ai-photo-gallery / mmdet /models /dense_heads /conditional_detr_head.py
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# Copyright (c) OpenMMLab. All rights reserved.
from typing import Tuple
import torch
import torch.nn as nn
from mmengine.model import bias_init_with_prob
from torch import Tensor
from mmdet.models.layers.transformer import inverse_sigmoid
from mmdet.registry import MODELS
from mmdet.structures import SampleList
from mmdet.utils import InstanceList
from .detr_head import DETRHead
@MODELS.register_module()
class ConditionalDETRHead(DETRHead):
"""Head of Conditional DETR. Conditional DETR: Conditional DETR for Fast
Training Convergence. More details can be found in the `paper.
<https://arxiv.org/abs/2108.06152>`_ .
"""
def init_weights(self):
"""Initialize weights of the transformer head."""
super().init_weights()
# The initialization below for transformer head is very
# important as we use Focal_loss for loss_cls
if self.loss_cls.use_sigmoid:
bias_init = bias_init_with_prob(0.01)
nn.init.constant_(self.fc_cls.bias, bias_init)
def forward(self, hidden_states: Tensor,
references: Tensor) -> Tuple[Tensor, Tensor]:
""""Forward function.
Args:
hidden_states (Tensor): Features from transformer decoder. If
`return_intermediate_dec` is True output has shape
(num_decoder_layers, bs, num_queries, dim), else has shape (1,
bs, num_queries, dim) which only contains the last layer
outputs.
references (Tensor): References from transformer decoder, has
shape (bs, num_queries, 2).
Returns:
tuple[Tensor]: results of head containing the following tensor.
- layers_cls_scores (Tensor): Outputs from the classification head,
shape (num_decoder_layers, bs, num_queries, cls_out_channels).
Note cls_out_channels should include background.
- layers_bbox_preds (Tensor): Sigmoid outputs from the regression
head with normalized coordinate format (cx, cy, w, h), has shape
(num_decoder_layers, bs, num_queries, 4).
"""
references_unsigmoid = inverse_sigmoid(references)
layers_bbox_preds = []
for layer_id in range(hidden_states.shape[0]):
tmp_reg_preds = self.fc_reg(
self.activate(self.reg_ffn(hidden_states[layer_id])))
tmp_reg_preds[..., :2] += references_unsigmoid
outputs_coord = tmp_reg_preds.sigmoid()
layers_bbox_preds.append(outputs_coord)
layers_bbox_preds = torch.stack(layers_bbox_preds)
layers_cls_scores = self.fc_cls(hidden_states)
return layers_cls_scores, layers_bbox_preds
def loss(self, hidden_states: Tensor, references: Tensor,
batch_data_samples: SampleList) -> dict:
"""Perform forward propagation and loss calculation of the detection
head on the features of the upstream network.
Args:
hidden_states (Tensor): Features from the transformer decoder, has
shape (num_decoder_layers, bs, num_queries, dim).
references (Tensor): References from the transformer decoder, has
shape (num_decoder_layers, bs, num_queries, 2).
batch_data_samples (List[:obj:`DetDataSample`]): The Data
Samples. It usually includes information such as
`gt_instance`, `gt_panoptic_seg` and `gt_sem_seg`.
Returns:
dict: A dictionary of loss components.
"""
batch_gt_instances = []
batch_img_metas = []
for data_sample in batch_data_samples:
batch_img_metas.append(data_sample.metainfo)
batch_gt_instances.append(data_sample.gt_instances)
outs = self(hidden_states, references)
loss_inputs = outs + (batch_gt_instances, batch_img_metas)
losses = self.loss_by_feat(*loss_inputs)
return losses
def loss_and_predict(
self, hidden_states: Tensor, references: Tensor,
batch_data_samples: SampleList) -> Tuple[dict, InstanceList]:
"""Perform forward propagation of the head, then calculate loss and
predictions from the features and data samples. Over-write because
img_metas are needed as inputs for bbox_head.
Args:
hidden_states (Tensor): Features from the transformer decoder, has
shape (num_decoder_layers, bs, num_queries, dim).
references (Tensor): References from the transformer decoder, has
shape (num_decoder_layers, bs, num_queries, 2).
batch_data_samples (list[:obj:`DetDataSample`]): Each item contains
the meta information of each image and corresponding
annotations.
Returns:
tuple: The return value is a tuple contains:
- losses: (dict[str, Tensor]): A dictionary of loss components.
- predictions (list[:obj:`InstanceData`]): Detection
results of each image after the post process.
"""
batch_gt_instances = []
batch_img_metas = []
for data_sample in batch_data_samples:
batch_img_metas.append(data_sample.metainfo)
batch_gt_instances.append(data_sample.gt_instances)
outs = self(hidden_states, references)
loss_inputs = outs + (batch_gt_instances, batch_img_metas)
losses = self.loss_by_feat(*loss_inputs)
predictions = self.predict_by_feat(
*outs, batch_img_metas=batch_img_metas)
return losses, predictions
def predict(self,
hidden_states: Tensor,
references: Tensor,
batch_data_samples: SampleList,
rescale: bool = True) -> InstanceList:
"""Perform forward propagation of the detection head and predict
detection results on the features of the upstream network. Over-write
because img_metas are needed as inputs for bbox_head.
Args:
hidden_states (Tensor): Features from the transformer decoder, has
shape (num_decoder_layers, bs, num_queries, dim).
references (Tensor): References from the transformer decoder, has
shape (num_decoder_layers, bs, num_queries, 2).
batch_data_samples (List[:obj:`DetDataSample`]): The Data
Samples. It usually includes information such as
`gt_instance`, `gt_panoptic_seg` and `gt_sem_seg`.
rescale (bool, optional): Whether to rescale the results.
Defaults to True.
Returns:
list[obj:`InstanceData`]: Detection results of each image
after the post process.
"""
batch_img_metas = [
data_samples.metainfo for data_samples in batch_data_samples
]
last_layer_hidden_state = hidden_states[-1].unsqueeze(0)
outs = self(last_layer_hidden_state, references)
predictions = self.predict_by_feat(
*outs, batch_img_metas=batch_img_metas, rescale=rescale)
return predictions