoder(ST) |
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FEAT_ST_ENC = FEAT_ST.flatten(2).permute(2,0,1) |
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memory = self.encoder(FEAT_ST_ENC) |
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if IS_KLD: |
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Ex = memory.permute(1,0,2) |
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memory_mu = self._muE(Ex) |
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memory_logvar = self._logvarE(Ex) |
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memory = self.reparameterize(memory_mu, memory_logvar).permute(1,0,2) |
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OUT_IMGS = [] |
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for i in range(QRS.shape[1]): |
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QR = QRS[:, i, :] |
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if ALL_CHARS: |
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QR_EMB = self.query_embed.weight.repeat(ST.shape[0],1,1).permute(1,0,2) |
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else: |
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QR_EMB = self.query_embed.weight[QR].permute(1,0,2) |
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tgt = torch.zeros_like(QR_EMB) |
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hs = self.decoder(tgt, memory, query_pos=QR_EMB) |
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if IS_KLD: |
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Dx = hs[0].permute(1,0,2) |
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hs_mu = self._muD(Dx) |
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hs_logvar = self._logvarD(Dx) |
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hs = self.reparameterize(hs_mu, hs_logvar).permute(1,0,2).unsqueeze(0) |
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h = hs.transpose(1, 2)[-1] |
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if ADD_NOISE: h = h + self.noise.sample(h.size()).squeeze(-1).to(DEVICE) |
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h = self.linear_q(h) |
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h = h.contiguous() |
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if ALL_CHARS: h = torch.stack([h[i][QR[i]] for i in range(batch_size)], 0) |
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h = h.view(h.size(0), h.shape[1]*2, 4, -1) |
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h = h.permute(0, 3, 2, 1) |
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h = self.DEC(h) |
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OUT_IMGS.append(h.detach()) |
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return OUT_IMGS |
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def forward(self, ST, QR, QRs = None, mode = 'train'): |
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enc_attn_weights, dec_attn_weights = [], [] |
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self.hooks = [ |
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self.encoder.layers[-1].self_attn.register_forward_hook( |
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lambda self, input, output: enc_attn_weights.append(output[1]) |
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), |
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self.decoder.layers[-1].multihead_attn.register_forward_hook( |
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lambda self, input, output: dec_attn_weights.append(output[1]) |
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), |
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] |
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B, N, R, C = ST.shape |
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FEAT_ST = self.Feat_Encoder(ST.view(B*N, 1, R, C)) |
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FEAT_ST = FEAT_ST.view(B, 512, 1, -1) |
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FEAT_ST_ENC = FEAT_ST.flatten(2).permute(2,0,1) |
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memory = self.encoder(FEAT_ST_ENC) |
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QR_EMB = self.query_embed.weight[QR].permute(1,0,2) |
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tgt = torch.zeros_like(QR_EMB) |
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hs = self.decoder(tgt, memory, query_pos=QR_EMB) |
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h = hs.transpose(1, 2)[-1] |
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if ADD_NOISE: h = h + self.noise.sample(h.size()).squeeze(-1).to(DEVICE) |
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h = self.linear_q(h) |
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h = h.contiguous() |
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h = h.view(h.size(0), h.shape[1]*2, 4, -1) |
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h = h.permute(0, 3, 2, 1) |
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h = self.DEC(h) |
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self.dec_attn_weights = dec_attn_weights[-1].detach() |
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self.enc_attn_weights = enc_attn_weights[-1].detach() |
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for hook in self.hooks: |
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hook.remove() |
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return h |
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class TRGAN(nn.Module): |
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def __init__(self, batch_size=batch_size): |
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super(TRGAN, self).__init__() |
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self.batch_size = batch_size |
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self.epsilon = 1e-7 |
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self.netG = Generator().to(DEVICE) |
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self.netD = nn.DataParallel(Discriminator()).to(DEVICE) |
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self.netW = nn.DataParallel(WDiscriminator()).to(DEVICE) |
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self.netconverter = strLabelConverter(ALPHABET) |
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self.netOCR = CRNN().to(DEVICE) |
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self.OCR_criterion = CTCLoss(zero_infinity=True, reduction='none') |
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self.optimizer_G = torch.optim.Adam(self.netG.parameters(), |
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lr=G_LR, betas=(0.0, 0.999), weight_decay=0, eps=1e-8) |
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self.optimizer_OCR = torch.optim.Adam(self.netOCR.parameters(), |
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lr=OCR_LR, betas=(0.0, 0.999), weight_decay=0, |
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eps=1e-8) |
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self.optimizer_D = torch.optim.Adam(self.netD.parameters(), |
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lr=D_LR, betas=(0.0, 0.999), weight_decay=0, eps=1e-8) |
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self.optimizer_wl = torch.optim.Adam(self.netW.parameters(), |
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lr=W_LR, betas=(0.0, 0.999), weight_decay=0, eps=1e-8) |
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self.optimizers = [self.optimizer_G, self.optimizer_OCR, self.optimizer_D, self.optimizer_wl] |
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self.optimizer_G.zero_grad() |
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self.optimizer_OCR.zero_grad() |
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self.optimizer_D.zero_grad() |
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self.optimizer_wl.zero_grad() |
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self.loss_G = 0 |
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self.loss_D = 0 |
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self.loss_Dfake = 0 |
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self.loss_Dreal = 0 |
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self.loss_OCR_fake = 0 |
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self.loss_OCR_real = 0 |
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self.loss_w_fake = 0 |
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self.loss_w_real = 0 |
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self.Lcycle1 = 0 |
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self.Lcycle2 = 0 |
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self.lda1 = 0 |
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self.lda2 = 0 |
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self.KLD = 0 |
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with open(ENGLISH_WORDS_PATH, 'rb') as f: |
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self.lex = f.read().splitlines() |
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lex=[] |
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for word in self.lex: |
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try: |
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word=word.decode("utf-8") |
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except: |
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continue |
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if len(word)<20: |
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lex.append(word) |
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self.lex = lex |
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f = open('mytext.txt', 'r') |
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self.text = [j.encode() for j in sum([i.split(' ') for i in f.readlines()], [])] |
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self.eval_text_encode, self.eval_len_text = self.netconverter.encode(self.text) |
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self.eval_text_encode = self.eval_text_encode.to(DEVICE).repeat(self.batch_size, 1, 1) |
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def save_images_for_fid_calculation(self, dataloader, epoch, mode = 'train'): |
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self.real_base = os.path.join('saved_images', EXP_NAME, 'Real') |
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self.fake_base = os.path.join('saved_images', EXP_NAME, 'Fake') |
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if os.path.isdir(self.real_base): shutil.rmtree(self.real_base) |
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if os.path.isdir(self.fake_base): shutil.rmtree(self.fake_base) |
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os.mkdir(self.real_base) |
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os.mkdir(self.fake_base) |
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for step,data in enumerate(dataloader): |
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ST = data['simg'].cuda() |
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self.fakes = self.netG.Eval(ST, self.eval_text_encode) |
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fake_images = torch.cat(self.fakes, 1).detach().cpu().numpy() |
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for i in range(fake_images.shape[0]): |
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for j in range(fake_images.shape[1]): |
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cv2.imwrite(os.path.join(self.fake_base, str(step*self.batch_size + i)+'_'+str(j)+'.png'), 255*(fake_images[i,j])) |
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if mode == 'train': |
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TextDatasetObj = TextDataset(num_examples = self.eval_text_encode.shape[1]) |
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dataset_real = torch.utils.data.DataLoader( |
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TextDatasetObj, |
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batch_size=self.batch_size, |
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shuffle=True, |
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num_workers=0, |
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pin_memory=True, drop_last=True, |
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collate_fn=TextDatasetObj.collate_fn) |
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elif mode == 'test': |
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TextDatasetObjval = TextDatasetval(num_examples = self.eval_text_encode.shape[1]) |
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dataset_real = torch.utils.data.DataLoader( |
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TextDatasetObjval, |
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batch_size=self.batch_size, |
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shuffle=True, |
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num_workers=0, |
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pin_memory=True, drop_last=True, |
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collate_fn=TextDatasetObjval.collate_fn) |
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for step,data in enumerate(dataset_real): |
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real_images = data['simg'].numpy() |
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for i in range(real_images.shape[0]): |
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for j in range(real_images.shape[1]): |
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cv2.imwrite(os.path.join(self.real_base, str(step*self.batch_size + i)+'_'+str(j)+'.png'), 255*(real_images[i,j])) |
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return self.real_base, self.fake_base |
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def _generate_page(self, ST, SLEN, eval_text_encode = None, eval_len_text = None, no_concat = False): |
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if eval_text_encode == None: |
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eval_text_encode = self.eval_text_encode |
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if eval_len_text == None: |
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eval_len_text = self.eval_len_text |
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self.fakes = self.netG.Eval(ST, eval_text_encode) |
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page1s = [] |
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page2s = [] |
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for batch_idx in range(self.batch_size): |
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word_t = [] |
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word_l = [] |
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gap = np.ones([IMG_HEIGHT,16]) |
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line_wids = [] |
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for idx, fake_ in enumerate(self.fakes): |
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word_t.append((fake_[batch_idx,0,:,:eval_len_text[idx]*resolution].cpu().numpy()+1)/2) |
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word_t.append(gap) |
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if len(word_t) == 16 or idx == len(self.fakes) - 1: |
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line_ = np.concatenate(word_t, -1) |
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word_l.append(line_) |
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line_wids.append(line_.shape[1]) |
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word_t = [] |
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gap_h = np.ones([16,max(line_wids)]) |
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page_= [] |
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for l in word_l: |
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pad_ = np.ones([IMG_HEIGHT,max(line_wids) - l.shape[1]]) |
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page_.append(np.concatenate([l, pad_], 1)) |
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page_.append(gap_h) |
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page1 = np.concatenate(page_, 0) |
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word_t = [] |
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word_l = [] |
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gap = np.ones([IMG_HEIGHT,16]) |
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line_wids = [] |
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sdata_ = [i.unsqueeze(1) for i in torch.unbind(ST, 1)] |
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for idx, st in enumerate((sdata_)): |
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word_t.append((st[batch_idx,0,:,:int(SLEN.cpu().numpy()[batch_idx][idx])].cpu().numpy()+1)/2) |
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word_t.append(gap) |
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if len(word_t) == 16 or idx == len(sdata_) - 1: |
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line_ = np.concatenate(word_t, -1) |
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word_l.append(line_) |
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line_wids.append(line_.shape[1]) |
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word_t = [] |
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gap_h = np.ones([16,max(line_wids)]) |
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page_= [] |
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for l in word_l: |
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pad_ = np.ones([IMG_HEIGHT,max(line_wids) - l.shape[1]]) |
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page_.append(np.concatenate([l, pad_], 1)) |
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page_.append(gap_h) |
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page2 = np.concatenate(page_, 0) |
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merge_w_size = max(page1.shape[0], page2.shape[0]) |
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if page1.shape[0] != merge_w_size: |
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page1 = np.concatenate([page1, np.ones([merge_w_size-page1.shape[0], page1.shape[1]])], 0) |
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if page2.shape[0] != merge_w_size: |
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page2 = np.concatenate([page2, np.ones([merge_w_size-page2.shape[0], page2.shape[1]])], 0) |
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page1s.append(page1) |
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page2s.append(page2) |
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if no_concat: |
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return page2s, page1s |
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page1s_ = np.concatenate(page1s,0) |
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max_wid = max([i.shape[1] for i in page2s]) |
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padded_page2s = [] |
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for para in page2s: |
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padded_page2s.append(np.concatenate([para, np.ones([ para.shape[0], max_wid-para.shape[1]])], 1)) |
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padded_page2s_ = np.concatenate(padded_page2s,0) |
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return np.concatenate([padded_page2s_, page1s_], 1) |
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def get_current_losses(self): |
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losses = {} |
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losses['G'] = self.loss_G |
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losses['D'] = self.loss_D |
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losses['Dfake'] = self.loss_Dfake |
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losses['Dreal'] = self.loss_Dreal |
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losses['OCR_fake'] = self.loss_OCR_fake |
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losses['OCR_real'] = self.loss_OCR_real |
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losses['w_fake'] = self.loss_w_fake |
|
losses['w_real'] = self.loss_w_real |
|
losses['cycle1'] = self.Lcycle1 |
|
losses['cycle2'] = self.Lcycle2 |
|
losses['lda1'] = self.lda1 |
|
losses['lda2'] = self.lda2 |
|
losses['KLD'] = self.KLD |
|
|
|
return losses |
|
|
|
|
|
|
|
|
|
def load_networks(self, epoch): |
|
BaseModel.load_networks(self, epoch) |
|
if self.opt.single_writer: |
|
load_filename = '%s_z.pkl' % (epoch) |
|
load_path = os.path.join(self.save_dir, load_filename) |
|
self.z = torch.load(load_path) |
|
|
|
def _set_input(self, input): |
|
self.input = input |
|
|
|
def set_requires_grad(self, nets, requires_grad=False): |
|
"""Set requies_grad=Fasle for all the networks to avoid unnecessary computations |
|
Parameters: |
|
nets (network list) -- a list of networks |
|
requires_grad (bool) -- whether the networks require gradients or not |
|
""" |
|
if not isinstance(nets, list): |
|
nets = [nets] |
|
for net in nets: |
|
if net is not None: |
|
for param in net.parameters(): |
|
param.requires_grad = requires_grad |
|
|
|
def forward(self): |
|
|
|
|
|
self.real = self.input['img'].to(DEVICE) |
|
self.label = self.input['label'] |
|
self.sdata = self.input['simg'].to(DEVICE) |
|
self.ST_LEN = self.input['swids'] |
|
self.text_encode, self.len_text = self.netconverter.encode(self.label) |
|
self.one_hot_real = make_one_hot(self.text_encode, self.len_text, VOCAB_SIZE).to(DEVICE).detach() |
|
self.text_encode = self.text_encode.to(DEVICE).detach() |
|
self.len_text = self.len_text.detach() |
|
|
|
self.words = [word.encode('utf-8') for word in np.random.choice(self.lex, self.batch_size)] |
|
self.text_encode_fake, self.len_text_fake = self.netconverter.encode(self.words) |
|
self.text_encode_fake = self.text_encode_fake.to(DEVICE) |
|
self.one_hot_fake = make_one_hot(self.text_encode_fake, self.len_text_fake, VOCAB_SIZE).to(DEVICE) |
|
|
|
self.text_encode_fake_js = [] |
|
|
|
for _ in range(NUM_WORDS - 1): |
|
|
|
self.words_j = [word.encode('utf-8') for word in np.random.choice(self.lex, self.batch_size)] |
|
self.text_encode_fake_j, self.len_text_fake_j = self.netconverter.encode(self.words_j) |
|
self.text_encode_fake_j = self.text_encode_fake_j.to(DEVICE) |
|
self.text_encode_fake_js.append(self.text_encode_fake_j) |
|
|
|
|
|
self.fake = self.netG(self.sdata, self.text_encode_fake, self.text_encode_fake_js) |
|
|
|
|
|
def backward_D_OCR(self): |
|
|
|
pred_real = self.netD(self.real.detach()) |
|
|
|
pred_fake = self.netD(**{'x': self.fake.detach()}) |
|
|
|
|
|
self.loss_Dreal, self.loss_Dfake = loss_hinge_dis(pred_fake, pred_real, self.len_text_fake.detach(), self.len_text.detach(), True) |
|
|
|
self.loss_D = self.loss_Dreal + self.loss_Dfake |
|
|
|
self.pred_real_OCR = self.netOCR(self.real.detach()) |
|
preds_size = torch.IntTensor([self.pred_real_OCR.size(0)] * self.batch_size).detach() |
|
loss_OCR_real = self.OCR_criterion(self.pred_real_OCR, self.text_encode.detach(), preds_size, self.len_text.detach()) |
|
self.loss_OCR_real = torch.mean(loss_OCR_real[~torch.isnan(loss_OCR_real)]) |
|
|
|
loss_total = self.loss_D + self.loss_OCR_real |
|
|
|
loss_total.backward() |
|
for param in self.netOCR.parameters(): |
|
param.grad[param.grad!=param.grad]=0 |
|
param.grad[torch.isnan(param.grad)]=0 |
|
param.grad[torch.isinf(param.grad)]=0 |
|
|
|
|
|
|
|
return loss_total |
|
|
|
def backward_D_WL(self): |
|
|
|
pred_real = self.netD(self.real.detach()) |
|
|
|
pred_fake = self.netD(**{'x': self.fake.detach()}) |
|
|
|
|
|
self.loss_Dreal, self.loss_Dfake = loss_hinge_dis(pred_fake, pred_real, self.len_text_fake.detach(), self.len_text.detach(), True) |
|
|
|
self.loss_D = self.loss_Dreal + self.loss_Dfake |
|
|
|
|
|
self.loss_w_real = self.netW(self.real.detach(), self.input['wcl'].to(DEVICE)).mean() |
|
|
|
loss_total = self.loss_D + self.loss_w_real |
|
|
|
|
|
loss_total.backward() |
|
|
|
|
|
return loss_total |
|
|
|
def optimize_D_WL(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], True) |
|
self.set_requires_grad([self.netOCR], False) |
|
self.set_requires_grad([self.netW], True) |
|
|
|
self.optimizer_D.zero_grad() |
|
self.optimizer_wl.zero_grad() |
|
|
|
self.backward_D_WL() |
|
|
|
|
|
|
|
|
|
def backward_D_OCR_WL(self): |
|
|
|
if self.real_z_mean is None: |
|
pred_real = self.netD(self.real.detach()) |
|
else: |
|
pred_real = self.netD(**{'x': self.real.detach(), 'z': self.real_z_mean.detach()}) |
|
|
|
try: |
|
pred_fake = self.netD(**{'x': self.fake.detach(), 'z': self.z.detach()}) |
|
except: |
|
print('a') |
|
|
|
self.loss_Dreal, self.loss_Dfake = loss_hinge_dis(pred_fake, pred_real, self.len_text_fake.detach(), self.len_text.detach(), self.opt.mask_loss) |
|
|
|
self.loss_D = self.loss_Dreal + self.loss_Dfake |
|
|
|
self.pred_real_OCR = self.netOCR(self.real.detach()) |
|
preds_size = torch.IntTensor([self.pred_real_OCR.size(0)] * self.opt.batch_size).detach() |
|
loss_OCR_real = self.OCR_criterion(self.pred_real_OCR, self.text_encode.detach(), preds_size, self.len_text.detach()) |
|
self.loss_OCR_real = torch.mean(loss_OCR_real[~torch.isnan(loss_OCR_real)]) |
|
|
|
self.loss_w_real = self.netW(self.real.detach(), self.wcl) |
|
loss_total = self.loss_D + self.loss_OCR_real + self.loss_w_real |
|
|
|
|
|
loss_total.backward() |
|
for param in self.netOCR.parameters(): |
|
param.grad[param.grad!=param.grad]=0 |
|
param.grad[torch.isnan(param.grad)]=0 |
|
param.grad[torch.isinf(param.grad)]=0 |
|
|
|
|
|
|
|
return loss_total |
|
|
|
def optimize_D_WL_step(self): |
|
self.optimizer_D.step() |
|
self.optimizer_wl.step() |
|
self.optimizer_D.zero_grad() |
|
self.optimizer_wl.zero_grad() |
|
|
|
def backward_OCR(self): |
|
|
|
self.pred_real_OCR = self.netOCR(self.real.detach()) |
|
preds_size = torch.IntTensor([self.pred_real_OCR.size(0)] * self.opt.batch_size).detach() |
|
loss_OCR_real = self.OCR_criterion(self.pred_real_OCR, self.text_encode.detach(), preds_size, self.len_text.detach()) |
|
self.loss_OCR_real = torch.mean(loss_OCR_real[~torch.isnan(loss_OCR_real)]) |
|
|
|
|
|
self.loss_OCR_real.backward() |
|
for param in self.netOCR.parameters(): |
|
param.grad[param.grad!=param.grad]=0 |
|
param.grad[torch.isnan(param.grad)]=0 |
|
param.grad[torch.isinf(param.grad)]=0 |
|
|
|
return self.loss_OCR_real |
|
|
|
|
|
def backward_D(self): |
|
|
|
if self.real_z_mean is None: |
|
pred_real = self.netD(self.real.detach()) |
|
else: |
|
pred_real = self.netD(**{'x': self.real.detach(), 'z': self.real_z_mean.detach()}) |
|
pred_fake = self.netD(**{'x': self.fake.detach(), 'z': self.z.detach()}) |
|
|
|
self.loss_Dreal, self.loss_Dfake = loss_hinge_dis(pred_fake, pred_real, self.len_text_fake.detach(), self.len_text.detach(), self.opt.mask_loss) |
|
self.loss_D = self.loss_Dreal + self.loss_Dfake |
|
|
|
self.loss_D.backward() |
|
|
|
|
|
return self.loss_D |
|
|
|
|
|
def backward_G_only(self): |
|
|
|
self.gb_alpha = 0.7 |
|
|
|
|
|
self.loss_G = loss_hinge_gen(self.netD(**{'x': self.fake}), self.len_text_fake.detach(), True).mean() |
|
|
|
|
|
pred_fake_OCR = self.netOCR(self.fake) |
|
preds_size = torch.IntTensor([pred_fake_OCR.size(0)] * self.batch_size).detach() |
|
loss_OCR_fake = self.OCR_criterion(pred_fake_OCR, self.text_encode_fake.detach(), preds_size, self.len_text_fake.detach()) |
|
self.loss_OCR_fake = torch.mean(loss_OCR_fake[~torch.isnan(loss_OCR_fake)]) |
|
|
|
self.loss_G = self.loss_G + self.Lcycle1 + self.Lcycle2 + self.lda1 + self.lda2 - self.KLD |
|
|
|
self.loss_T = self.loss_G + self.loss_OCR_fake |
|
|
|
|
|
|
|
grad_fake_OCR = torch.autograd.grad(self.loss_OCR_fake, self.fake, retain_graph=True)[0] |
|
|
|
|
|
self.loss_grad_fake_OCR = 10**6*torch.mean(grad_fake_OCR**2) |
|
grad_fake_adv = torch.autograd.grad(self.loss_G, self.fake, retain_graph=True)[0] |
|
self.loss_grad_fake_adv = 10**6*torch.mean(grad_fake_adv**2) |
|
|
|
|
|
self.loss_T.backward(retain_graph=True) |
|
|
|
|
|
grad_fake_OCR = torch.autograd.grad(self.loss_OCR_fake, self.fake, create_graph=True, retain_graph=True)[0] |
|
grad_fake_adv = torch.autograd.grad(self.loss_G, self.fake, create_graph=True, retain_graph=True)[0] |
|
|
|
|
|
a = self.gb_alpha * torch.div(torch.std(grad_fake_adv), self.epsilon+torch.std(grad_fake_OCR)) |
|
|
|
|
|
if a is None: |
|
print(self.loss_OCR_fake, self.loss_G, torch.std(grad_fake_adv), torch.std(grad_fake_OCR)) |
|
if a>1000 or a<0.0001: |
|
print(a) |
|
|
|
|
|
self.loss_OCR_fake = a.detach() * self.loss_OCR_fake |
|
|
|
self.loss_T = self.loss_G + self.loss_OCR_fake |
|
|
|
|
|
self.loss_T.backward(retain_graph=True) |
|
grad_fake_OCR = torch.autograd.grad(self.loss_OCR_fake, self.fake, create_graph=False, retain_graph=True)[0] |
|
grad_fake_adv = torch.autograd.grad(self.loss_G, self.fake, create_graph=False, retain_graph=True)[0] |
|
self.loss_grad_fake_OCR = 10 ** 6 * torch.mean(grad_fake_OCR ** 2) |
|
self.loss_grad_fake_adv = 10 ** 6 * torch.mean(grad_fake_adv ** 2) |
|
|
|
with torch.no_grad(): |
|
self.loss_T.backward() |
|
|
|
if any(torch.isnan(loss_OCR_fake)) or torch.isnan(self.loss_G): |
|
print('loss OCR fake: ', loss_OCR_fake, ' loss_G: ', self.loss_G, ' words: ', self.words) |
|
sys.exit() |
|
|
|
def backward_G_WL(self): |
|
|
|
self.gb_alpha = 0.7 |
|
|
|
|
|
|
|
self.loss_G = loss_hinge_gen(self.netD(**{'x': self.fake}), self.len_text_fake.detach(), True).mean() |
|
|
|
self.loss_w_fake = self.netW(self.fake, self.input['wcl'].to(DEVICE)).mean() |
|
|
|
self.loss_G = self.loss_G + self.Lcycle1 + self.Lcycle2 + self.lda1 + self.lda2 - self.KLD |
|
|
|
self.loss_T = self.loss_G + self.loss_w_fake |
|
|
|
|
|
self.loss_T.backward(retain_graph=True) |
|
|
|
|
|
grad_fake_WL = torch.autograd.grad(self.loss_w_fake, self.fake, create_graph=True, retain_graph=True)[0] |
|
grad_fake_adv = torch.autograd.grad(self.loss_G, self.fake, create_graph=True, retain_graph=True)[0] |
|
|
|
|
|
a = self.gb_alpha * torch.div(torch.std(grad_fake_adv), self.epsilon+torch.std(grad_fake_WL)) |
|
|
|
|
|
|
|
if a is None: |
|
print(self.loss_w_fake, self.loss_G, torch.std(grad_fake_adv), torch.std(grad_fake_WL)) |
|
if a>1000 or a<0.0001: |
|
print(a) |
|
|
|
self.loss_w_fake = a.detach() * self.loss_w_fake |
|
|
|
self.loss_T = self.loss_G + self.loss_w_fake |
|
|
|
self.loss_T.backward(retain_graph=True) |
|
grad_fake_WL = torch.autograd.grad(self.loss_w_fake, self.fake, create_graph=False, retain_graph=True)[0] |
|
grad_fake_adv = torch.autograd.grad(self.loss_G, self.fake, create_graph=False, retain_graph=True)[0] |
|
self.loss_grad_fake_WL = 10 ** 6 * torch.mean(grad_fake_WL ** 2) |
|
self.loss_grad_fake_adv = 10 ** 6 * torch.mean(grad_fake_adv ** 2) |
|
|
|
with torch.no_grad(): |
|
self.loss_T.backward() |
|
|
|
def backward_G(self): |
|
self.opt.gb_alpha = 0.7 |
|
self.loss_G = loss_hinge_gen(self.netD(**{'x': self.fake, 'z': self.z}), self.len_text_fake.detach(), self.opt.mask_loss) |
|
|
|
|
|
pred_fake_OCR = self.netOCR(self.fake) |
|
preds_size = torch.IntTensor([pred_fake_OCR.size(0)] * self.opt.batch_size).detach() |
|
loss_OCR_fake = self.OCR_criterion(pred_fake_OCR, self.text_encode_fake.detach(), preds_size, self.len_text_fake.detach()) |
|
self.loss_OCR_fake = torch.mean(loss_OCR_fake[~torch.isnan(loss_OCR_fake)]) |
|
|
|
|
|
self.loss_w_fake = self.netW(self.fake, self.wcl) |
|
|
|
|
|
|
|
|
|
|
|
|
|
self.loss_G_ = 10*self.loss_G + self.loss_w_fake |
|
self.loss_T = self.loss_G_ + self.loss_OCR_fake |
|
|
|
grad_fake_OCR = torch.autograd.grad(self.loss_OCR_fake, self.fake, retain_graph=True)[0] |
|
|
|
|
|
self.loss_grad_fake_OCR = 10**6*torch.mean(grad_fake_OCR**2) |
|
grad_fake_adv = torch.autograd.grad(self.loss_G_, self.fake, retain_graph=True)[0] |
|
self.loss_grad_fake_adv = 10**6*torch.mean(grad_fake_adv**2) |
|
|
|
if not False: |
|
|
|
self.loss_T.backward(retain_graph=True) |
|
|
|
|
|
grad_fake_OCR = torch.autograd.grad(self.loss_OCR_fake, self.fake, create_graph=True, retain_graph=True)[0] |
|
grad_fake_adv = torch.autograd.grad(self.loss_G_, self.fake, create_graph=True, retain_graph=True)[0] |
|
|
|
|
|
|
|
a = self.opt.gb_alpha * torch.div(torch.std(grad_fake_adv), self.epsilon+torch.std(grad_fake_OCR)) |
|
|
|
|
|
|
|
|
|
if a is None: |
|
print(self.loss_OCR_fake, self.loss_G_, torch.std(grad_fake_adv), torch.std(grad_fake_OCR)) |
|
if a>1000 or a<0.0001: |
|
print(a) |
|
b = self.opt.gb_alpha * (torch.mean(grad_fake_adv) - |
|
torch.div(torch.std(grad_fake_adv), self.epsilon+torch.std(grad_fake_OCR))* |
|
torch.mean(grad_fake_OCR)) |
|
|
|
self.loss_OCR_fake = a.detach() * self.loss_OCR_fake |
|
|
|
|
|
self.loss_T = (1-1*self.opt.onlyOCR)*self.loss_G_ + self.loss_OCR_fake |
|
self.loss_T.backward(retain_graph=True) |
|
grad_fake_OCR = torch.autograd.grad(self.loss_OCR_fake, self.fake, create_graph=False, retain_graph=True)[0] |
|
grad_fake_adv = torch.autograd.grad(self.loss_G_, self.fake, create_graph=False, retain_graph=True)[0] |
|
self.loss_grad_fake_OCR = 10 ** 6 * torch.mean(grad_fake_OCR ** 2) |
|
self.loss_grad_fake_adv = 10 ** 6 * torch.mean(grad_fake_adv ** 2) |
|
with torch.no_grad(): |
|
self.loss_T.backward() |
|
else: |
|
self.loss_T.backward() |
|
|
|
if self.opt.clip_grad > 0: |
|
clip_grad_norm_(self.netG.parameters(), self.opt.clip_grad) |
|
if any(torch.isnan(loss_OCR_fake)) or torch.isnan(self.loss_G_): |
|
print('loss OCR fake: ', loss_OCR_fake, ' loss_G: ', self.loss_G, ' words: ', self.words) |
|
sys.exit() |
|
|
|
|
|
|
|
def optimize_D_OCR(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], True) |
|
self.set_requires_grad([self.netOCR], True) |
|
self.optimizer_D.zero_grad() |
|
|
|
self.optimizer_OCR.zero_grad() |
|
self.backward_D_OCR() |
|
|
|
def optimize_OCR(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], False) |
|
self.set_requires_grad([self.netOCR], True) |
|
if self.opt.OCR_init in ['glorot', 'xavier', 'ortho', 'N02']: |
|
self.optimizer_OCR.zero_grad() |
|
self.backward_OCR() |
|
|
|
def optimize_D(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], True) |
|
self.backward_D() |
|
|
|
def optimize_D_OCR_step(self): |
|
self.optimizer_D.step() |
|
|
|
self.optimizer_OCR.step() |
|
self.optimizer_D.zero_grad() |
|
self.optimizer_OCR.zero_grad() |
|
|
|
|
|
def optimize_D_OCR_WL(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], True) |
|
self.set_requires_grad([self.netOCR], True) |
|
self.set_requires_grad([self.netW], True) |
|
self.optimizer_D.zero_grad() |
|
self.optimizer_wl.zero_grad() |
|
if self.opt.OCR_init in ['glorot', 'xavier', 'ortho', 'N02']: |
|
self.optimizer_OCR.zero_grad() |
|
self.backward_D_OCR_WL() |
|
|
|
def optimize_D_OCR_WL_step(self): |
|
self.optimizer_D.step() |
|
if self.opt.OCR_init in ['glorot', 'xavier', 'ortho', 'N02']: |
|
self.optimizer_OCR.step() |
|
self.optimizer_wl.step() |
|
self.optimizer_D.zero_grad() |
|
self.optimizer_OCR.zero_grad() |
|
self.optimizer_wl.zero_grad() |
|
|
|
def optimize_D_step(self): |
|
self.optimizer_D.step() |
|
if any(torch.isnan(self.netD.infer_img.blocks[0][0].conv1.bias)): |
|
print('D is nan') |
|
sys.exit() |
|
self.optimizer_D.zero_grad() |
|
|
|
def optimize_G(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], False) |
|
self.set_requires_grad([self.netOCR], False) |
|
self.set_requires_grad([self.netW], False) |
|
self.backward_G() |
|
|
|
def optimize_G_WL(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], False) |
|
self.set_requires_grad([self.netOCR], False) |
|
self.set_requires_grad([self.netW], False) |
|
self.backward_G_WL() |
|
|
|
|
|
def optimize_G_only(self): |
|
self.forward() |
|
self.set_requires_grad([self.netD], False) |
|
self.set_requires_grad([self.netOCR], False) |
|
self.set_requires_grad([self.netW], False) |
|
self.backward_G_only() |
|
|
|
|
|
def optimize_G_step(self): |
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self.optimizer_G.step() |
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self.optimizer_G.zero_grad() |
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def optimize_ocr(self): |
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self.set_requires_grad([self.netOCR], True) |
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pred_real_OCR = self.netOCR(self.real) |
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preds_size =torch.IntTensor([pred_real_OCR.size(0)] * self.opt.batch_size).detach() |
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self.loss_OCR_real = self.OCR_criterion(pred_real_OCR, self.text_encode.detach(), preds_size, self.len_text.detach()) |
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self.loss_OCR_real.backward() |
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self.optimizer_OCR.step() |
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def optimize_z(self): |
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self.set_requires_grad([self.z], True) |
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def optimize_parameters(self): |
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self.forward() |
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self.set_requires_grad([self.netD], False) |
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self.optimizer_G.zero_grad() |
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self.backward_G() |
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self.optimizer_G.step() |
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self.set_requires_grad([self.netD], True) |
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self.optimizer_D.zero_grad() |
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self.backward_D() |
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self.optimizer_D.step() |
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def test(self): |
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self.visual_names = ['fake'] |
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self.netG.eval() |
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with torch.no_grad(): |
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self.forward() |
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def train_GD(self): |
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self.netG.train() |
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self.netD.train() |
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self.optimizer_G.zero_grad() |
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self.optimizer_D.zero_grad() |
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x = torch.split(self.real, self.opt.batch_size) |
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y = torch.split(self.label, self.opt.batch_size) |
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counter = 0 |
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if self.opt.toggle_grads: |
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toggle_grad(self.netD, True) |
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toggle_grad(self.netG, False) |
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for step_index in range(self.opt.num_critic_train): |
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self.optimizer_D.zero_grad() |
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with torch.set_grad_enabled(False): |
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self.forward() |
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D_input = torch.cat([self.fake, x[counter]], 0) if x is not None else self.fake |
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D_class = torch.cat([self.label_fake, y[counter]], 0) if y[counter] is not None else y[counter] |
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D_out = self.netD(D_input, D_class) |
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if x is not None: |
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pred_fake, pred_real = torch.split(D_out, [self.fake.shape[0], x[counter].shape[0]]) |
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else: |
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pred_fake = D_out |
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self.loss_Dreal, self.loss_Dfake = loss_hinge_dis(pred_fake, pred_real, self.len_text_fake.detach(), self.len_text.detach(), self.opt.mask_loss) |
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self.loss_D = self.loss_Dreal + self.loss_Dfake |
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self.loss_D.backward() |
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counter += 1 |
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self.optimizer_D.step() |
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if self.opt.toggle_grads: |
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toggle_grad(self.netD, False) |
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toggle_grad(self.netG, True) |
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self.optimizer_G.zero_grad() |
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self.forward() |
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self.loss_G = loss_hinge_gen(self.netD(self.fake, self.label_fake), self.len_text_fake.detach(), self.opt.mask_loss) |
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self.loss_G.backward() |
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self.optimizer_G.step() |
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def save_networks(self, epoch, save_dir): |
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"""Save all the networks to the disk. |
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|
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Parameters: |
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epoch (int) -- current epoch; used in the file name '%s_net_%s.pth' % (epoch, name) |
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""" |
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for name in self.model_names: |
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if isinstance(name, str): |
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save_filename = '%s_net_%s.pth' % (epoch, name) |
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save_path = os.path.join(save_dir, save_filename) |
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net = getattr(self, 'net' + name) |
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if len(self.gpu_ids) > 0 and torch.cuda.is_available(): |
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if len(self.gpu_ids) > 1: |
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torch.save(net.module.cpu().state_dict(), save_path) |
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else: |
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torch.save(net.cpu().state_dict(), save_path) |
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net.cuda(self.gpu_ids[0]) |
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else: |
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torch.save(net.cpu().state_dict(), save_path) |
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