DL-Art-School/codes/models/archs/ChainedEmbeddingGen.py

126 lines
6.8 KiB
Python
Raw Normal View History

2020-10-21 17:07:45 +00:00
import os
2020-10-16 05:18:08 +00:00
import torch
2020-10-21 17:07:45 +00:00
import torchvision
2020-10-16 05:18:08 +00:00
from torch import nn
2020-10-17 02:44:36 +00:00
from models.archs.SPSR_arch import ImageGradientNoPadding
2020-10-16 05:18:08 +00:00
from models.archs.arch_util import ConvGnLelu, ExpansionBlock2, ConvGnSilu, ConjoinBlock, MultiConvBlock, \
2020-10-17 14:40:28 +00:00
FinalUpsampleBlock2x, ReferenceJoinBlock
2020-10-16 05:18:08 +00:00
from models.archs.spinenet_arch import SpineNet
from utils.util import checkpoint
class BasicEmbeddingPyramid(nn.Module):
def __init__(self, use_norms=True):
super(BasicEmbeddingPyramid, self).__init__()
self.initial_process = ConvGnLelu(64, 64, kernel_size=1, bias=True, activation=True, norm=False)
self.reducers = nn.ModuleList([ConvGnLelu(64, 128, stride=2, kernel_size=1, bias=False, activation=True, norm=False),
ConvGnLelu(128, 128, kernel_size=3, bias=False, activation=True, norm=use_norms),
ConvGnLelu(128, 256, stride=2, kernel_size=1, bias=False, activation=True, norm=False),
ConvGnLelu(256, 256, kernel_size=3, bias=False, activation=True, norm=use_norms)])
self.expanders = nn.ModuleList([ExpansionBlock2(256, 128, block=ConvGnLelu),
ExpansionBlock2(128, 64, block=ConvGnLelu)])
self.embedding_processor1 = ConvGnSilu(256, 128, kernel_size=1, bias=True, activation=True, norm=False)
self.embedding_joiner1 = ConjoinBlock(128, block=ConvGnLelu, norm=use_norms)
self.embedding_processor2 = ConvGnSilu(256, 256, kernel_size=1, bias=True, activation=True, norm=False)
self.embedding_joiner2 = ConjoinBlock(256, block=ConvGnLelu, norm=use_norms)
self.final_process = nn.Sequential(ConvGnLelu(128, 96, kernel_size=1, bias=False, activation=False, norm=False,
weight_init_factor=.1),
ConvGnLelu(96, 64, kernel_size=1, bias=False, activation=False, norm=False,
weight_init_factor=.1),
ConvGnLelu(64, 64, kernel_size=1, bias=False, activation=False, norm=False,
weight_init_factor=.1),
ConvGnLelu(64, 64, kernel_size=1, bias=False, activation=False, norm=False,
weight_init_factor=.1))
def forward(self, x, *embeddings):
p = self.initial_process(x)
identities = []
for i in range(2):
identities.append(p)
p = self.reducers[i*2](p)
p = self.reducers[i*2+1](p)
if i == 0:
p = self.embedding_joiner1(p, self.embedding_processor1(embeddings[0]))
elif i == 1:
p = self.embedding_joiner2(p, self.embedding_processor2(embeddings[1]))
for i in range(2):
p = self.expanders[i](p, identities[-(i+1)])
x = self.final_process(torch.cat([x, p], dim=1))
2020-10-21 17:07:45 +00:00
return x, p
2020-10-16 05:18:08 +00:00
class MultifacetedChainedEmbeddingGen(nn.Module):
2020-10-23 15:25:58 +00:00
def __init__(self, depth=10, scale=2):
super(MultifacetedChainedEmbeddingGen, self).__init__()
2020-10-23 15:25:58 +00:00
assert scale == 2 or scale == 4
self.initial_conv = ConvGnLelu(3, 64, kernel_size=7, bias=True, norm=False, activation=False)
self.teco_recurrent_process = ConvGnLelu(3, 64, kernel_size=3, stride=2, norm=False, bias=True, activation=False)
self.teco_recurrent_join = ReferenceJoinBlock(64, residual_weight_init_factor=.01, final_norm=False, kernel_size=1, depth=3, join=False)
2020-10-23 15:25:58 +00:00
self.prog_recurrent_process = ConvGnLelu(64, 64, kernel_size=3, stride=1, norm=False, bias=True, activation=False)
self.prog_recurrent_join = ReferenceJoinBlock(64, residual_weight_init_factor=.01, final_norm=False, kernel_size=1, depth=3, join=False)
self.spine = SpineNet(arch='49', output_level=[3, 4], double_reduce_early=False)
self.blocks = nn.ModuleList([BasicEmbeddingPyramid() for i in range(depth)])
self.bypasses = nn.ModuleList([OptionalPassthroughBlock(64, initial_bias=0) for i in range(depth)])
self.structure_joins = nn.ModuleList([ConjoinBlock(64) for i in range(3)])
self.structure_blocks = nn.ModuleList([ConvGnLelu(64, 64, kernel_size=3, bias=False, norm=False, activation=False, weight_init_factor=.1) for i in range(3)])
2020-10-23 15:25:58 +00:00
self.structure_upsample = FinalUpsampleBlock2x(64, scale=scale)
self.grad_extract = ImageGradientNoPadding()
2020-10-23 15:25:58 +00:00
self.upsample = FinalUpsampleBlock2x(64, scale=scale)
self.teco_ref_std = 0
self.prog_ref_std = 0
self.block_residual_means = [0 for _ in range(depth)]
self.block_residual_stds = [0 for _ in range(depth)]
self.bypass_maps = []
def forward(self, x, teco_recurrent=None, prog_recurrent=None):
fea = self.initial_conv(x)
# Integrate recurrence inputs.
if teco_recurrent is not None:
2020-10-22 19:27:06 +00:00
teco_rec = self.teco_recurrent_process(teco_recurrent)
fea, std = self.teco_recurrent_join(fea, teco_rec)
self.teco_ref_std = std.item()
elif prog_recurrent is not None:
prog_rec = self.prog_recurrent_process(prog_recurrent)
prog_rec, std = self.prog_recurrent_join(fea, prog_rec)
self.prog_ref_std = std.item()
emb = checkpoint(self.spine, fea)
grad = fea
self.bypass_maps = []
for i, block in enumerate(self.blocks):
residual, context = checkpoint(block, fea, *emb)
residual, bypass_map = checkpoint(self.bypasses[i], residual, context)
fea = fea + residual
self.bypass_maps.append(bypass_map.detach())
self.block_residual_means[i] = residual.mean().item()
self.block_residual_stds[i] = residual.std().item()
if i < 3:
structure_br = checkpoint(self.structure_joins[i], grad, fea)
grad = grad + checkpoint(self.structure_blocks[i], structure_br)
out = checkpoint(self.upsample, fea)
return out, self.grad_extract(checkpoint(self.structure_upsample, grad)), self.grad_extract(out), fea
def visual_dbg(self, step, path):
for i, bm in enumerate(self.bypass_maps):
torchvision.utils.save_image(bm.cpu().float(), os.path.join(path, "%i_bypass_%i.png" % (step, i+1)))
def get_debug_values(self, step, net_name):
biases = [b.bias.item() for b in self.bypasses]
blk_stds, blk_means = {}, {}
for i, (s, m) in enumerate(zip(self.block_residual_stds, self.block_residual_means)):
blk_stds['block_%i' % (i+1,)] = s
blk_means['block_%i' % (i+1,)] = m
return {'teco_std': self.teco_ref_std,
'prog_std': self.prog_ref_std,
'bypass_biases': sum(biases) / len(biases),
'blocks_std': blk_stds, 'blocks_mean': blk_means}