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model_full.py
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model_full.py
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import torch
import torch.nn as nn
import torch.nn.functional as F
import numpy as np
import time
from tqdm import tqdm
import os
from PIL import Image
from collections import OrderedDict
from vgg_utils.VGG16 import VGG_Slim
from dataset_utils.common import generate_colors2
from hparam import HParams
from rnn2 import HyperLSTMCell
from utils import correspondence_clinging, get_correspondence_window_size, spatial_transform_reverse_point, \
image_cropping_stn, normalize_image_m1to1, draw_dot, seq_params_to_list
import pydiffvg
pydiffvg.set_use_gpu(torch.cuda.is_available())
print('Setting pydiffvg.set_use_gpu:', torch.cuda.is_available())
def get_default_hparams():
"""Return default HParams for sketch-rnn."""
hparams = HParams(
add_coordconv=True,
use_atrous_conv=False,
first_kernel_size=3, # 7 or 3
z_size=256, # Size of latent vector z.
# parameters for two transformation modules
use_square_window=False,
init_window_size_corres_trans=0.6,
transform_with_rotation=True,
transform_use_global_info=True,
enc_model_transform='combined', # ['combined', 'separated']
dec_model_transform='mlp', # ['rnn', 'mlp']
transform_module_zero_init='last', # ['none', 'last', 'all']
frozen_transform_module=True,
# parameters for correspondence module
enc_model_correspondence='separated', # ['combined', 'separated']
raster_size_corres=256, # cropping size for starting point correspondence module
use_clinging=True,
clinging_binary_threshold=128.0,
use_segment_img=True,
use_reference_canvas=False,
use_target_canvas=True,
use_attn_corres=True,
attn_type_corres='SA',
sa_block_pos_corres=3, # [1, 2, 3, 4]
use_dropout=False,
dropout_rate=0.3, # probability of an element to be zeroed
# parameters for tracing module
raster_size=192,
window_size_scaling_ref=1.5, # [1.25, 1.5, 2.0]
window_size_scaling_init_tar=1.5, # [1.25, 1.5, 2.0]
window_size_scaling_times_tar=(0.2, 2.0),
window_size_min=48, # [1.25, 1.5, 2.0]
hidden_states_zero=True, # whether setting input hidden states to zero for starting of each stroke
enc_model_tracing='separated', # ['combined', 'separated']
dec_model_tracing='rnn', # ['rnn', 'mlp']
dec_rnn_size=256, # Size of decoder.
rnn_model='hyper', # Decoder: lstm, layer_norm or hyper.
stroke_thickness=1.2, # 2.0 for toy; 1.2 for TUB
raster_loss_base_type='perceptual', # [l1, mse, perceptual]
perc_loss_layers=['ReLU1_2', 'ReLU2_2', 'ReLU3_3', 'ReLU4_3', 'ReLU5_1'],
perc_loss_fuse_type='add', # ['max', 'add', 'raw_add', 'weighted_sum']
perceptual_model_path='models/quickdraw-perceptual.pth',
trained_models_dir='models',
inference_root='outputs/inference'
)
return hparams
def general_conv2d(in_dim, output_dim, kernel_size, stride, do_norm=True, norm_type='instance_norm', padding=1,
atrous=False, atrous_rate=1):
if atrous:
conv = nn.Conv2d(in_dim, output_dim, kernel_size=kernel_size, stride=stride, padding=atrous_rate, dilation=atrous_rate)
else:
conv = nn.Conv2d(in_dim, output_dim, kernel_size=kernel_size, stride=stride, padding=padding)
if do_norm:
if norm_type == 'instance_norm':
norm = nn.InstanceNorm2d(output_dim, affine=True)
elif norm_type == 'batch_norm':
norm = nn.BatchNorm2d(output_dim)
elif norm_type == 'layer_norm':
norm = nn.LayerNorm(output_dim)
else:
raise Exception('Unknown norm_type:', norm_type)
return nn.Sequential(
OrderedDict([
('conv', conv),
(norm_type, norm)
]))
else:
return conv
class SelfAttention(nn.Module):
def __init__(self, in_dim):
super(SelfAttention, self).__init__()
self.query_conv = nn.Conv2d(in_channels=in_dim, out_channels=in_dim // 8, kernel_size=1)
self.key_conv = nn.Conv2d(in_channels=in_dim, out_channels=in_dim // 8, kernel_size=1)
self.value_conv = nn.Conv2d(in_channels=in_dim, out_channels=in_dim, kernel_size=1)
self.output_conv = nn.Conv2d(in_channels=in_dim, out_channels=in_dim, kernel_size=1)
self.gamma = nn.Parameter(torch.zeros(1))
self.softmax = nn.Softmax(dim=-1)
def forward(self, x):
"""
inputs :
x : input feature maps (N, C, h, w)
returns :
out : self attention value + input feature
attention: N X hw X hw
"""
m_batchsize, C, height, width = x.size()
proj_query = self.query_conv(x).view(m_batchsize, -1, height * width).permute(0, 2, 1) # (N, hw, c)
proj_key = self.key_conv(x).view(m_batchsize, -1, height * width) # (N, c, hw)
energy = torch.bmm(proj_query, proj_key) # (N, hw, hw)
attn_map = self.softmax(energy) # (N, hw, hw)
proj_value = self.value_conv(x).view(m_batchsize, -1, height * width) # (N, C, hw)
x_attn = torch.bmm(proj_value, attn_map.permute(0, 2, 1)) # (N, C, hw)
x_attn = x_attn.view(m_batchsize, C, height, width) # (N, C, h, w)
x_attn = self.output_conv(x_attn) # (N, C, h, w)
out = self.gamma * x_attn + x
return out, attn_map
class CNN_SepEncoder_correspondence(nn.Module):
def __init__(self, input_dim_ref, input_dim_tar, output_dim, input_size, use_atrous,
use_attn, attn_type=None, sa_block_pos=None, use_dropout=False, dropout_rate=0.0):
super(CNN_SepEncoder_correspondence, self).__init__()
if use_atrous:
atrou_rates = [1, 1, 2, 4, 4]
else:
atrou_rates = [1, 1, 1, 1, 1]
# reference
self.cnn_enc_11_ref = general_conv2d(input_dim_ref, 16, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_12_ref = general_conv2d(16, 32, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_21_ref = general_conv2d(32, 32, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_22_ref = general_conv2d(32, 64, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_31_ref = general_conv2d(64, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_32_ref = general_conv2d(64, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_33_ref = general_conv2d(64, 128, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_41_ref = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_42_ref = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_43_ref = general_conv2d(128, 256, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[3])
# target
self.cnn_enc_11_tar = general_conv2d(input_dim_tar, 16, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_12_tar = general_conv2d(16, 32, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_21_tar = general_conv2d(64, 32, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_22_tar = general_conv2d(32, 64, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_31_tar = general_conv2d(128, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_32_tar = general_conv2d(64, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_33_tar = general_conv2d(64, 128, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_41_tar = general_conv2d(256, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_42_tar = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_43_tar = general_conv2d(128, 256, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_51_tar = general_conv2d(512, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.cnn_enc_52_tar = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.cnn_enc_53_tar = general_conv2d(256, 512, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.use_attn = [False for _ in range(4)]
if use_attn:
if attn_type == 'SA':
assert sa_block_pos in [1, 2, 3, 4]
self.attn_1 = SelfAttention(in_dim=64) if sa_block_pos == 1 else None
self.attn_2 = SelfAttention(in_dim=128) if sa_block_pos == 2 else None
self.attn_3 = SelfAttention(in_dim=256) if sa_block_pos == 3 else None
self.attn_4 = SelfAttention(in_dim=512) if sa_block_pos == 4 else None
self.use_attn[int(sa_block_pos - 1)] = True
else:
raise Exception('Unknown attn_type:', attn_type)
assert input_size % 32 == 0
self.feature_size = input_size // 32
self.gap = nn.AvgPool2d(self.feature_size)
self.use_dropout = use_dropout
if self.use_dropout:
self.dropout = nn.Dropout(dropout_rate)
self.fc = nn.Linear(512, output_dim)
def forward(self, inputs_ref, inputs_tar):
x_r = inputs_ref
x_r11 = F.relu(self.cnn_enc_11_ref(x_r))
x_r12 = F.relu(self.cnn_enc_12_ref(x_r11))
x_r21 = F.relu(self.cnn_enc_21_ref(x_r12))
x_r22 = F.relu(self.cnn_enc_22_ref(x_r21))
x_r31 = F.relu(self.cnn_enc_31_ref(x_r22))
x_r32 = F.relu(self.cnn_enc_32_ref(x_r31))
x_r33 = F.relu(self.cnn_enc_33_ref(x_r32))
x_r41 = F.relu(self.cnn_enc_41_ref(x_r33))
x_r42 = F.relu(self.cnn_enc_42_ref(x_r41))
x_r43 = F.relu(self.cnn_enc_43_ref(x_r42))
x = inputs_tar
x = F.relu(self.cnn_enc_11_tar(x))
x = F.relu(self.cnn_enc_12_tar(x))
x = torch.cat([x, x_r12], dim=1)
if self.use_attn[0]:
x = F.relu(self.attn_1(x)[0])
x = F.relu(self.cnn_enc_21_tar(x))
x = F.relu(self.cnn_enc_22_tar(x))
x = torch.cat([x, x_r22], dim=1)
if self.use_attn[1]:
x = F.relu(self.attn_2(x)[0])
x = F.relu(self.cnn_enc_31_tar(x))
x = F.relu(self.cnn_enc_32_tar(x))
x = F.relu(self.cnn_enc_33_tar(x))
x = torch.cat([x, x_r33], dim=1)
if self.use_attn[2]:
x = F.relu(self.attn_3(x)[0])
x = F.relu(self.cnn_enc_41_tar(x))
x = F.relu(self.cnn_enc_42_tar(x))
x = F.relu(self.cnn_enc_43_tar(x))
x = torch.cat([x, x_r43], dim=1)
if self.use_attn[3]:
x = F.relu(self.attn_4(x)[0])
x = F.relu(self.cnn_enc_51_tar(x))
x = F.relu(self.cnn_enc_52_tar(x))
x = F.relu(self.cnn_enc_53_tar(x)) # (N, C, H/32, W/32)
x = self.gap(x) # (N, C, 1, 1)
x = torch.reshape(x, (x.size(0), -1)) # (N, C)
if self.use_dropout:
x = self.dropout(x)
x = self.fc(x) # (N, 2)
x = torch.tanh(x) # (N, 2), [-1.0, 1.0]
return x
class CNN_SepEncoder(nn.Module):
def __init__(self, input_dim_ref, input_dim_tar, output_dim, input_size, first_kernel_size, first_padding, use_atrous):
super(CNN_SepEncoder, self).__init__()
if use_atrous:
atrou_rates = [1, 1, 2, 4, 4]
else:
atrou_rates = [1, 1, 1, 1, 1]
# reference
self.cnn_enc_11_ref = general_conv2d(input_dim_ref, 32, kernel_size=first_kernel_size, stride=2, padding=first_padding, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_12_ref = general_conv2d(32, 32, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_21_ref = general_conv2d(32, 64, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_22_ref = general_conv2d(64, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_31_ref = general_conv2d(64, 128, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_32_ref = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_33_ref = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_41_ref = general_conv2d(128, 256, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_42_ref = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_43_ref = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
# target
self.cnn_enc_11_tar = general_conv2d(input_dim_tar, 32, kernel_size=first_kernel_size, stride=2, padding=first_padding, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_12_tar = general_conv2d(32, 32, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_21_tar = general_conv2d(64, 64, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_22_tar = general_conv2d(64, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_31_tar = general_conv2d(128, 128, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_32_tar = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_33_tar = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_41_tar = general_conv2d(256, 256, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_42_tar = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_43_tar = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_51_tar = general_conv2d(512, 512, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.cnn_enc_52_tar = general_conv2d(512, 512, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.cnn_enc_53_tar = general_conv2d(512, 512, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[4])
assert input_size % 32 == 0
self.feature_size = input_size // 32
self.fc = nn.Linear(512 * self.feature_size * self.feature_size, output_dim)
self.use_attn = [False for _ in range(4)]
def forward(self, inputs_ref, inputs_tar):
x_r = inputs_ref
x_r11 = F.relu(self.cnn_enc_11_ref(x_r))
x_r12 = F.relu(self.cnn_enc_12_ref(x_r11))
x_r21 = F.relu(self.cnn_enc_21_ref(x_r12))
x_r22 = F.relu(self.cnn_enc_22_ref(x_r21))
x_r31 = F.relu(self.cnn_enc_31_ref(x_r22))
x_r32 = F.relu(self.cnn_enc_32_ref(x_r31))
x_r33 = F.relu(self.cnn_enc_33_ref(x_r32))
x_r41 = F.relu(self.cnn_enc_41_ref(x_r33))
x_r42 = F.relu(self.cnn_enc_42_ref(x_r41))
x_r43 = F.relu(self.cnn_enc_43_ref(x_r42))
x = inputs_tar
x = F.relu(self.cnn_enc_11_tar(x))
x = F.relu(self.cnn_enc_12_tar(x))
x = torch.cat([x, x_r12], dim=1)
if self.use_attn[0]:
x = F.relu(self.attn_1(x)[0])
x = F.relu(self.cnn_enc_21_tar(x))
x = F.relu(self.cnn_enc_22_tar(x))
x = torch.cat([x, x_r22], dim=1)
if self.use_attn[1]:
x = F.relu(self.attn_2(x)[0])
x = F.relu(self.cnn_enc_31_tar(x))
x = F.relu(self.cnn_enc_32_tar(x))
x = F.relu(self.cnn_enc_33_tar(x))
x = torch.cat([x, x_r33], dim=1)
if self.use_attn[2]:
x = F.relu(self.attn_3(x)[0])
x = F.relu(self.cnn_enc_41_tar(x))
x = F.relu(self.cnn_enc_42_tar(x))
x = F.relu(self.cnn_enc_43_tar(x))
x = torch.cat([x, x_r43], dim=1)
if self.use_attn[3]:
x = F.relu(self.attn_4(x)[0])
x = F.relu(self.cnn_enc_51_tar(x))
x = F.relu(self.cnn_enc_52_tar(x))
x = F.relu(self.cnn_enc_53_tar(x))
# x = x.view(-1, 512 * 4 * 4)
x = torch.reshape(x, (-1, 512 * self.feature_size * self.feature_size))
x = self.fc(x)
return x
class CNN_Encoder(nn.Module):
def __init__(self, input_dim, output_dim, input_size, first_kernel_size, first_padding, use_atrous):
super(CNN_Encoder, self).__init__()
if use_atrous:
atrou_rates = [1, 1, 2, 4, 4]
else:
atrou_rates = [1, 1, 1, 1, 1]
self.cnn_enc_11 = general_conv2d(input_dim, 32, kernel_size=first_kernel_size, stride=2, padding=first_padding, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_12 = general_conv2d(32, 32, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[0])
self.cnn_enc_21 = general_conv2d(32, 64, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_22 = general_conv2d(64, 64, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[1])
self.cnn_enc_31 = general_conv2d(64, 128, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_32 = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_33 = general_conv2d(128, 128, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[2])
self.cnn_enc_41 = general_conv2d(128, 256, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_42 = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_43 = general_conv2d(256, 256, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[3])
self.cnn_enc_51 = general_conv2d(256, 512, kernel_size=3, stride=2, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.cnn_enc_52 = general_conv2d(512, 512, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[4])
self.cnn_enc_53 = general_conv2d(512, 512, kernel_size=3, stride=1, atrous=use_atrous, atrous_rate=atrou_rates[4])
assert input_size % 32 == 0
self.feature_size = input_size // 32
self.fc = nn.Linear(512 * self.feature_size * self.feature_size, output_dim)
self.use_attn = [False for _ in range(4)]
def forward(self, inputs):
x = inputs
x = F.relu(self.cnn_enc_11(x))
# print('cnn_enc_11', x.size())
x = F.relu(self.cnn_enc_12(x))
# print('cnn_enc_12', x.size())
if self.use_attn[0]:
x = F.relu(self.attn_1(x)[0])
x = F.relu(self.cnn_enc_21(x))
# print('cnn_enc_21', x.size())
x = F.relu(self.cnn_enc_22(x))
# print('cnn_enc_22', x.size())
if self.use_attn[1]:
x = F.relu(self.attn_2(x)[0])
x = F.relu(self.cnn_enc_31(x))
# print('cnn_enc_31', x.size())
x = F.relu(self.cnn_enc_32(x))
# print('cnn_enc_32', x.size())
x = F.relu(self.cnn_enc_33(x))
# print('cnn_enc_33', x.size())
if self.use_attn[2]:
x = F.relu(self.attn_3(x)[0])
x = F.relu(self.cnn_enc_41(x))
# print('cnn_enc_41', x.size())
x = F.relu(self.cnn_enc_42(x))
# print('cnn_enc_42', x.size())
x = F.relu(self.cnn_enc_43(x))
# print('cnn_enc_43', x.size())
if self.use_attn[3]:
x = F.relu(self.attn_4(x)[0])
x = F.relu(self.cnn_enc_51(x))
# print('cnn_enc_51', x.size())
x = F.relu(self.cnn_enc_52(x))
# print('cnn_enc_52', x.size())
x = F.relu(self.cnn_enc_53(x))
# print('cnn_enc_53', x.size())
# x = x.view(-1, 512 * 4 * 4)
x = torch.reshape(x, (-1, 512 * self.feature_size * self.feature_size))
# print('x', x.size())
x = self.fc(x)
# print('fc', x.size())
return x
class RNN_Decoder(nn.Module):
def __init__(self, input_size, dec_rnn_size, output_size, is_hyper=False, zero_init='none'):
super(RNN_Decoder, self).__init__()
self.input_size = input_size
self.dec_rnn_size = dec_rnn_size
self.is_hyper = is_hyper
if not is_hyper:
self.lstm = nn.LSTMCell(input_size, dec_rnn_size)
else:
self.lstm = HyperLSTMCell(input_size, dec_rnn_size)
self.dec_fc_params = nn.Linear(dec_rnn_size, output_size)
if zero_init == 'final':
for (m_name, m) in self.named_modules():
if isinstance(m, nn.Linear) and m_name == 'dec_fc_params':
nn.init.constant_(m.weight, 0)
nn.init.constant_(m.bias, 0)
elif zero_init == 'all':
for (m_name, m) in self.named_modules():
if isinstance(m, nn.Linear):
nn.init.constant_(m.weight, 0)
if m.bias is not None:
nn.init.constant_(m.bias, 0)
elif isinstance(m, nn.LayerNorm):
nn.init.constant_(m.weight, 1)
nn.init.constant_(m.bias, 0)
else:
assert zero_init == 'none'
# print('RNN_Decoder zero init:', zero_init)
def forward(self, input_x, in_state=None):
"""
:param input_x: (batch_size, input_size)
:param in_state: (h0, c0) / (h0, c0, h0_hat, c0_hat)
:return:
"""
input_state = in_state
if not self.is_hyper:
rnn_hidden, cell_state = self.lstm(input_x, input_state) # (N, dec_rnn_size)
output_state = (rnn_hidden, cell_state)
else:
input_state_h, input_state_h_hat, input_state_c, input_state_c_hat = input_state
rnn_hidden, cell_state, rnn_hidden_hat, cell_state_hat = self.lstm(
input_x, input_state_h, input_state_c, input_state_h_hat, input_state_c_hat) # each with (N, dec_rnn_size)
output_state = (rnn_hidden, rnn_hidden_hat, cell_state, cell_state_hat)
output = self.dec_fc_params(rnn_hidden) # (N, n_out)
return output, output_state
class MLP_Decoder(nn.Module):
def __init__(self, input_size, output_size, zero_init='none'):
super(MLP_Decoder, self).__init__()
self.input_size = input_size
hidden_size = 128
self.dec_fc_1 = nn.Linear(input_size, hidden_size)
# self.dec_fc_2 = nn.Linear(hidden_size, hidden_size)
self.dec_fc_params = nn.Linear(hidden_size, output_size)
if zero_init == 'last':
for (m_name, m) in self.named_modules():
if isinstance(m, nn.Linear) and m_name == 'dec_fc_params':
nn.init.constant_(m.weight, 0)
nn.init.constant_(m.bias, 0)
elif zero_init == 'all':
for (m_name, m) in self.named_modules():
if isinstance(m, nn.Linear):
nn.init.constant_(m.weight, 0)
nn.init.constant_(m.bias, 0)
else:
assert zero_init == 'none'
# print('MLP_Decoder zero init:', zero_init)
def forward(self, input_x):
"""
:param input_x: (batch_size, input_size)
:return:
"""
features_1 = self.dec_fc_1(input_x)
# features_2 = self.dec_fc_2(features_1)
output = self.dec_fc_params(features_1) # (N, n_out)
return output
class Correspondence_Model(nn.Module):
def __init__(self, hps):
super(Correspondence_Model, self).__init__()
self.hps = hps
transform_out_size = 1 if self.hps.use_square_window else 2 # scaling
transform_out_size += 2 # translation
if self.hps.transform_with_rotation:
transform_out_size += 1
first_kernel_size = self.hps.first_kernel_size
first_padding = (first_kernel_size - 1) // 2
# transform encoder
if self.hps.enc_model_transform == 'combined':
cnn_in_size = 2
if self.hps.add_coordconv:
cnn_in_size += 2
cnn_out_size = self.hps.z_size
self.encoder_transform = CNN_Encoder(cnn_in_size, cnn_out_size, input_size=self.hps.raster_size_corres,
first_kernel_size=first_kernel_size, first_padding=first_padding,
use_atrous=self.hps.use_atrous_conv)
else:
raise Exception('Unknown enc_model_transform:', self.hps.enc_model_transform)
dec_in_size = self.hps.z_size
if self.hps.dec_model_transform == 'mlp':
self.decoder_transform = MLP_Decoder(dec_in_size, transform_out_size,
zero_init=self.hps.transform_module_zero_init)
else:
raise Exception('Unknown dec_model_transform:', self.hps.dec_model_transform)
if self.hps.enc_model_correspondence == 'separated':
cnn_in_size_ref = 2
cnn_in_size_tar = 1
if self.hps.use_segment_img:
cnn_in_size_ref += 1
if self.hps.use_reference_canvas:
cnn_in_size_ref += 1
if self.hps.use_target_canvas:
cnn_in_size_tar += 1
if self.hps.add_coordconv:
cnn_in_size_ref += 2
cnn_in_size_tar += 2
cnn_out_size = 2
self.encoder = CNN_SepEncoder_correspondence(cnn_in_size_ref, cnn_in_size_tar, cnn_out_size, input_size=self.hps.raster_size_corres,
use_atrous=self.hps.use_atrous_conv,
use_attn=self.hps.use_attn_corres, attn_type=self.hps.attn_type_corres,
sa_block_pos=self.hps.sa_block_pos_corres,
use_dropout=self.hps.use_dropout, dropout_rate=self.hps.dropout_rate)
else:
raise Exception('Unknown enc_model_correspondence:', self.hps.enc_model_correspondence)
if self.hps.add_coordconv:
self.coordconv_input = self.get_coordconv() # (2, image_size, image_size)
def forward(self, reference_images, reference_dot_images, reference_segment_images, reference_canvas_images,
target_images, target_canvas_images,
cursor_position_ref, image_size, init_trans_window_sizes):
"""
:param reference_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param reference_dot_images: (N, H_c, W_c, 1), float32, [0.0-stroke, 1.0-BG]
:param reference_segment_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param reference_canvas_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param target_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param target_canvas_images: (N, H, W, 1), [0.0-stroke, 1.0-BG]
:param cursor_position_ref: (N, 1, 2), in size [0.0, 1.0]
:param init_trans_window_sizes: (1, 1, 2)
"""
# ================== Stage-1: Transformation ================== #
# reference_images, target_images: (N, H, W, 1), [0.0-stroke, 1.0-BG]
crop_inputs_trans = torch.cat([reference_images, target_images], dim=-1) # (N, H, W, *)
cropped_outputs_trans = image_cropping_stn(cursor_position_ref, crop_inputs_trans, image_size,
init_trans_window_sizes, raster_size=self.hps.raster_size_corres)
curr_patch_input_ref_trans = cropped_outputs_trans[:, :, :, 0:1] # (N, raster_size, raster_size, 1), [0.0-stroke, 1.0-BG]
curr_patch_input_tar_trans = cropped_outputs_trans[:, :, :, 1:2] # (N, raster_size, raster_size, 1), [0.0-stroke, 1.0-BG]
curr_patch_input_ref_trans_in = normalize_image_m1to1(curr_patch_input_ref_trans)
curr_patch_input_tar_trans_in = normalize_image_m1to1(curr_patch_input_tar_trans)
# (N, raster_size, raster_size, 1), [-1.0-stroke, 1.0-BG]
## generate the transformation of target window size
transform_z = self.build_encoder_transform(curr_patch_input_ref_trans_in, curr_patch_input_tar_trans_in)
transform_output, _ = self.build_decoder_transform(transform_z, None)
# transform_output: (N, 5)
transform_output_translation = transform_output[:, 0:2] # (N, 2)
transform_output_scaling = transform_output[:, 2:4] # (N, 2)
if self.hps.transform_with_rotation:
transform_output_rotate_angle = transform_output[:, 4:5] # (N, 1)
## Then, use a small window to crop patches for the correspondence
corres_window_sizes_ref = torch.tensor([self.hps.raster_size_corres, self.hps.raster_size_corres]).float()
corres_window_sizes_ref = corres_window_sizes_ref.unsqueeze(dim=0).unsqueeze(dim=0).cuda() # (1, 1, 2)
## Reference
crop_inputs_corres_ref = torch.cat([reference_images, reference_segment_images, reference_canvas_images], dim=-1) # (N, H, W, *)
crop_outputs_corres_ref = image_cropping_stn(cursor_position_ref, crop_inputs_corres_ref, image_size,
corres_window_sizes_ref, raster_size=self.hps.raster_size_corres)
reference_images_patch_corres = crop_outputs_corres_ref[:, :, :, 0:1]
reference_segment_images_patch_corres = crop_outputs_corres_ref[:, :, :, 1:2]
reference_canvas_images_patch_corres = crop_outputs_corres_ref[:, :, :, 2:3]
# reference_images_patch_corres: (N, H_c, W_c, 1), [0-stroke, 1-BG]
# reference_segment_images_patch_corres: (N, H_c, W_c, 1), [0-stroke, 1-BG]
# reference_canvas_images_patch_corres: (N, H_c, W_c, 1), [0-stroke, 1-BG]
## Target
# Translation
pred_window_translate = torch.tanh(transform_output_translation) # (N, 2), [-1.0, 1.0]
pred_window_translate = pred_window_translate.unsqueeze(dim=1) * (init_trans_window_sizes / 2.0) # (N, 1, 2), in full size
pred_cursor_position_tar = cursor_position_ref * image_size + pred_window_translate # (N, 1, 2), in full size
# print(' >> Correspondence | pred_cursor_position_tar', pred_cursor_position_tar)
pred_cursor_position_tar = pred_cursor_position_tar / float(image_size) # (N, 1, 2), [0.0, 1.0]
# Scaling
pred_window_scaling_times_tar = torch.tanh(transform_output_scaling) # (N, 2), [-1.0, 1.0]
pred_window_scaling_times_tar = (pred_window_scaling_times_tar + 1.0) / 2.0 * self.hps.window_size_scaling_times_tar[1] # (N, 2), [0.0, 2.0]
pred_window_scaling_times_tar = torch.clamp(pred_window_scaling_times_tar, self.hps.window_size_scaling_times_tar[0], self.hps.window_size_scaling_times_tar[1]) # (N, 2), [0.2, 2.0]
# print(' >> Correspondence | pred_window_scaling_times_tar', pred_window_scaling_times_tar)
curr_window_size_tar_pred = pred_window_scaling_times_tar.unsqueeze(dim=1) * corres_window_sizes_ref # (N, 1, 2), in full size
curr_window_size_tar_pred = torch.max(curr_window_size_tar_pred, torch.tensor(self.hps.window_size_min).float().cuda())
curr_window_size_tar_pred = torch.min(curr_window_size_tar_pred, torch.tensor(image_size * 2.0).float().cuda())
# Rotation
if self.hps.transform_with_rotation:
pred_window_rotate_angle_tar = torch.tanh(transform_output_rotate_angle) # (N, 1), [-1.0, 1.0]
pred_window_rotate_angle_tar = torch.mul(pred_window_rotate_angle_tar, 180.0) # (N, 1), [-180.0, 180.0]
# print(' >> Correspondence | pred_window_rotate_angle_tar', pred_window_rotate_angle_tar)
else:
pred_window_rotate_angle_tar = None
## crop the target again
crop_inputs_corres_tar = torch.cat([target_images, target_canvas_images], dim=-1) # (N, H, W, *)
cropped_outputs_corres_tar = image_cropping_stn(pred_cursor_position_tar, crop_inputs_corres_tar, image_size,
curr_window_size_tar_pred, raster_size=self.hps.raster_size_corres,
rotation_angle=pred_window_rotate_angle_tar)
target_images_patch_corres = cropped_outputs_corres_tar[:, :, :, 0:1]
target_canvas_images_patch_corres = cropped_outputs_corres_tar[:, :, :, 1:2]
# target_images_patch_corres: (N, H_c, W_c, 1), [0-stroke, 1-BG]
# target_canvas_images_patch_corres: (N, H_c, W_c, 1), [0-stroke, 1-BG]
# ================== Stage-2: Correspondence ================== #
reference_images_patch_corres_in = normalize_image_m1to1(reference_images_patch_corres)
reference_dot_img_patch_corres_in = normalize_image_m1to1(reference_dot_images)
reference_segment_images_patch_corres_in = normalize_image_m1to1(reference_segment_images_patch_corres)
reference_canvas_images_patch_corres_in = normalize_image_m1to1(reference_canvas_images_patch_corres)
target_images_patch_corres_in = normalize_image_m1to1(target_images_patch_corres)
target_canvas_images_patch_corres_in = normalize_image_m1to1(target_canvas_images_patch_corres)
# (N, H, W, 1), [-1.0-stroke, 1.0-BG]
if self.hps.enc_model_correspondence == 'separated':
batch_input_ref_list = [reference_images_patch_corres_in]
if self.hps.use_reference_canvas:
batch_input_ref_list.append(reference_canvas_images_patch_corres_in)
if self.hps.use_segment_img:
batch_input_ref_list.append(reference_segment_images_patch_corres_in)
batch_input_ref_list.append(reference_dot_img_patch_corres_in)
batch_input_ref = torch.cat(batch_input_ref_list, dim=-1) # (N, H, W, *), [-1.0-stroke, 1.0-BG]
if self.hps.use_target_canvas:
batch_input_tar = torch.cat([target_images_patch_corres_in, target_canvas_images_patch_corres_in], dim=-1) # (N, H, W, 2), [-1.0-stroke, 1.0-BG]
else:
batch_input_tar = target_images_patch_corres_in # (N, H, W, 1), [-1.0-stroke, 1.0-BG]
# transform to nchw
batch_input_ref = batch_input_ref.permute(0, 3, 1, 2) # (N, *, H, W), [-1.0-stroke, 1.0-BG]
batch_input_tar = batch_input_tar.permute(0, 3, 1, 2) # (N, *, H, W), [-1.0-stroke, 1.0-BG]
if self.hps.add_coordconv:
batch_input_ref = self.add_coords(batch_input_ref) # (N, in_dim + 2, in_H, in_W)
batch_input_tar = self.add_coords(batch_input_tar) # (N, in_dim + 2, in_H, in_W)
pred_params_trans = self.encoder(batch_input_ref, batch_input_tar) # (N, 2), [-1.0, 1.0]
else:
raise Exception('Unknown enc_model_correspondence:', self.hps.enc_model_correspondence)
if self.hps.use_clinging:
pred_params_trans_np = pred_params_trans.cpu().data.numpy()
target_images_patch_corres_np = target_images_patch_corres.cpu().data.numpy()
pred_params_trans_np = correspondence_clinging(target_images_patch_corres_np, pred_params_trans_np,
self.hps.raster_size_corres,
binary_threshold=self.hps.clinging_binary_threshold)
pred_params_trans = torch.tensor(pred_params_trans_np).float().cuda() # (N, 2), [-1.0, 1.0]
## Reversed Transformation
if self.hps.transform_with_rotation:
pred_params_rel = spatial_transform_reverse_point(pred_params_trans, pred_window_rotate_angle_tar) # (N, 2), [-1.0+, 1.0+]
else:
pred_params_rel = pred_params_trans
pred_params_offset_global = pred_params_rel * (curr_window_size_tar_pred.squeeze(dim=1) / 2.0) # (N, 2)
pred_params_global = pred_cursor_position_tar.squeeze(dim=1) * float(image_size) + pred_params_offset_global # (N, 2), in full size
pred_params_global = pred_params_global / float(image_size) # (N, 2), in [0.0, 1.0]
return pred_params_global
def get_coordconv(self):
xx_ones = torch.ones(self.hps.raster_size_corres, dtype=torch.int32) # e.g. (image_size)
xx_ones = xx_ones.unsqueeze(dim=-1) # e.g. (image_size, 1)
xx_range = torch.arange(self.hps.raster_size_corres, dtype=torch.int32) # e.g. (image_size)
xx_range = xx_range.unsqueeze(0) # e.g. (1, image_size)
xx_channel = torch.matmul(xx_ones, xx_range) # e.g. (image_size, image_size)
xx_channel = xx_channel.unsqueeze(0) # e.g. (1, image_size, image_size)
yy_ones = torch.ones(self.hps.raster_size_corres, dtype=torch.int32) # e.g. (image_size)
yy_ones = yy_ones.unsqueeze(0) # e.g. (1, image_size)
yy_range = torch.arange(self.hps.raster_size_corres, dtype=torch.int32) # (image_size)
yy_range = yy_range.unsqueeze(-1) # e.g. (image_size, 1)
yy_channel = torch.matmul(yy_range, yy_ones) # e.g. (image_size, image_size)
yy_channel = yy_channel.unsqueeze(0) # e.g. (1, image_size, image_size)
xx_channel = xx_channel.float() / (self.hps.raster_size_corres - 1)
yy_channel = yy_channel.float() / (self.hps.raster_size_corres - 1)
xx_channel = xx_channel * 2 - 1 # [-1, 1]
yy_channel = yy_channel * 2 - 1
# xx_channel = xx_channel.cuda()
# yy_channel = yy_channel.cuda()
ret = torch.cat([
xx_channel,
yy_channel,
], dim=0) # (2, image_size, image_size)
ret = ret.detach()
return ret
def add_coords(self, input_tensor):
batch_size = input_tensor.size()[0] # get N size
coords = torch.unsqueeze(self.coordconv_input, dim=0).repeat(batch_size, 1, 1, 1) # (N, 2, image_size, image_size)
coords = coords.to(input_tensor.device)
result = torch.cat([input_tensor, coords], dim=1) # (N, C+2, image_size, image_size)
return result
def build_encoder_transform(self, patch_input_ref, patch_input_tar):
"""
:param patch_input_ref & patch_input_tar: (N, raster_size, raster_size, 1), [-1.0-stroke, 1.0-BG]
:return:
"""
# transform to nchw
patch_inputs_ref = patch_input_ref # (N, raster_size, raster_size, 1), [-1.0-stroke, 1.0-BG]
patch_inputs_ref = patch_inputs_ref.permute(0, 3, 1, 2) # (N, 1, raster_size, raster_size), [-1.0-stroke, 1.0-BG]
patch_inputs_tar = patch_input_tar # (N, raster_size, raster_size, 1), [-1.0-stroke, 1.0-BG]
patch_inputs_tar = patch_inputs_tar.permute(0, 3, 1, 2) # (N, 1, raster_size, raster_size), [-1.0-stroke, 1.0-BG]
if self.hps.enc_model_transform == 'combined':
batch_input = torch.cat([patch_inputs_ref, patch_inputs_tar], dim=1) # (N, 4, raster_size, raster_size), [-1.0-stroke, 1.0-BG]
if self.hps.add_coordconv:
batch_input = self.add_coords(batch_input) # (N, in_dim + 2, in_H, in_W)
output = self.encoder_transform(batch_input) # (N, z_size)
else:
raise Exception('Unknown enc_model_transform:', self.hps.enc_model_transform)
return output
def build_decoder_transform(self, dec_input, prev_state):
"""
:param dec_input: (N, in_dim)
:return:
"""
h_output = self.decoder_transform(dec_input)
next_state = None
return h_output, next_state
class Generative_Model(nn.Module):
def __init__(self, hps, corres_module):
super(Generative_Model, self).__init__()
self.hps = hps
self.stroke_thickness = hps.stroke_thickness
self.correspondence_module = corres_module
if self.hps.data_type in ['TU-Derlin', 'TU-Refined']:
self.color_rgb_set = generate_colors2(40)
transform_out_size = 1 if self.hps.use_square_window else 2
if self.hps.transform_with_rotation:
transform_out_size += 1
first_kernel_size = self.hps.first_kernel_size
first_padding = (first_kernel_size - 1) // 2
# transform encoder
if self.hps.enc_model_transform == 'combined':
cnn_in_size = 2
if self.hps.transform_use_global_info:
cnn_in_size += 1
if self.hps.add_coordconv:
cnn_in_size += 2
cnn_out_size = self.hps.z_size
self.encoder_transform = CNN_Encoder(cnn_in_size, cnn_out_size, input_size=self.hps.raster_size,
first_kernel_size=first_kernel_size, first_padding=first_padding,
use_atrous=self.hps.use_atrous_conv)
else:
raise Exception('Unknown enc_model_transform:', self.hps.enc_model_transform)
# tracing encoder
if self.hps.enc_model_tracing == 'separated':
cnn_in_size_ref = 3
cnn_in_size_tar_end = 2
cnn_in_size_tar_ctrl = 3
if self.hps.add_coordconv:
cnn_in_size_ref += 2
cnn_in_size_tar_end += 2
cnn_in_size_tar_ctrl += 2
cnn_out_size = self.hps.z_size
self.encoder_end = CNN_SepEncoder(cnn_in_size_ref, cnn_in_size_tar_end, cnn_out_size, input_size=self.hps.raster_size,
first_kernel_size=first_kernel_size, first_padding=first_padding,
use_atrous=self.hps.use_atrous_conv)
self.encoder_ctrl = CNN_SepEncoder(cnn_in_size_ref, cnn_in_size_tar_ctrl, cnn_out_size, input_size=self.hps.raster_size,
first_kernel_size=first_kernel_size, first_padding=first_padding,
use_atrous=self.hps.use_atrous_conv)
else:
raise Exception('Unknown enc_model_tracing:', self.hps.enc_model_tracing)
if self.hps.add_coordconv:
self.coordconv_input = self.get_coordconv() # (2, raster_size, raster_size)
dec_in_size = self.hps.z_size
dec_out_size_end = 2
dec_out_size_ctrl = 4
is_hyper = True if self.hps.rnn_model == 'hyper' else False
if self.hps.dec_model_transform == 'mlp':
self.decoder_transform = MLP_Decoder(dec_in_size, transform_out_size, zero_init=self.hps.transform_module_zero_init)
else:
raise Exception('Unknown dec_model_transform:', self.hps.dec_model_transform)
if self.hps.dec_model_tracing == 'rnn':
self.decoder_end = RNN_Decoder(dec_in_size, self.hps.dec_rnn_size, dec_out_size_end, is_hyper=is_hyper)
self.decoder_ctrl = RNN_Decoder(dec_in_size, self.hps.dec_rnn_size, dec_out_size_ctrl, is_hyper=is_hyper)
else:
raise Exception('Unknown dec_model_tracing:', self.hps.dec_model_tracing)
def forward(self, seq_num, reference_images, target_images,
reference_dot_images_patch, reference_segment_images,
endpoints_pos_ref, starting_states, base_window_size, model_mode, image_size):
"""
:param reference_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param target_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param reference_segment_images: (N, seq_num, H, W), [0.0-stroke, 1.0-BG]
:param reference_dot_images_patch: (N, H_c, W_c), [0.0-stroke, 1.0-BG]
:param endpoints_pos_ref: (N, seq_num, 2), float32, in [0.0, 1.0]
:param starting_states: (N, seq_num), {1.0, 0.0}
:param base_window_size: (N, seq_num), float32, in [0.0, 1.0]
:return:
"""
self.model_mode = model_mode
assert model_mode in ['eval', 'inference']
if self.hps.data_type not in ['TU-Derlin', 'TU-Refined']:
self.color_rgb_set = generate_colors2(seq_num) # (seq_num, 3), in [0., 1.]
pred_params, pred_raster_images, pred_raster_images_rgb = \
self.get_points_and_raster_image(seq_num, reference_images, target_images, reference_segment_images,
reference_dot_images_patch, endpoints_pos_ref,
starting_states, base_window_size, image_size)
# pred_params: (N, seq_num, 4, 2), in full size
# pred_raster_images: (N, H, W), [0.0-BG, 1.0-stroke]
# pred_raster_images_rgb: (N, H, W, 3), [0.0-BG, 1.0-stroke]
pred_raster_images = 1.0 - pred_raster_images # (N, H, W), [0.0-stroke, 1.0-BG]
pred_raster_images_rgb = 1.0 - pred_raster_images_rgb # (N, H, W, 3), [0.0-stroke, 1.0-BG]
return pred_raster_images, pred_raster_images_rgb, pred_params
def get_points_and_raster_image(self, seq_num,
reference_images, target_images, reference_segment_images,
reference_dot_images_patch, endpoints_pos_ref,
starting_states, base_window_size, image_size):
"""
:param reference_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param target_images: (N, H, W, 1), float32, [0.0-stroke, 1.0-BG]
:param reference_segment_images: (N, seq_num, H, W), [0.0-stroke, 1.0-BG]
:param reference_dot_images_patch: (N, H_c, W_c), [0.0-stroke, 1.0-BG]
:param endpoints_pos_ref: (N, seq_num, 2), float32, in [0.0, 1.0]
:param starting_states: (N, seq_num), {1.0, 0.0}
:param base_window_size: (N, seq_num), float32, in [0.0, 1.0]
:return:
"""
zero_state = torch.zeros(reference_images.size(0), self.hps.dec_rnn_size).cuda()
if not self.hps.rnn_model == 'hyper':
next_state_end = (zero_state, zero_state)
next_state_ctrl = (zero_state, zero_state)
transform_next_state = (zero_state, zero_state)
else:
next_state_end = (zero_state, zero_state, zero_state, zero_state)
next_state_ctrl = (zero_state, zero_state, zero_state, zero_state)
transform_next_state = (zero_state, zero_state, zero_state, zero_state)
corres_window_size = get_correspondence_window_size(image_size, self.hps.init_window_size_corres_trans)
corres_window_sizes = torch.tensor([corres_window_size, corres_window_size]).float()
corres_window_sizes = corres_window_sizes.unsqueeze(dim=0).unsqueeze(dim=0).cuda() # (1, 1, 2)
segment_params_list = []
curr_canvas_ref = torch.squeeze(torch.zeros_like(reference_images), dim=-1) # (N, H, W), [0.0-BG, 1.0-stroke]
curr_canvas_tar_black = torch.squeeze(torch.zeros_like(target_images), dim=-1) # (N, H, W), [0.0-BG, 1.0-stroke]
curr_canvas_tar_rgb = torch.zeros_like(target_images)
curr_canvas_tar_rgb = curr_canvas_tar_rgb.repeat(1, 1, 1, 3) # (N, H, W, 3), [0.0-BG, 1.0-stroke]
cursor_position_loop_tar_inference = None
for seq_i in tqdm(range(seq_num)):
# reference cursor position
cursor_position_loop_ref = endpoints_pos_ref[:, seq_i:seq_i + 1, :] # (N, 1, 2), in size [0.0, 1.0]
# reference segment image
curr_segment_image_ref = reference_segment_images[:, seq_i, :, :] # (N, H, W), [0.0-stroke, 1.0-BG]
curr_segment_image_ref = curr_segment_image_ref.unsqueeze(dim=-1) # (N, H, W, 1), [0.0-stroke, 1.0-BG]
# canvas images
curr_canvas_ref_for_crop = 1.0 - curr_canvas_ref.unsqueeze(dim=-1) # (N, H, W, 1), [0.0-stroke, 1.0-BG]
curr_canvas_tar_for_crop = 1.0 - curr_canvas_tar_black.unsqueeze(dim=-1) # (N, H, W, 1), [0.0-stroke, 1.0-BG]
# ================== Stage-1: Starting point correspondence ================== #
if starting_states[0, seq_i] == 1:
# print('Starting point correspondence:', seq_i)
reference_dot_images_patch_corres = torch.unsqueeze(reference_dot_images_patch, dim=-1) # (N, H_c, W_c, 1), [0-stroke, 1-BG]
pred_params_corres = self.correspondence_module(reference_images=reference_images,
reference_dot_images=reference_dot_images_patch_corres,
reference_segment_images=curr_segment_image_ref,
reference_canvas_images=curr_canvas_ref_for_crop,
target_images=target_images,
target_canvas_images=curr_canvas_tar_for_crop,
cursor_position_ref=cursor_position_loop_ref,
image_size=image_size,
init_trans_window_sizes=corres_window_sizes)
# pred_params_corres: (N, 2), in [0.0, 1.0]
cursor_position_loop_tar_inference = pred_params_corres.unsqueeze(dim=1) # (N, 1, 2), in [0.0, 1.0]
# =================== Stage-2: Transformation and Tracing =================== #
## Reference processing