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# Copyright (c) OpenMMLab. All rights reserved. | |
import copy | |
from abc import ABCMeta, abstractmethod | |
from inspect import signature | |
from typing import List, Optional, Tuple | |
import torch | |
from mmcv.ops import batched_nms | |
from mmengine.config import ConfigDict | |
from mmengine.model import BaseModule, constant_init | |
from mmengine.structures import InstanceData | |
from torch import Tensor | |
from mmdet.structures import SampleList | |
from mmdet.structures.bbox import (cat_boxes, get_box_tensor, get_box_wh, | |
scale_boxes) | |
from mmdet.utils import InstanceList, OptMultiConfig | |
from ..test_time_augs import merge_aug_results | |
from ..utils import (filter_scores_and_topk, select_single_mlvl, | |
unpack_gt_instances) | |
class BaseDenseHead(BaseModule, metaclass=ABCMeta): | |
"""Base class for DenseHeads. | |
1. The ``init_weights`` method is used to initialize densehead's | |
model parameters. After detector initialization, ``init_weights`` | |
is triggered when ``detector.init_weights()`` is called externally. | |
2. The ``loss`` method is used to calculate the loss of densehead, | |
which includes two steps: (1) the densehead model performs forward | |
propagation to obtain the feature maps (2) The ``loss_by_feat`` method | |
is called based on the feature maps to calculate the loss. | |
.. code:: text | |
loss(): forward() -> loss_by_feat() | |
3. The ``predict`` method is used to predict detection results, | |
which includes two steps: (1) the densehead model performs forward | |
propagation to obtain the feature maps (2) The ``predict_by_feat`` method | |
is called based on the feature maps to predict detection results including | |
post-processing. | |
.. code:: text | |
predict(): forward() -> predict_by_feat() | |
4. The ``loss_and_predict`` method is used to return loss and detection | |
results at the same time. It will call densehead's ``forward``, | |
``loss_by_feat`` and ``predict_by_feat`` methods in order. If one-stage is | |
used as RPN, the densehead needs to return both losses and predictions. | |
This predictions is used as the proposal of roihead. | |
.. code:: text | |
loss_and_predict(): forward() -> loss_by_feat() -> predict_by_feat() | |
""" | |
def __init__(self, init_cfg: OptMultiConfig = None) -> None: | |
super().__init__(init_cfg=init_cfg) | |
# `_raw_positive_infos` will be used in `get_positive_infos`, which | |
# can get positive information. | |
self._raw_positive_infos = dict() | |
def init_weights(self) -> None: | |
"""Initialize the weights.""" | |
super().init_weights() | |
# avoid init_cfg overwrite the initialization of `conv_offset` | |
for m in self.modules(): | |
# DeformConv2dPack, ModulatedDeformConv2dPack | |
if hasattr(m, 'conv_offset'): | |
constant_init(m.conv_offset, 0) | |
def get_positive_infos(self) -> InstanceList: | |
"""Get positive information from sampling results. | |
Returns: | |
list[:obj:`InstanceData`]: Positive information of each image, | |
usually including positive bboxes, positive labels, positive | |
priors, etc. | |
""" | |
if len(self._raw_positive_infos) == 0: | |
return None | |
sampling_results = self._raw_positive_infos.get( | |
'sampling_results', None) | |
assert sampling_results is not None | |
positive_infos = [] | |
for sampling_result in enumerate(sampling_results): | |
pos_info = InstanceData() | |
pos_info.bboxes = sampling_result.pos_gt_bboxes | |
pos_info.labels = sampling_result.pos_gt_labels | |
pos_info.priors = sampling_result.pos_priors | |
pos_info.pos_assigned_gt_inds = \ | |
sampling_result.pos_assigned_gt_inds | |
pos_info.pos_inds = sampling_result.pos_inds | |
positive_infos.append(pos_info) | |
return positive_infos | |
def loss(self, x: Tuple[Tensor], batch_data_samples: SampleList) -> dict: | |
"""Perform forward propagation and loss calculation of the detection | |
head on the features of the upstream network. | |
Args: | |
x (tuple[Tensor]): Features from the upstream network, each is | |
a 4D-tensor. | |
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. | |
""" | |
outs = self(x) | |
outputs = unpack_gt_instances(batch_data_samples) | |
(batch_gt_instances, batch_gt_instances_ignore, | |
batch_img_metas) = outputs | |
loss_inputs = outs + (batch_gt_instances, batch_img_metas, | |
batch_gt_instances_ignore) | |
losses = self.loss_by_feat(*loss_inputs) | |
return losses | |
def loss_by_feat(self, **kwargs) -> dict: | |
"""Calculate the loss based on the features extracted by the detection | |
head.""" | |
pass | |
def loss_and_predict( | |
self, | |
x: Tuple[Tensor], | |
batch_data_samples: SampleList, | |
proposal_cfg: Optional[ConfigDict] = None | |
) -> Tuple[dict, InstanceList]: | |
"""Perform forward propagation of the head, then calculate loss and | |
predictions from the features and data samples. | |
Args: | |
x (tuple[Tensor]): Features from FPN. | |
batch_data_samples (list[:obj:`DetDataSample`]): Each item contains | |
the meta information of each image and corresponding | |
annotations. | |
proposal_cfg (ConfigDict, optional): Test / postprocessing | |
configuration, if None, test_cfg would be used. | |
Defaults to None. | |
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. | |
""" | |
outputs = unpack_gt_instances(batch_data_samples) | |
(batch_gt_instances, batch_gt_instances_ignore, | |
batch_img_metas) = outputs | |
outs = self(x) | |
loss_inputs = outs + (batch_gt_instances, batch_img_metas, | |
batch_gt_instances_ignore) | |
losses = self.loss_by_feat(*loss_inputs) | |
predictions = self.predict_by_feat( | |
*outs, batch_img_metas=batch_img_metas, cfg=proposal_cfg) | |
return losses, predictions | |
def predict(self, | |
x: Tuple[Tensor], | |
batch_data_samples: SampleList, | |
rescale: bool = False) -> InstanceList: | |
"""Perform forward propagation of the detection head and predict | |
detection results on the features of the upstream network. | |
Args: | |
x (tuple[Tensor]): Multi-level features from the | |
upstream network, each is a 4D-tensor. | |
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 False. | |
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 | |
] | |
outs = self(x) | |
predictions = self.predict_by_feat( | |
*outs, batch_img_metas=batch_img_metas, rescale=rescale) | |
return predictions | |
def predict_by_feat(self, | |
cls_scores: List[Tensor], | |
bbox_preds: List[Tensor], | |
score_factors: Optional[List[Tensor]] = None, | |
batch_img_metas: Optional[List[dict]] = None, | |
cfg: Optional[ConfigDict] = None, | |
rescale: bool = False, | |
with_nms: bool = True) -> InstanceList: | |
"""Transform a batch of output features extracted from the head into | |
bbox results. | |
Note: When score_factors is not None, the cls_scores are | |
usually multiplied by it then obtain the real score used in NMS, | |
such as CenterNess in FCOS, IoU branch in ATSS. | |
Args: | |
cls_scores (list[Tensor]): Classification scores for all | |
scale levels, each is a 4D-tensor, has shape | |
(batch_size, num_priors * num_classes, H, W). | |
bbox_preds (list[Tensor]): Box energies / deltas for all | |
scale levels, each is a 4D-tensor, has shape | |
(batch_size, num_priors * 4, H, W). | |
score_factors (list[Tensor], optional): Score factor for | |
all scale level, each is a 4D-tensor, has shape | |
(batch_size, num_priors * 1, H, W). Defaults to None. | |
batch_img_metas (list[dict], Optional): Batch image meta info. | |
Defaults to None. | |
cfg (ConfigDict, optional): Test / postprocessing | |
configuration, if None, test_cfg would be used. | |
Defaults to None. | |
rescale (bool): If True, return boxes in original image space. | |
Defaults to False. | |
with_nms (bool): If True, do nms before return boxes. | |
Defaults to True. | |
Returns: | |
list[:obj:`InstanceData`]: Object detection results of each image | |
after the post process. Each item usually contains following keys. | |
- scores (Tensor): Classification scores, has a shape | |
(num_instance, ) | |
- labels (Tensor): Labels of bboxes, has a shape | |
(num_instances, ). | |
- bboxes (Tensor): Has a shape (num_instances, 4), | |
the last dimension 4 arrange as (x1, y1, x2, y2). | |
""" | |
assert len(cls_scores) == len(bbox_preds) | |
if score_factors is None: | |
# e.g. Retina, FreeAnchor, Foveabox, etc. | |
with_score_factors = False | |
else: | |
# e.g. FCOS, PAA, ATSS, AutoAssign, etc. | |
with_score_factors = True | |
assert len(cls_scores) == len(score_factors) | |
num_levels = len(cls_scores) | |
featmap_sizes = [cls_scores[i].shape[-2:] for i in range(num_levels)] | |
mlvl_priors = self.prior_generator.grid_priors( | |
featmap_sizes, | |
dtype=cls_scores[0].dtype, | |
device=cls_scores[0].device) | |
result_list = [] | |
for img_id in range(len(batch_img_metas)): | |
img_meta = batch_img_metas[img_id] | |
cls_score_list = select_single_mlvl( | |
cls_scores, img_id, detach=True) | |
bbox_pred_list = select_single_mlvl( | |
bbox_preds, img_id, detach=True) | |
if with_score_factors: | |
score_factor_list = select_single_mlvl( | |
score_factors, img_id, detach=True) | |
else: | |
score_factor_list = [None for _ in range(num_levels)] | |
results = self._predict_by_feat_single( | |
cls_score_list=cls_score_list, | |
bbox_pred_list=bbox_pred_list, | |
score_factor_list=score_factor_list, | |
mlvl_priors=mlvl_priors, | |
img_meta=img_meta, | |
cfg=cfg, | |
rescale=rescale, | |
with_nms=with_nms) | |
result_list.append(results) | |
return result_list | |
def _predict_by_feat_single(self, | |
cls_score_list: List[Tensor], | |
bbox_pred_list: List[Tensor], | |
score_factor_list: List[Tensor], | |
mlvl_priors: List[Tensor], | |
img_meta: dict, | |
cfg: ConfigDict, | |
rescale: bool = False, | |
with_nms: bool = True) -> InstanceData: | |
"""Transform a single image's features extracted from the head into | |
bbox results. | |
Args: | |
cls_score_list (list[Tensor]): Box scores from all scale | |
levels of a single image, each item has shape | |
(num_priors * num_classes, H, W). | |
bbox_pred_list (list[Tensor]): Box energies / deltas from | |
all scale levels of a single image, each item has shape | |
(num_priors * 4, H, W). | |
score_factor_list (list[Tensor]): Score factor from all scale | |
levels of a single image, each item has shape | |
(num_priors * 1, H, W). | |
mlvl_priors (list[Tensor]): Each element in the list is | |
the priors of a single level in feature pyramid. In all | |
anchor-based methods, it has shape (num_priors, 4). In | |
all anchor-free methods, it has shape (num_priors, 2) | |
when `with_stride=True`, otherwise it still has shape | |
(num_priors, 4). | |
img_meta (dict): Image meta info. | |
cfg (mmengine.Config): Test / postprocessing configuration, | |
if None, test_cfg would be used. | |
rescale (bool): If True, return boxes in original image space. | |
Defaults to False. | |
with_nms (bool): If True, do nms before return boxes. | |
Defaults to True. | |
Returns: | |
:obj:`InstanceData`: Detection results of each image | |
after the post process. | |
Each item usually contains following keys. | |
- scores (Tensor): Classification scores, has a shape | |
(num_instance, ) | |
- labels (Tensor): Labels of bboxes, has a shape | |
(num_instances, ). | |
- bboxes (Tensor): Has a shape (num_instances, 4), | |
the last dimension 4 arrange as (x1, y1, x2, y2). | |
""" | |
if score_factor_list[0] is None: | |
# e.g. Retina, FreeAnchor, etc. | |
with_score_factors = False | |
else: | |
# e.g. FCOS, PAA, ATSS, etc. | |
with_score_factors = True | |
cfg = self.test_cfg if cfg is None else cfg | |
cfg = copy.deepcopy(cfg) | |
img_shape = img_meta['img_shape'] | |
nms_pre = cfg.get('nms_pre', -1) | |
mlvl_bbox_preds = [] | |
mlvl_valid_priors = [] | |
mlvl_scores = [] | |
mlvl_labels = [] | |
if with_score_factors: | |
mlvl_score_factors = [] | |
else: | |
mlvl_score_factors = None | |
for level_idx, (cls_score, bbox_pred, score_factor, priors) in \ | |
enumerate(zip(cls_score_list, bbox_pred_list, | |
score_factor_list, mlvl_priors)): | |
assert cls_score.size()[-2:] == bbox_pred.size()[-2:] | |
dim = self.bbox_coder.encode_size | |
bbox_pred = bbox_pred.permute(1, 2, 0).reshape(-1, dim) | |
if with_score_factors: | |
score_factor = score_factor.permute(1, 2, | |
0).reshape(-1).sigmoid() | |
cls_score = cls_score.permute(1, 2, | |
0).reshape(-1, self.cls_out_channels) | |
if self.use_sigmoid_cls: | |
scores = cls_score.sigmoid() | |
else: | |
# remind that we set FG labels to [0, num_class-1] | |
# since mmdet v2.0 | |
# BG cat_id: num_class | |
scores = cls_score.softmax(-1)[:, :-1] | |
# After https://github.com/open-mmlab/mmdetection/pull/6268/, | |
# this operation keeps fewer bboxes under the same `nms_pre`. | |
# There is no difference in performance for most models. If you | |
# find a slight drop in performance, you can set a larger | |
# `nms_pre` than before. | |
score_thr = cfg.get('score_thr', 0) | |
results = filter_scores_and_topk( | |
scores, score_thr, nms_pre, | |
dict(bbox_pred=bbox_pred, priors=priors)) | |
scores, labels, keep_idxs, filtered_results = results | |
bbox_pred = filtered_results['bbox_pred'] | |
priors = filtered_results['priors'] | |
if with_score_factors: | |
score_factor = score_factor[keep_idxs] | |
mlvl_bbox_preds.append(bbox_pred) | |
mlvl_valid_priors.append(priors) | |
mlvl_scores.append(scores) | |
mlvl_labels.append(labels) | |
if with_score_factors: | |
mlvl_score_factors.append(score_factor) | |
bbox_pred = torch.cat(mlvl_bbox_preds) | |
priors = cat_boxes(mlvl_valid_priors) | |
bboxes = self.bbox_coder.decode(priors, bbox_pred, max_shape=img_shape) | |
results = InstanceData() | |
results.bboxes = bboxes | |
results.scores = torch.cat(mlvl_scores) | |
results.labels = torch.cat(mlvl_labels) | |
if with_score_factors: | |
results.score_factors = torch.cat(mlvl_score_factors) | |
return self._bbox_post_process( | |
results=results, | |
cfg=cfg, | |
rescale=rescale, | |
with_nms=with_nms, | |
img_meta=img_meta) | |
def _bbox_post_process(self, | |
results: InstanceData, | |
cfg: ConfigDict, | |
rescale: bool = False, | |
with_nms: bool = True, | |
img_meta: Optional[dict] = None) -> InstanceData: | |
"""bbox post-processing method. | |
The boxes would be rescaled to the original image scale and do | |
the nms operation. Usually `with_nms` is False is used for aug test. | |
Args: | |
results (:obj:`InstaceData`): Detection instance results, | |
each item has shape (num_bboxes, ). | |
cfg (ConfigDict): Test / postprocessing configuration, | |
if None, test_cfg would be used. | |
rescale (bool): If True, return boxes in original image space. | |
Default to False. | |
with_nms (bool): If True, do nms before return boxes. | |
Default to True. | |
img_meta (dict, optional): Image meta info. Defaults to None. | |
Returns: | |
:obj:`InstanceData`: Detection results of each image | |
after the post process. | |
Each item usually contains following keys. | |
- scores (Tensor): Classification scores, has a shape | |
(num_instance, ) | |
- labels (Tensor): Labels of bboxes, has a shape | |
(num_instances, ). | |
- bboxes (Tensor): Has a shape (num_instances, 4), | |
the last dimension 4 arrange as (x1, y1, x2, y2). | |
""" | |
if rescale: | |
assert img_meta.get('scale_factor') is not None | |
scale_factor = [1 / s for s in img_meta['scale_factor']] | |
results.bboxes = scale_boxes(results.bboxes, scale_factor) | |
if hasattr(results, 'score_factors'): | |
# TODO: Add sqrt operation in order to be consistent with | |
# the paper. | |
score_factors = results.pop('score_factors') | |
results.scores = results.scores * score_factors | |
# filter small size bboxes | |
if cfg.get('min_bbox_size', -1) >= 0: | |
w, h = get_box_wh(results.bboxes) | |
valid_mask = (w > cfg.min_bbox_size) & (h > cfg.min_bbox_size) | |
if not valid_mask.all(): | |
results = results[valid_mask] | |
# TODO: deal with `with_nms` and `nms_cfg=None` in test_cfg | |
if with_nms and results.bboxes.numel() > 0: | |
bboxes = get_box_tensor(results.bboxes) | |
det_bboxes, keep_idxs = batched_nms(bboxes, results.scores, | |
results.labels, cfg.nms) | |
results = results[keep_idxs] | |
# some nms would reweight the score, such as softnms | |
results.scores = det_bboxes[:, -1] | |
results = results[:cfg.max_per_img] | |
return results | |
def aug_test(self, | |
aug_batch_feats, | |
aug_batch_img_metas, | |
rescale=False, | |
with_ori_nms=False, | |
**kwargs): | |
"""Test function with test time augmentation. | |
Args: | |
aug_batch_feats (list[tuple[Tensor]]): The outer list | |
indicates test-time augmentations and inner tuple | |
indicate the multi-level feats from | |
FPN, each Tensor should have a shape (B, C, H, W), | |
aug_batch_img_metas (list[list[dict]]): Meta information | |
of images under the different test-time augs | |
(multiscale, flip, etc.). The outer list indicate | |
the | |
rescale (bool, optional): Whether to rescale the results. | |
Defaults to False. | |
with_ori_nms (bool): Whether execute the nms in original head. | |
Defaults to False. It will be `True` when the head is | |
adopted as `rpn_head`. | |
Returns: | |
list(obj:`InstanceData`): Detection results of the | |
input images. Each item usually contains\ | |
following keys. | |
- scores (Tensor): Classification scores, has a shape | |
(num_instance,) | |
- labels (Tensor): Labels of bboxes, has a shape | |
(num_instances,). | |
- bboxes (Tensor): Has a shape (num_instances, 4), | |
the last dimension 4 arrange as (x1, y1, x2, y2). | |
""" | |
# TODO: remove this for detr and deformdetr | |
sig_of_get_results = signature(self.get_results) | |
get_results_args = [ | |
p.name for p in sig_of_get_results.parameters.values() | |
] | |
get_results_single_sig = signature(self._get_results_single) | |
get_results_single_sig_args = [ | |
p.name for p in get_results_single_sig.parameters.values() | |
] | |
assert ('with_nms' in get_results_args) and \ | |
('with_nms' in get_results_single_sig_args), \ | |
f'{self.__class__.__name__}' \ | |
'does not support test-time augmentation ' | |
num_imgs = len(aug_batch_img_metas[0]) | |
aug_batch_results = [] | |
for x, img_metas in zip(aug_batch_feats, aug_batch_img_metas): | |
outs = self.forward(x) | |
batch_instance_results = self.get_results( | |
*outs, | |
img_metas=img_metas, | |
cfg=self.test_cfg, | |
rescale=False, | |
with_nms=with_ori_nms, | |
**kwargs) | |
aug_batch_results.append(batch_instance_results) | |
# after merging, bboxes will be rescaled to the original image | |
batch_results = merge_aug_results(aug_batch_results, | |
aug_batch_img_metas) | |
final_results = [] | |
for img_id in range(num_imgs): | |
results = batch_results[img_id] | |
det_bboxes, keep_idxs = batched_nms(results.bboxes, results.scores, | |
results.labels, | |
self.test_cfg.nms) | |
results = results[keep_idxs] | |
# some nms operation may reweight the score such as softnms | |
results.scores = det_bboxes[:, -1] | |
results = results[:self.test_cfg.max_per_img] | |
if rescale: | |
# all results have been mapped to the original scale | |
# in `merge_aug_results`, so just pass | |
pass | |
else: | |
# map to the first aug image scale | |
scale_factor = results.bboxes.new_tensor( | |
aug_batch_img_metas[0][img_id]['scale_factor']) | |
results.bboxes = \ | |
results.bboxes * scale_factor | |
final_results.append(results) | |
return final_results | |