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# Copyright (c) OpenMMLab. All rights reserved.
import copy
import torch
import torch.nn as nn
import torch.nn.functional as F
from mmcv.cnn import ConvModule
from mmcv.ops import batched_nms
from ..builder import HEADS
from .anchor_head import AnchorHead
@HEADS.register_module()
class RPNHead(AnchorHead):
"""RPN head.
Args:
in_channels (int): Number of channels in the input feature map.
init_cfg (dict or list[dict], optional): Initialization config dict.
num_convs (int): Number of convolution layers in the head. Default 1.
""" # noqa: W605
def __init__(self,
in_channels,
init_cfg=dict(type='Normal', layer='Conv2d', std=0.01),
num_convs=1,
**kwargs):
self.num_convs = num_convs
super(RPNHead, self).__init__(
1, in_channels, init_cfg=init_cfg, **kwargs)
def _init_layers(self):
"""Initialize layers of the head."""
if self.num_convs > 1:
rpn_convs = []
for i in range(self.num_convs):
if i == 0:
in_channels = self.in_channels
else:
in_channels = self.feat_channels
# use ``inplace=False`` to avoid error: one of the variables
# needed for gradient computation has been modified by an
# inplace operation.
rpn_convs.append(
ConvModule(
in_channels,
self.feat_channels,
3,
padding=1,
inplace=False))
self.rpn_conv = nn.Sequential(*rpn_convs)
else:
self.rpn_conv = nn.Conv2d(
self.in_channels, self.feat_channels, 3, padding=1)
self.rpn_cls = nn.Conv2d(self.feat_channels,
self.num_base_priors * self.cls_out_channels,
1)
self.rpn_reg = nn.Conv2d(self.feat_channels, self.num_base_priors * 4,
1)
def forward_single(self, x):
"""Forward feature map of a single scale level."""
x = self.rpn_conv(x)
x = F.relu(x, inplace=False)
rpn_cls_score = self.rpn_cls(x)
rpn_bbox_pred = self.rpn_reg(x)
return rpn_cls_score, rpn_bbox_pred
def loss(self,
cls_scores,
bbox_preds,
gt_bboxes,
img_metas,
gt_bboxes_ignore=None):
"""Compute losses of the head.
Args:
cls_scores (list[Tensor]): Box scores for each scale level
Has shape (N, num_anchors * num_classes, H, W)
bbox_preds (list[Tensor]): Box energies / deltas for each scale
level with shape (N, num_anchors * 4, H, W)
gt_bboxes (list[Tensor]): Ground truth bboxes for each image with
shape (num_gts, 4) in [tl_x, tl_y, br_x, br_y] format.
img_metas (list[dict]): Meta information of each image, e.g.,
image size, scaling factor, etc.
gt_bboxes_ignore (None | list[Tensor]): specify which bounding
boxes can be ignored when computing the loss.
Returns:
dict[str, Tensor]: A dictionary of loss components.
"""
losses = super(RPNHead, self).loss(
cls_scores,
bbox_preds,
gt_bboxes,
None,
img_metas,
gt_bboxes_ignore=gt_bboxes_ignore)
return dict(
loss_rpn_cls=losses['loss_cls'], loss_rpn_bbox=losses['loss_bbox'])
def _get_bboxes_single(self,
cls_score_list,
bbox_pred_list,
score_factor_list,
mlvl_anchors,
img_meta,
cfg,
rescale=False,
with_nms=True,
**kwargs):
"""Transform outputs of a single image into bbox predictions.
Args:
cls_score_list (list[Tensor]): Box scores from all scale
levels of a single image, each item has shape
(num_anchors * 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_anchors * 4, H, W).
score_factor_list (list[Tensor]): Score factor from all scale
levels of a single image. RPN head does not need this value.
mlvl_anchors (list[Tensor]): Anchors of all scale level
each item has shape (num_anchors, 4).
img_meta (dict): Image meta info.
cfg (mmcv.Config): Test / postprocessing configuration,
if None, test_cfg would be used.
rescale (bool): If True, return boxes in original image space.
Default: False.
with_nms (bool): If True, do nms before return boxes.
Default: True.
Returns:
Tensor: Labeled boxes in shape (n, 5), where the first 4 columns
are bounding box positions (tl_x, tl_y, br_x, br_y) and the
5-th column is a score between 0 and 1.
"""
cfg = self.test_cfg if cfg is None else cfg
cfg = copy.deepcopy(cfg)
img_shape = img_meta['img_shape']
# bboxes from different level should be independent during NMS,
# level_ids are used as labels for batched NMS to separate them
level_ids = []
mlvl_scores = []
mlvl_bbox_preds = []
mlvl_valid_anchors = []
nms_pre = cfg.get('nms_pre', -1)
for level_idx in range(len(cls_score_list)):
rpn_cls_score = cls_score_list[level_idx]
rpn_bbox_pred = bbox_pred_list[level_idx]
assert rpn_cls_score.size()[-2:] == rpn_bbox_pred.size()[-2:]
rpn_cls_score = rpn_cls_score.permute(1, 2, 0)
if self.use_sigmoid_cls:
rpn_cls_score = rpn_cls_score.reshape(-1)
scores = rpn_cls_score.sigmoid()
else:
rpn_cls_score = rpn_cls_score.reshape(-1, 2)
# We set FG labels to [0, num_class-1] and BG label to
# num_class in RPN head since mmdet v2.5, which is unified to
# be consistent with other head since mmdet v2.0. In mmdet v2.0
# to v2.4 we keep BG label as 0 and FG label as 1 in rpn head.
scores = rpn_cls_score.softmax(dim=1)[:, 0]
rpn_bbox_pred = rpn_bbox_pred.permute(1, 2, 0).reshape(-1, 4)
anchors = mlvl_anchors[level_idx]
if 0 < nms_pre < scores.shape[0]:
# sort is faster than topk
# _, topk_inds = scores.topk(cfg.nms_pre)
ranked_scores, rank_inds = scores.sort(descending=True)
topk_inds = rank_inds[:nms_pre]
scores = ranked_scores[:nms_pre]
rpn_bbox_pred = rpn_bbox_pred[topk_inds, :]
anchors = anchors[topk_inds, :]
mlvl_scores.append(scores)
mlvl_bbox_preds.append(rpn_bbox_pred)
mlvl_valid_anchors.append(anchors)
level_ids.append(
scores.new_full((scores.size(0), ),
level_idx,
dtype=torch.long))
return self._bbox_post_process(mlvl_scores, mlvl_bbox_preds,
mlvl_valid_anchors, level_ids, cfg,
img_shape)
def _bbox_post_process(self, mlvl_scores, mlvl_bboxes, mlvl_valid_anchors,
level_ids, cfg, img_shape, **kwargs):
"""bbox post-processing method.
Do the nms operation for bboxes in same level.
Args:
mlvl_scores (list[Tensor]): Box scores from all scale
levels of a single image, each item has shape
(num_bboxes, ).
mlvl_bboxes (list[Tensor]): Decoded bboxes from all scale
levels of a single image, each item has shape (num_bboxes, 4).
mlvl_valid_anchors (list[Tensor]): Anchors of all scale level
each item has shape (num_bboxes, 4).
level_ids (list[Tensor]): Indexes from all scale levels of a
single image, each item has shape (num_bboxes, ).
cfg (mmcv.Config): Test / postprocessing configuration,
if None, `self.test_cfg` would be used.
img_shape (tuple(int)): The shape of model's input image.
Returns:
Tensor: Labeled boxes in shape (n, 5), where the first 4 columns
are bounding box positions (tl_x, tl_y, br_x, br_y) and the
5-th column is a score between 0 and 1.
"""
scores = torch.cat(mlvl_scores)
anchors = torch.cat(mlvl_valid_anchors)
rpn_bbox_pred = torch.cat(mlvl_bboxes)
proposals = self.bbox_coder.decode(
anchors, rpn_bbox_pred, max_shape=img_shape)
ids = torch.cat(level_ids)
if cfg.min_bbox_size >= 0:
w = proposals[:, 2] - proposals[:, 0]
h = proposals[:, 3] - proposals[:, 1]
valid_mask = (w > cfg.min_bbox_size) & (h > cfg.min_bbox_size)
if not valid_mask.all():
proposals = proposals[valid_mask]
scores = scores[valid_mask]
ids = ids[valid_mask]
if proposals.numel() > 0:
dets, _ = batched_nms(proposals, scores, ids, cfg.nms)
else:
return proposals.new_zeros(0, 5)
return dets[:cfg.max_per_img]
def onnx_export(self, x, img_metas):
"""Test without augmentation.
Args:
x (tuple[Tensor]): Features from the upstream network, each is
a 4D-tensor.
img_metas (list[dict]): Meta info of each image.
Returns:
Tensor: dets of shape [N, num_det, 5].
"""
cls_scores, bbox_preds = self(x)
assert len(cls_scores) == len(bbox_preds)
batch_bboxes, batch_scores = super(RPNHead, self).onnx_export(
cls_scores, bbox_preds, img_metas=img_metas, with_nms=False)
# Use ONNX::NonMaxSuppression in deployment
from mmdet.core.export import add_dummy_nms_for_onnx
cfg = copy.deepcopy(self.test_cfg)
score_threshold = cfg.nms.get('score_thr', 0.0)
nms_pre = cfg.get('deploy_nms_pre', -1)
# Different from the normal forward doing NMS level by level,
# we do NMS across all levels when exporting ONNX.
dets, _ = add_dummy_nms_for_onnx(batch_bboxes, batch_scores,
cfg.max_per_img,
cfg.nms.iou_threshold,
score_threshold, nms_pre,
cfg.max_per_img)
return dets