| |
| from typing import Dict, Tuple |
|
|
| import torch |
| import torch.nn.functional as F |
| from torch import Tensor, nn |
|
|
| from mmdet.registry import MODELS |
| from mmdet.structures import OptSampleList |
| from ..layers import (DetrTransformerDecoder, DetrTransformerEncoder, |
| SinePositionalEncoding) |
| from .base_detr import DetectionTransformer |
|
|
|
|
| @MODELS.register_module() |
| class DETR(DetectionTransformer): |
| r"""Implementation of `DETR: End-to-End Object Detection with Transformers. |
| |
| <https://arxiv.org/pdf/2005.12872>`_. |
| |
| Code is modified from the `official github repo |
| <https://github.com/facebookresearch/detr>`_. |
| """ |
|
|
| def _init_layers(self) -> None: |
| """Initialize layers except for backbone, neck and bbox_head.""" |
| self.positional_encoding = SinePositionalEncoding( |
| **self.positional_encoding) |
| self.encoder = DetrTransformerEncoder(**self.encoder) |
| self.decoder = DetrTransformerDecoder(**self.decoder) |
| self.embed_dims = self.encoder.embed_dims |
| |
| |
| |
| self.query_embedding = nn.Embedding(self.num_queries, self.embed_dims) |
|
|
| num_feats = self.positional_encoding.num_feats |
| assert num_feats * 2 == self.embed_dims, \ |
| 'embed_dims should be exactly 2 times of num_feats. ' \ |
| f'Found {self.embed_dims} and {num_feats}.' |
|
|
| def init_weights(self) -> None: |
| """Initialize weights for Transformer and other components.""" |
| super().init_weights() |
| for coder in self.encoder, self.decoder: |
| for p in coder.parameters(): |
| if p.dim() > 1: |
| nn.init.xavier_uniform_(p) |
|
|
| def pre_transformer( |
| self, |
| img_feats: Tuple[Tensor], |
| batch_data_samples: OptSampleList = None) -> Tuple[Dict, Dict]: |
| """Prepare the inputs of the Transformer. |
| |
| The forward procedure of the transformer is defined as: |
| 'pre_transformer' -> 'encoder' -> 'pre_decoder' -> 'decoder' |
| More details can be found at `TransformerDetector.forward_transformer` |
| in `mmdet/detector/base_detr.py`. |
| |
| Args: |
| img_feats (Tuple[Tensor]): Tuple of features output from the neck, |
| has shape (bs, c, h, w). |
| batch_data_samples (List[:obj:`DetDataSample`]): The batch |
| data samples. It usually includes information such as |
| `gt_instance` or `gt_panoptic_seg` or `gt_sem_seg`. |
| Defaults to None. |
| |
| Returns: |
| tuple[dict, dict]: The first dict contains the inputs of encoder |
| and the second dict contains the inputs of decoder. |
| |
| - encoder_inputs_dict (dict): The keyword args dictionary of |
| `self.forward_encoder()`, which includes 'feat', 'feat_mask', |
| and 'feat_pos'. |
| - decoder_inputs_dict (dict): The keyword args dictionary of |
| `self.forward_decoder()`, which includes 'memory_mask', |
| and 'memory_pos'. |
| """ |
|
|
| feat = img_feats[-1] |
| batch_size, feat_dim, _, _ = feat.shape |
| |
| assert batch_data_samples is not None |
| batch_input_shape = batch_data_samples[0].batch_input_shape |
| input_img_h, input_img_w = batch_input_shape |
| img_shape_list = [sample.img_shape for sample in batch_data_samples] |
| same_shape_flag = all([ |
| s[0] == input_img_h and s[1] == input_img_w for s in img_shape_list |
| ]) |
| if torch.onnx.is_in_onnx_export() or same_shape_flag: |
| masks = None |
| |
| pos_embed = self.positional_encoding(masks, input=feat) |
| else: |
| masks = feat.new_ones((batch_size, input_img_h, input_img_w)) |
| for img_id in range(batch_size): |
| img_h, img_w = img_shape_list[img_id] |
| masks[img_id, :img_h, :img_w] = 0 |
| |
| |
|
|
| masks = F.interpolate( |
| masks.unsqueeze(1), |
| size=feat.shape[-2:]).to(torch.bool).squeeze(1) |
| |
| pos_embed = self.positional_encoding(masks) |
|
|
| |
| |
| feat = feat.view(batch_size, feat_dim, -1).permute(0, 2, 1) |
| pos_embed = pos_embed.view(batch_size, feat_dim, -1).permute(0, 2, 1) |
| |
| if masks is not None: |
| masks = masks.view(batch_size, -1) |
|
|
| |
| encoder_inputs_dict = dict( |
| feat=feat, feat_mask=masks, feat_pos=pos_embed) |
| decoder_inputs_dict = dict(memory_mask=masks, memory_pos=pos_embed) |
| return encoder_inputs_dict, decoder_inputs_dict |
|
|
| def forward_encoder(self, feat: Tensor, feat_mask: Tensor, |
| feat_pos: Tensor) -> Dict: |
| """Forward with Transformer encoder. |
| |
| The forward procedure of the transformer is defined as: |
| 'pre_transformer' -> 'encoder' -> 'pre_decoder' -> 'decoder' |
| More details can be found at `TransformerDetector.forward_transformer` |
| in `mmdet/detector/base_detr.py`. |
| |
| Args: |
| feat (Tensor): Sequential features, has shape (bs, num_feat_points, |
| dim). |
| feat_mask (Tensor): ByteTensor, the padding mask of the features, |
| has shape (bs, num_feat_points). |
| feat_pos (Tensor): The positional embeddings of the features, has |
| shape (bs, num_feat_points, dim). |
| |
| Returns: |
| dict: The dictionary of encoder outputs, which includes the |
| `memory` of the encoder output. |
| """ |
| memory = self.encoder( |
| query=feat, query_pos=feat_pos, |
| key_padding_mask=feat_mask) |
| encoder_outputs_dict = dict(memory=memory) |
| return encoder_outputs_dict |
|
|
| def pre_decoder(self, memory: Tensor) -> Tuple[Dict, Dict]: |
| """Prepare intermediate variables before entering Transformer decoder, |
| such as `query`, `query_pos`. |
| |
| The forward procedure of the transformer is defined as: |
| 'pre_transformer' -> 'encoder' -> 'pre_decoder' -> 'decoder' |
| More details can be found at `TransformerDetector.forward_transformer` |
| in `mmdet/detector/base_detr.py`. |
| |
| Args: |
| memory (Tensor): The output embeddings of the Transformer encoder, |
| has shape (bs, num_feat_points, dim). |
| |
| Returns: |
| tuple[dict, dict]: The first dict contains the inputs of decoder |
| and the second dict contains the inputs of the bbox_head function. |
| |
| - decoder_inputs_dict (dict): The keyword args dictionary of |
| `self.forward_decoder()`, which includes 'query', 'query_pos', |
| 'memory'. |
| - head_inputs_dict (dict): The keyword args dictionary of the |
| bbox_head functions, which is usually empty, or includes |
| `enc_outputs_class` and `enc_outputs_class` when the detector |
| support 'two stage' or 'query selection' strategies. |
| """ |
|
|
| batch_size = memory.size(0) |
| query_pos = self.query_embedding.weight |
| |
| query_pos = query_pos.unsqueeze(0).repeat(batch_size, 1, 1) |
| query = torch.zeros_like(query_pos) |
|
|
| decoder_inputs_dict = dict( |
| query_pos=query_pos, query=query, memory=memory) |
| head_inputs_dict = dict() |
| return decoder_inputs_dict, head_inputs_dict |
|
|
| def forward_decoder(self, query: Tensor, query_pos: Tensor, memory: Tensor, |
| memory_mask: Tensor, memory_pos: Tensor) -> Dict: |
| """Forward with Transformer decoder. |
| |
| The forward procedure of the transformer is defined as: |
| 'pre_transformer' -> 'encoder' -> 'pre_decoder' -> 'decoder' |
| More details can be found at `TransformerDetector.forward_transformer` |
| in `mmdet/detector/base_detr.py`. |
| |
| Args: |
| query (Tensor): The queries of decoder inputs, has shape |
| (bs, num_queries, dim). |
| query_pos (Tensor): The positional queries of decoder inputs, |
| has shape (bs, num_queries, dim). |
| memory (Tensor): The output embeddings of the Transformer encoder, |
| has shape (bs, num_feat_points, dim). |
| memory_mask (Tensor): ByteTensor, the padding mask of the memory, |
| has shape (bs, num_feat_points). |
| memory_pos (Tensor): The positional embeddings of memory, has |
| shape (bs, num_feat_points, dim). |
| |
| Returns: |
| dict: The dictionary of decoder outputs, which includes the |
| `hidden_states` of the decoder output. |
| |
| - hidden_states (Tensor): Has shape |
| (num_decoder_layers, bs, num_queries, dim) |
| """ |
|
|
| hidden_states = self.decoder( |
| query=query, |
| key=memory, |
| value=memory, |
| query_pos=query_pos, |
| key_pos=memory_pos, |
| key_padding_mask=memory_mask) |
|
|
| head_inputs_dict = dict(hidden_states=hidden_states) |
| return head_inputs_dict |
|
|