From dc28cbe2b4ed77be92ee8b2b69a20689c3bf02a4 Mon Sep 17 00:00:00 2001 From: aktersnurra Date: Sun, 8 Nov 2020 14:54:44 +0100 Subject: new updates --- src/text_recognizer/networks/cnn_transformer.py | 135 ++++++++++++++++++++++++ 1 file changed, 135 insertions(+) create mode 100644 src/text_recognizer/networks/cnn_transformer.py (limited to 'src/text_recognizer/networks/cnn_transformer.py') diff --git a/src/text_recognizer/networks/cnn_transformer.py b/src/text_recognizer/networks/cnn_transformer.py new file mode 100644 index 0000000..3da2c9f --- /dev/null +++ b/src/text_recognizer/networks/cnn_transformer.py @@ -0,0 +1,135 @@ +"""A DETR style transfomers but for text recognition.""" +from typing import Dict, Optional, Tuple + +from einops import rearrange +import torch +from torch import nn +from torch import Tensor + +from text_recognizer.networks.transformer import PositionalEncoding, Transformer +from text_recognizer.networks.util import configure_backbone + + +class CNNTransformer(nn.Module): + """CNN+Transfomer for image to sequence prediction, sort of based on the ideas from DETR.""" + + def __init__( + self, + num_encoder_layers: int, + num_decoder_layers: int, + hidden_dim: int, + vocab_size: int, + num_heads: int, + adaptive_pool_dim: Tuple, + expansion_dim: int, + dropout_rate: float, + trg_pad_index: int, + backbone: str, + out_channels: int, + max_len: int, + backbone_args: Optional[Dict] = None, + activation: str = "gelu", + ) -> None: + super().__init__() + self.trg_pad_index = trg_pad_index + + self.backbone = configure_backbone(backbone, backbone_args) + self.character_embedding = nn.Embedding(vocab_size, hidden_dim) + + # self.conv = nn.Conv2d(out_channels, max_len, kernel_size=1) + + self.position_encoding = PositionalEncoding(hidden_dim, dropout_rate) + self.row_embed = nn.Parameter(torch.rand(max_len, max_len // 2)) + self.col_embed = nn.Parameter(torch.rand(max_len, max_len // 2)) + + self.adaptive_pool = ( + nn.AdaptiveAvgPool2d((adaptive_pool_dim)) if adaptive_pool_dim else None + ) + + self.transformer = Transformer( + num_encoder_layers, + num_decoder_layers, + hidden_dim, + num_heads, + expansion_dim, + dropout_rate, + activation, + ) + + self.head = nn.Sequential(nn.Linear(hidden_dim, vocab_size),) + + def _create_trg_mask(self, trg: Tensor) -> Tensor: + # Move this outside the transformer. + trg_pad_mask = (trg != self.trg_pad_index)[:, None, None] + trg_len = trg.shape[1] + trg_sub_mask = torch.tril( + torch.ones((trg_len, trg_len), device=trg.device) + ).bool() + trg_mask = trg_pad_mask & trg_sub_mask + return trg_mask + + def encoder(self, src: Tensor) -> Tensor: + """Forward pass with the encoder of the transformer.""" + return self.transformer.encoder(src) + + def decoder(self, trg: Tensor, memory: Tensor, trg_mask: Tensor) -> Tensor: + """Forward pass with the decoder of the transformer + classification head.""" + return self.head( + self.transformer.decoder(trg=trg, memory=memory, trg_mask=trg_mask) + ) + + def preprocess_input(self, src: Tensor) -> Tensor: + """Encodes src with a backbone network and a positional encoding. + + Args: + src (Tensor): Input tensor. + + Returns: + Tensor: A input src to the transformer. + + """ + # If batch dimenstion is missing, it needs to be added. + if len(src.shape) < 4: + src = src[(None,) * (4 - len(src.shape))] + src = self.backbone(src) + # src = self.conv(src) + if self.adaptive_pool is not None: + src = self.adaptive_pool(src) + H, W = src.shape[-2:] + src = rearrange(src, "b t h w -> b t (h w)") + + # construct positional encodings + pos = torch.cat( + [ + self.col_embed[:W].unsqueeze(0).repeat(H, 1, 1), + self.row_embed[:H].unsqueeze(1).repeat(1, W, 1), + ], + dim=-1, + ).unsqueeze(0) + pos = rearrange(pos, "b h w l -> b l (h w)") + src = pos + 0.1 * src + return src + + def preprocess_target(self, trg: Tensor) -> Tuple[Tensor, Tensor]: + """Encodes target tensor with embedding and postion. + + Args: + trg (Tensor): Target tensor. + + Returns: + Tuple[Tensor, Tensor]: Encoded target tensor and target mask. + + """ + trg = self.character_embedding(trg.long()) + trg = self.position_encoding(trg) + return trg + + def forward(self, x: Tensor, trg: Optional[Tensor] = None) -> Tensor: + """Forward pass with CNN transfomer.""" + h = self.preprocess_input(x) + trg_mask = self._create_trg_mask(trg) + trg = self.preprocess_target(trg) + out = self.transformer(h, trg, trg_mask=trg_mask) + + logits = self.head(out) + return logits -- cgit v1.2.3-70-g09d2