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# Copyright (c) Facebook, Inc. and its affiliates. | |
import inspect | |
import logging | |
import numpy as np | |
from typing import Dict, List, Optional, Tuple | |
import torch | |
from torch import nn | |
from detectron2.config import configurable | |
from detectron2.layers import ShapeSpec, nonzero_tuple | |
from detectron2.structures import Boxes, ImageList, Instances, pairwise_iou | |
from detectron2.utils.events import get_event_storage | |
from detectron2.utils.registry import Registry | |
from ..backbone.resnet import BottleneckBlock, ResNet | |
from ..matcher import Matcher | |
from ..poolers import ROIPooler | |
from ..proposal_generator.proposal_utils import add_ground_truth_to_proposals | |
from ..sampling import subsample_labels | |
from .box_head import build_box_head | |
from .fast_rcnn import FastRCNNOutputLayers | |
from .keypoint_head import build_keypoint_head | |
from .mask_head import build_mask_head | |
ROI_HEADS_REGISTRY = Registry("ROI_HEADS") | |
ROI_HEADS_REGISTRY.__doc__ = """ | |
Registry for ROI heads in a generalized R-CNN model. | |
ROIHeads take feature maps and region proposals, and | |
perform per-region computation. | |
The registered object will be called with `obj(cfg, input_shape)`. | |
The call is expected to return an :class:`ROIHeads`. | |
""" | |
logger = logging.getLogger(__name__) | |
def build_roi_heads(cfg, input_shape): | |
""" | |
Build ROIHeads defined by `cfg.MODEL.ROI_HEADS.NAME`. | |
""" | |
name = cfg.MODEL.ROI_HEADS.NAME | |
return ROI_HEADS_REGISTRY.get(name)(cfg, input_shape) | |
def select_foreground_proposals( | |
proposals: List[Instances], bg_label: int | |
) -> Tuple[List[Instances], List[torch.Tensor]]: | |
""" | |
Given a list of N Instances (for N images), each containing a `gt_classes` field, | |
return a list of Instances that contain only instances with `gt_classes != -1 && | |
gt_classes != bg_label`. | |
Args: | |
proposals (list[Instances]): A list of N Instances, where N is the number of | |
images in the batch. | |
bg_label: label index of background class. | |
Returns: | |
list[Instances]: N Instances, each contains only the selected foreground instances. | |
list[Tensor]: N boolean vector, correspond to the selection mask of | |
each Instances object. True for selected instances. | |
""" | |
assert isinstance(proposals, (list, tuple)) | |
assert isinstance(proposals[0], Instances) | |
assert proposals[0].has("gt_classes") | |
fg_proposals = [] | |
fg_selection_masks = [] | |
for proposals_per_image in proposals: | |
gt_classes = proposals_per_image.gt_classes | |
fg_selection_mask = (gt_classes != -1) & (gt_classes != bg_label) | |
fg_idxs = fg_selection_mask.nonzero().squeeze(1) | |
fg_proposals.append(proposals_per_image[fg_idxs]) | |
fg_selection_masks.append(fg_selection_mask) | |
return fg_proposals, fg_selection_masks | |
def select_proposals_with_visible_keypoints(proposals: List[Instances]) -> List[Instances]: | |
""" | |
Args: | |
proposals (list[Instances]): a list of N Instances, where N is the | |
number of images. | |
Returns: | |
proposals: only contains proposals with at least one visible keypoint. | |
Note that this is still slightly different from Detectron. | |
In Detectron, proposals for training keypoint head are re-sampled from | |
all the proposals with IOU>threshold & >=1 visible keypoint. | |
Here, the proposals are first sampled from all proposals with | |
IOU>threshold, then proposals with no visible keypoint are filtered out. | |
This strategy seems to make no difference on Detectron and is easier to implement. | |
""" | |
ret = [] | |
all_num_fg = [] | |
for proposals_per_image in proposals: | |
# If empty/unannotated image (hard negatives), skip filtering for train | |
if len(proposals_per_image) == 0: | |
ret.append(proposals_per_image) | |
continue | |
gt_keypoints = proposals_per_image.gt_keypoints.tensor | |
# #fg x K x 3 | |
vis_mask = gt_keypoints[:, :, 2] >= 1 | |
xs, ys = gt_keypoints[:, :, 0], gt_keypoints[:, :, 1] | |
proposal_boxes = proposals_per_image.proposal_boxes.tensor.unsqueeze(dim=1) # #fg x 1 x 4 | |
kp_in_box = ( | |
(xs >= proposal_boxes[:, :, 0]) | |
& (xs <= proposal_boxes[:, :, 2]) | |
& (ys >= proposal_boxes[:, :, 1]) | |
& (ys <= proposal_boxes[:, :, 3]) | |
) | |
selection = (kp_in_box & vis_mask).any(dim=1) | |
selection_idxs = nonzero_tuple(selection)[0] | |
all_num_fg.append(selection_idxs.numel()) | |
ret.append(proposals_per_image[selection_idxs]) | |
storage = get_event_storage() | |
storage.put_scalar("keypoint_head/num_fg_samples", np.mean(all_num_fg)) | |
return ret | |
class ROIHeads(torch.nn.Module): | |
""" | |
ROIHeads perform all per-region computation in an R-CNN. | |
It typically contains logic to | |
1. (in training only) match proposals with ground truth and sample them | |
2. crop the regions and extract per-region features using proposals | |
3. make per-region predictions with different heads | |
It can have many variants, implemented as subclasses of this class. | |
This base class contains the logic to match/sample proposals. | |
But it is not necessary to inherit this class if the sampling logic is not needed. | |
""" | |
def __init__( | |
self, | |
*, | |
num_classes, | |
batch_size_per_image, | |
positive_fraction, | |
proposal_matcher, | |
proposal_append_gt=True, | |
): | |
""" | |
NOTE: this interface is experimental. | |
Args: | |
num_classes (int): number of foreground classes (i.e. background is not included) | |
batch_size_per_image (int): number of proposals to sample for training | |
positive_fraction (float): fraction of positive (foreground) proposals | |
to sample for training. | |
proposal_matcher (Matcher): matcher that matches proposals and ground truth | |
proposal_append_gt (bool): whether to include ground truth as proposals as well | |
""" | |
super().__init__() | |
self.batch_size_per_image = batch_size_per_image | |
self.positive_fraction = positive_fraction | |
self.num_classes = num_classes | |
self.proposal_matcher = proposal_matcher | |
self.proposal_append_gt = proposal_append_gt | |
def from_config(cls, cfg): | |
return { | |
"batch_size_per_image": cfg.MODEL.ROI_HEADS.BATCH_SIZE_PER_IMAGE, | |
"positive_fraction": cfg.MODEL.ROI_HEADS.POSITIVE_FRACTION, | |
"num_classes": cfg.MODEL.ROI_HEADS.NUM_CLASSES, | |
"proposal_append_gt": cfg.MODEL.ROI_HEADS.PROPOSAL_APPEND_GT, | |
# Matcher to assign box proposals to gt boxes | |
"proposal_matcher": Matcher( | |
cfg.MODEL.ROI_HEADS.IOU_THRESHOLDS, | |
cfg.MODEL.ROI_HEADS.IOU_LABELS, | |
allow_low_quality_matches=False, | |
), | |
} | |
def _sample_proposals( | |
self, matched_idxs: torch.Tensor, matched_labels: torch.Tensor, gt_classes: torch.Tensor | |
) -> Tuple[torch.Tensor, torch.Tensor]: | |
""" | |
Based on the matching between N proposals and M groundtruth, | |
sample the proposals and set their classification labels. | |
Args: | |
matched_idxs (Tensor): a vector of length N, each is the best-matched | |
gt index in [0, M) for each proposal. | |
matched_labels (Tensor): a vector of length N, the matcher's label | |
(one of cfg.MODEL.ROI_HEADS.IOU_LABELS) for each proposal. | |
gt_classes (Tensor): a vector of length M. | |
Returns: | |
Tensor: a vector of indices of sampled proposals. Each is in [0, N). | |
Tensor: a vector of the same length, the classification label for | |
each sampled proposal. Each sample is labeled as either a category in | |
[0, num_classes) or the background (num_classes). | |
""" | |
has_gt = gt_classes.numel() > 0 | |
# Get the corresponding GT for each proposal | |
if has_gt: | |
gt_classes = gt_classes[matched_idxs] | |
# Label unmatched proposals (0 label from matcher) as background (label=num_classes) | |
gt_classes[matched_labels == 0] = self.num_classes | |
# Label ignore proposals (-1 label) | |
gt_classes[matched_labels == -1] = -1 | |
else: | |
gt_classes = torch.zeros_like(matched_idxs) + self.num_classes | |
sampled_fg_idxs, sampled_bg_idxs = subsample_labels( | |
gt_classes, self.batch_size_per_image, self.positive_fraction, self.num_classes | |
) | |
sampled_idxs = torch.cat([sampled_fg_idxs, sampled_bg_idxs], dim=0) | |
return sampled_idxs, gt_classes[sampled_idxs] | |
def label_and_sample_proposals( | |
self, proposals: List[Instances], targets: List[Instances] | |
) -> List[Instances]: | |
""" | |
Prepare some proposals to be used to train the ROI heads. | |
It performs box matching between `proposals` and `targets`, and assigns | |
training labels to the proposals. | |
It returns ``self.batch_size_per_image`` random samples from proposals and groundtruth | |
boxes, with a fraction of positives that is no larger than | |
``self.positive_fraction``. | |
Args: | |
See :meth:`ROIHeads.forward` | |
Returns: | |
list[Instances]: | |
length `N` list of `Instances`s containing the proposals | |
sampled for training. Each `Instances` has the following fields: | |
- proposal_boxes: the proposal boxes | |
- gt_boxes: the ground-truth box that the proposal is assigned to | |
(this is only meaningful if the proposal has a label > 0; if label = 0 | |
then the ground-truth box is random) | |
Other fields such as "gt_classes", "gt_masks", that's included in `targets`. | |
""" | |
# Augment proposals with ground-truth boxes. | |
# In the case of learned proposals (e.g., RPN), when training starts | |
# the proposals will be low quality due to random initialization. | |
# It's possible that none of these initial | |
# proposals have high enough overlap with the gt objects to be used | |
# as positive examples for the second stage components (box head, | |
# cls head, mask head). Adding the gt boxes to the set of proposals | |
# ensures that the second stage components will have some positive | |
# examples from the start of training. For RPN, this augmentation improves | |
# convergence and empirically improves box AP on COCO by about 0.5 | |
# points (under one tested configuration). | |
if self.proposal_append_gt: | |
proposals = add_ground_truth_to_proposals(targets, proposals) | |
proposals_with_gt = [] | |
num_fg_samples = [] | |
num_bg_samples = [] | |
for proposals_per_image, targets_per_image in zip(proposals, targets): | |
has_gt = len(targets_per_image) > 0 | |
match_quality_matrix = pairwise_iou( | |
targets_per_image.gt_boxes, proposals_per_image.proposal_boxes | |
) | |
matched_idxs, matched_labels = self.proposal_matcher(match_quality_matrix) | |
sampled_idxs, gt_classes = self._sample_proposals( | |
matched_idxs, matched_labels, targets_per_image.gt_classes | |
) | |
# Set target attributes of the sampled proposals: | |
proposals_per_image = proposals_per_image[sampled_idxs] | |
proposals_per_image.gt_classes = gt_classes | |
if has_gt: | |
sampled_targets = matched_idxs[sampled_idxs] | |
# We index all the attributes of targets that start with "gt_" | |
# and have not been added to proposals yet (="gt_classes"). | |
# NOTE: here the indexing waste some compute, because heads | |
# like masks, keypoints, etc, will filter the proposals again, | |
# (by foreground/background, or number of keypoints in the image, etc) | |
# so we essentially index the data twice. | |
for (trg_name, trg_value) in targets_per_image.get_fields().items(): | |
if trg_name.startswith("gt_") and not proposals_per_image.has(trg_name): | |
proposals_per_image.set(trg_name, trg_value[sampled_targets]) | |
# If no GT is given in the image, we don't know what a dummy gt value can be. | |
# Therefore the returned proposals won't have any gt_* fields, except for a | |
# gt_classes full of background label. | |
num_bg_samples.append((gt_classes == self.num_classes).sum().item()) | |
num_fg_samples.append(gt_classes.numel() - num_bg_samples[-1]) | |
proposals_with_gt.append(proposals_per_image) | |
# Log the number of fg/bg samples that are selected for training ROI heads | |
storage = get_event_storage() | |
storage.put_scalar("roi_head/num_fg_samples", np.mean(num_fg_samples)) | |
storage.put_scalar("roi_head/num_bg_samples", np.mean(num_bg_samples)) | |
return proposals_with_gt | |
def forward( | |
self, | |
images: ImageList, | |
features: Dict[str, torch.Tensor], | |
proposals: List[Instances], | |
targets: Optional[List[Instances]] = None, | |
) -> Tuple[List[Instances], Dict[str, torch.Tensor]]: | |
""" | |
Args: | |
images (ImageList): | |
features (dict[str,Tensor]): input data as a mapping from feature | |
map name to tensor. Axis 0 represents the number of images `N` in | |
the input data; axes 1-3 are channels, height, and width, which may | |
vary between feature maps (e.g., if a feature pyramid is used). | |
proposals (list[Instances]): length `N` list of `Instances`. The i-th | |
`Instances` contains object proposals for the i-th input image, | |
with fields "proposal_boxes" and "objectness_logits". | |
targets (list[Instances], optional): length `N` list of `Instances`. The i-th | |
`Instances` contains the ground-truth per-instance annotations | |
for the i-th input image. Specify `targets` during training only. | |
It may have the following fields: | |
- gt_boxes: the bounding box of each instance. | |
- gt_classes: the label for each instance with a category ranging in [0, #class]. | |
- gt_masks: PolygonMasks or BitMasks, the ground-truth masks of each instance. | |
- gt_keypoints: NxKx3, the groud-truth keypoints for each instance. | |
Returns: | |
list[Instances]: length `N` list of `Instances` containing the | |
detected instances. Returned during inference only; may be [] during training. | |
dict[str->Tensor]: | |
mapping from a named loss to a tensor storing the loss. Used during training only. | |
""" | |
raise NotImplementedError() | |
class Res5ROIHeads(ROIHeads): | |
""" | |
The ROIHeads in a typical "C4" R-CNN model, where | |
the box and mask head share the cropping and | |
the per-region feature computation by a Res5 block. | |
See :paper:`ResNet` Appendix A. | |
""" | |
def __init__( | |
self, | |
*, | |
in_features: List[str], | |
pooler: ROIPooler, | |
res5: nn.Module, | |
box_predictor: nn.Module, | |
mask_head: Optional[nn.Module] = None, | |
**kwargs, | |
): | |
""" | |
NOTE: this interface is experimental. | |
Args: | |
in_features (list[str]): list of backbone feature map names to use for | |
feature extraction | |
pooler (ROIPooler): pooler to extra region features from backbone | |
res5 (nn.Sequential): a CNN to compute per-region features, to be used by | |
``box_predictor`` and ``mask_head``. Typically this is a "res5" | |
block from a ResNet. | |
box_predictor (nn.Module): make box predictions from the feature. | |
Should have the same interface as :class:`FastRCNNOutputLayers`. | |
mask_head (nn.Module): transform features to make mask predictions | |
""" | |
super().__init__(**kwargs) | |
self.in_features = in_features | |
self.pooler = pooler | |
if isinstance(res5, (list, tuple)): | |
res5 = nn.Sequential(*res5) | |
self.res5 = res5 | |
self.box_predictor = box_predictor | |
self.mask_on = mask_head is not None | |
if self.mask_on: | |
self.mask_head = mask_head | |
def from_config(cls, cfg, input_shape): | |
# fmt: off | |
ret = super().from_config(cfg) | |
in_features = ret["in_features"] = cfg.MODEL.ROI_HEADS.IN_FEATURES | |
pooler_resolution = cfg.MODEL.ROI_BOX_HEAD.POOLER_RESOLUTION | |
pooler_type = cfg.MODEL.ROI_BOX_HEAD.POOLER_TYPE | |
pooler_scales = (1.0 / input_shape[in_features[0]].stride, ) | |
sampling_ratio = cfg.MODEL.ROI_BOX_HEAD.POOLER_SAMPLING_RATIO | |
mask_on = cfg.MODEL.MASK_ON | |
# fmt: on | |
assert not cfg.MODEL.KEYPOINT_ON | |
assert len(in_features) == 1 | |
ret["pooler"] = ROIPooler( | |
output_size=pooler_resolution, | |
scales=pooler_scales, | |
sampling_ratio=sampling_ratio, | |
pooler_type=pooler_type, | |
) | |
# Compatbility with old moco code. Might be useful. | |
# See notes in StandardROIHeads.from_config | |
if not inspect.ismethod(cls._build_res5_block): | |
logger.warning( | |
"The behavior of _build_res5_block may change. " | |
"Please do not depend on private methods." | |
) | |
cls._build_res5_block = classmethod(cls._build_res5_block) | |
ret["res5"], out_channels = cls._build_res5_block(cfg) | |
ret["box_predictor"] = FastRCNNOutputLayers( | |
cfg, ShapeSpec(channels=out_channels, height=1, width=1) | |
) | |
if mask_on: | |
ret["mask_head"] = build_mask_head( | |
cfg, | |
ShapeSpec(channels=out_channels, width=pooler_resolution, height=pooler_resolution), | |
) | |
return ret | |
def _build_res5_block(cls, cfg): | |
# fmt: off | |
stage_channel_factor = 2 ** 3 # res5 is 8x res2 | |
num_groups = cfg.MODEL.RESNETS.NUM_GROUPS | |
width_per_group = cfg.MODEL.RESNETS.WIDTH_PER_GROUP | |
bottleneck_channels = num_groups * width_per_group * stage_channel_factor | |
out_channels = cfg.MODEL.RESNETS.RES2_OUT_CHANNELS * stage_channel_factor | |
stride_in_1x1 = cfg.MODEL.RESNETS.STRIDE_IN_1X1 | |
norm = cfg.MODEL.RESNETS.NORM | |
assert not cfg.MODEL.RESNETS.DEFORM_ON_PER_STAGE[-1], \ | |
"Deformable conv is not yet supported in res5 head." | |
# fmt: on | |
blocks = ResNet.make_stage( | |
BottleneckBlock, | |
3, | |
stride_per_block=[2, 1, 1], | |
in_channels=out_channels // 2, | |
bottleneck_channels=bottleneck_channels, | |
out_channels=out_channels, | |
num_groups=num_groups, | |
norm=norm, | |
stride_in_1x1=stride_in_1x1, | |
) | |
return nn.Sequential(*blocks), out_channels | |
def _shared_roi_transform(self, features: List[torch.Tensor], boxes: List[Boxes]): | |
x = self.pooler(features, boxes) | |
return self.res5(x) | |
def forward( | |
self, | |
images: ImageList, | |
features: Dict[str, torch.Tensor], | |
proposals: List[Instances], | |
targets: Optional[List[Instances]] = None, | |
): | |
""" | |
See :meth:`ROIHeads.forward`. | |
""" | |
del images | |
if self.training: | |
assert targets | |
proposals = self.label_and_sample_proposals(proposals, targets) | |
del targets | |
proposal_boxes = [x.proposal_boxes for x in proposals] | |
box_features = self._shared_roi_transform( | |
[features[f] for f in self.in_features], proposal_boxes | |
) | |
predictions = self.box_predictor(box_features.mean(dim=[2, 3])) | |
if self.training: | |
del features | |
losses = self.box_predictor.losses(predictions, proposals) | |
if self.mask_on: | |
proposals, fg_selection_masks = select_foreground_proposals( | |
proposals, self.num_classes | |
) | |
# Since the ROI feature transform is shared between boxes and masks, | |
# we don't need to recompute features. The mask loss is only defined | |
# on foreground proposals, so we need to select out the foreground | |
# features. | |
mask_features = box_features[torch.cat(fg_selection_masks, dim=0)] | |
del box_features | |
losses.update(self.mask_head(mask_features, proposals)) | |
return [], losses | |
else: | |
pred_instances, _ = self.box_predictor.inference(predictions, proposals) | |
pred_instances = self.forward_with_given_boxes(features, pred_instances) | |
return pred_instances, {} | |
def forward_with_given_boxes( | |
self, features: Dict[str, torch.Tensor], instances: List[Instances] | |
) -> List[Instances]: | |
""" | |
Use the given boxes in `instances` to produce other (non-box) per-ROI outputs. | |
Args: | |
features: same as in `forward()` | |
instances (list[Instances]): instances to predict other outputs. Expect the keys | |
"pred_boxes" and "pred_classes" to exist. | |
Returns: | |
instances (Instances): | |
the same `Instances` object, with extra | |
fields such as `pred_masks` or `pred_keypoints`. | |
""" | |
assert not self.training | |
assert instances[0].has("pred_boxes") and instances[0].has("pred_classes") | |
if self.mask_on: | |
feature_list = [features[f] for f in self.in_features] | |
x = self._shared_roi_transform(feature_list, [x.pred_boxes for x in instances]) | |
return self.mask_head(x, instances) | |
else: | |
return instances | |
class StandardROIHeads(ROIHeads): | |
""" | |
It's "standard" in a sense that there is no ROI transform sharing | |
or feature sharing between tasks. | |
Each head independently processes the input features by each head's | |
own pooler and head. | |
This class is used by most models, such as FPN and C5. | |
To implement more models, you can subclass it and implement a different | |
:meth:`forward()` or a head. | |
""" | |
def __init__( | |
self, | |
*, | |
box_in_features: List[str], | |
box_pooler: ROIPooler, | |
box_head: nn.Module, | |
box_predictor: nn.Module, | |
mask_in_features: Optional[List[str]] = None, | |
mask_pooler: Optional[ROIPooler] = None, | |
mask_head: Optional[nn.Module] = None, | |
keypoint_in_features: Optional[List[str]] = None, | |
keypoint_pooler: Optional[ROIPooler] = None, | |
keypoint_head: Optional[nn.Module] = None, | |
train_on_pred_boxes: bool = False, | |
**kwargs, | |
): | |
""" | |
NOTE: this interface is experimental. | |
Args: | |
box_in_features (list[str]): list of feature names to use for the box head. | |
box_pooler (ROIPooler): pooler to extra region features for box head | |
box_head (nn.Module): transform features to make box predictions | |
box_predictor (nn.Module): make box predictions from the feature. | |
Should have the same interface as :class:`FastRCNNOutputLayers`. | |
mask_in_features (list[str]): list of feature names to use for the mask | |
pooler or mask head. None if not using mask head. | |
mask_pooler (ROIPooler): pooler to extract region features from image features. | |
The mask head will then take region features to make predictions. | |
If None, the mask head will directly take the dict of image features | |
defined by `mask_in_features` | |
mask_head (nn.Module): transform features to make mask predictions | |
keypoint_in_features, keypoint_pooler, keypoint_head: similar to ``mask_*``. | |
train_on_pred_boxes (bool): whether to use proposal boxes or | |
predicted boxes from the box head to train other heads. | |
""" | |
super().__init__(**kwargs) | |
# keep self.in_features for backward compatibility | |
self.in_features = self.box_in_features = box_in_features | |
self.box_pooler = box_pooler | |
self.box_head = box_head | |
self.box_predictor = box_predictor | |
self.mask_on = mask_in_features is not None | |
if self.mask_on: | |
self.mask_in_features = mask_in_features | |
self.mask_pooler = mask_pooler | |
self.mask_head = mask_head | |
self.keypoint_on = keypoint_in_features is not None | |
if self.keypoint_on: | |
self.keypoint_in_features = keypoint_in_features | |
self.keypoint_pooler = keypoint_pooler | |
self.keypoint_head = keypoint_head | |
self.train_on_pred_boxes = train_on_pred_boxes | |
def from_config(cls, cfg, input_shape): | |
ret = super().from_config(cfg) | |
ret["train_on_pred_boxes"] = cfg.MODEL.ROI_BOX_HEAD.TRAIN_ON_PRED_BOXES | |
# Subclasses that have not been updated to use from_config style construction | |
# may have overridden _init_*_head methods. In this case, those overridden methods | |
# will not be classmethods and we need to avoid trying to call them here. | |
# We test for this with ismethod which only returns True for bound methods of cls. | |
# Such subclasses will need to handle calling their overridden _init_*_head methods. | |
if inspect.ismethod(cls._init_box_head): | |
ret.update(cls._init_box_head(cfg, input_shape)) | |
if inspect.ismethod(cls._init_mask_head): | |
ret.update(cls._init_mask_head(cfg, input_shape)) | |
if inspect.ismethod(cls._init_keypoint_head): | |
ret.update(cls._init_keypoint_head(cfg, input_shape)) | |
return ret | |
def _init_box_head(cls, cfg, input_shape): | |
# fmt: off | |
in_features = cfg.MODEL.ROI_HEADS.IN_FEATURES | |
pooler_resolution = cfg.MODEL.ROI_BOX_HEAD.POOLER_RESOLUTION | |
pooler_scales = tuple(1.0 / input_shape[k].stride for k in in_features) | |
sampling_ratio = cfg.MODEL.ROI_BOX_HEAD.POOLER_SAMPLING_RATIO | |
pooler_type = cfg.MODEL.ROI_BOX_HEAD.POOLER_TYPE | |
# fmt: on | |
# If StandardROIHeads is applied on multiple feature maps (as in FPN), | |
# then we share the same predictors and therefore the channel counts must be the same | |
in_channels = [input_shape[f].channels for f in in_features] | |
# Check all channel counts are equal | |
assert len(set(in_channels)) == 1, in_channels | |
in_channels = in_channels[0] | |
box_pooler = ROIPooler( | |
output_size=pooler_resolution, | |
scales=pooler_scales, | |
sampling_ratio=sampling_ratio, | |
pooler_type=pooler_type, | |
) | |
# Here we split "box head" and "box predictor", which is mainly due to historical reasons. | |
# They are used together so the "box predictor" layers should be part of the "box head". | |
# New subclasses of ROIHeads do not need "box predictor"s. | |
box_head = build_box_head( | |
cfg, ShapeSpec(channels=in_channels, height=pooler_resolution, width=pooler_resolution) | |
) | |
box_predictor = FastRCNNOutputLayers(cfg, box_head.output_shape) | |
return { | |
"box_in_features": in_features, | |
"box_pooler": box_pooler, | |
"box_head": box_head, | |
"box_predictor": box_predictor, | |
} | |
def _init_mask_head(cls, cfg, input_shape): | |
if not cfg.MODEL.MASK_ON: | |
return {} | |
# fmt: off | |
in_features = cfg.MODEL.ROI_HEADS.IN_FEATURES | |
pooler_resolution = cfg.MODEL.ROI_MASK_HEAD.POOLER_RESOLUTION | |
pooler_scales = tuple(1.0 / input_shape[k].stride for k in in_features) | |
sampling_ratio = cfg.MODEL.ROI_MASK_HEAD.POOLER_SAMPLING_RATIO | |
pooler_type = cfg.MODEL.ROI_MASK_HEAD.POOLER_TYPE | |
# fmt: on | |
in_channels = [input_shape[f].channels for f in in_features][0] | |
ret = {"mask_in_features": in_features} | |
ret["mask_pooler"] = ( | |
ROIPooler( | |
output_size=pooler_resolution, | |
scales=pooler_scales, | |
sampling_ratio=sampling_ratio, | |
pooler_type=pooler_type, | |
) | |
if pooler_type | |
else None | |
) | |
if pooler_type: | |
shape = ShapeSpec( | |
channels=in_channels, width=pooler_resolution, height=pooler_resolution | |
) | |
else: | |
shape = {f: input_shape[f] for f in in_features} | |
ret["mask_head"] = build_mask_head(cfg, shape) | |
return ret | |
def _init_keypoint_head(cls, cfg, input_shape): | |
if not cfg.MODEL.KEYPOINT_ON: | |
return {} | |
# fmt: off | |
in_features = cfg.MODEL.ROI_HEADS.IN_FEATURES | |
pooler_resolution = cfg.MODEL.ROI_KEYPOINT_HEAD.POOLER_RESOLUTION | |
pooler_scales = tuple(1.0 / input_shape[k].stride for k in in_features) # noqa | |
sampling_ratio = cfg.MODEL.ROI_KEYPOINT_HEAD.POOLER_SAMPLING_RATIO | |
pooler_type = cfg.MODEL.ROI_KEYPOINT_HEAD.POOLER_TYPE | |
# fmt: on | |
in_channels = [input_shape[f].channels for f in in_features][0] | |
ret = {"keypoint_in_features": in_features} | |
ret["keypoint_pooler"] = ( | |
ROIPooler( | |
output_size=pooler_resolution, | |
scales=pooler_scales, | |
sampling_ratio=sampling_ratio, | |
pooler_type=pooler_type, | |
) | |
if pooler_type | |
else None | |
) | |
if pooler_type: | |
shape = ShapeSpec( | |
channels=in_channels, width=pooler_resolution, height=pooler_resolution | |
) | |
else: | |
shape = {f: input_shape[f] for f in in_features} | |
ret["keypoint_head"] = build_keypoint_head(cfg, shape) | |
return ret | |
def forward( | |
self, | |
images: ImageList, | |
features: Dict[str, torch.Tensor], | |
proposals: List[Instances], | |
targets: Optional[List[Instances]] = None, | |
) -> Tuple[List[Instances], Dict[str, torch.Tensor]]: | |
""" | |
See :class:`ROIHeads.forward`. | |
""" | |
del images | |
if self.training: | |
assert targets, "'targets' argument is required during training" | |
proposals = self.label_and_sample_proposals(proposals, targets) | |
del targets | |
if self.training: | |
losses = self._forward_box(features, proposals) | |
# Usually the original proposals used by the box head are used by the mask, keypoint | |
# heads. But when `self.train_on_pred_boxes is True`, proposals will contain boxes | |
# predicted by the box head. | |
losses.update(self._forward_mask(features, proposals)) | |
losses.update(self._forward_keypoint(features, proposals)) | |
return proposals, losses | |
else: | |
pred_instances = self._forward_box(features, proposals) | |
# During inference cascaded prediction is used: the mask and keypoints heads are only | |
# applied to the top scoring box detections. | |
pred_instances = self.forward_with_given_boxes(features, pred_instances) | |
return pred_instances, {} | |
def forward_with_given_boxes( | |
self, features: Dict[str, torch.Tensor], instances: List[Instances] | |
) -> List[Instances]: | |
""" | |
Use the given boxes in `instances` to produce other (non-box) per-ROI outputs. | |
This is useful for downstream tasks where a box is known, but need to obtain | |
other attributes (outputs of other heads). | |
Test-time augmentation also uses this. | |
Args: | |
features: same as in `forward()` | |
instances (list[Instances]): instances to predict other outputs. Expect the keys | |
"pred_boxes" and "pred_classes" to exist. | |
Returns: | |
list[Instances]: | |
the same `Instances` objects, with extra | |
fields such as `pred_masks` or `pred_keypoints`. | |
""" | |
assert not self.training | |
assert instances[0].has("pred_boxes") and instances[0].has("pred_classes") | |
instances = self._forward_mask(features, instances) | |
instances = self._forward_keypoint(features, instances) | |
return instances | |
def _forward_box(self, features: Dict[str, torch.Tensor], proposals: List[Instances]): | |
""" | |
Forward logic of the box prediction branch. If `self.train_on_pred_boxes is True`, | |
the function puts predicted boxes in the `proposal_boxes` field of `proposals` argument. | |
Args: | |
features (dict[str, Tensor]): mapping from feature map names to tensor. | |
Same as in :meth:`ROIHeads.forward`. | |
proposals (list[Instances]): the per-image object proposals with | |
their matching ground truth. | |
Each has fields "proposal_boxes", and "objectness_logits", | |
"gt_classes", "gt_boxes". | |
Returns: | |
In training, a dict of losses. | |
In inference, a list of `Instances`, the predicted instances. | |
""" | |
features = [features[f] for f in self.box_in_features] | |
box_features = self.box_pooler(features, [x.proposal_boxes for x in proposals]) | |
box_features = self.box_head(box_features) | |
predictions = self.box_predictor(box_features) | |
del box_features | |
if self.training: | |
losses = self.box_predictor.losses(predictions, proposals) | |
# proposals is modified in-place below, so losses must be computed first. | |
if self.train_on_pred_boxes: | |
with torch.no_grad(): | |
pred_boxes = self.box_predictor.predict_boxes_for_gt_classes( | |
predictions, proposals | |
) | |
for proposals_per_image, pred_boxes_per_image in zip(proposals, pred_boxes): | |
proposals_per_image.proposal_boxes = Boxes(pred_boxes_per_image) | |
return losses | |
else: | |
pred_instances, _ = self.box_predictor.inference(predictions, proposals) | |
return pred_instances | |
def _forward_mask(self, features: Dict[str, torch.Tensor], instances: List[Instances]): | |
""" | |
Forward logic of the mask prediction branch. | |
Args: | |
features (dict[str, Tensor]): mapping from feature map names to tensor. | |
Same as in :meth:`ROIHeads.forward`. | |
instances (list[Instances]): the per-image instances to train/predict masks. | |
In training, they can be the proposals. | |
In inference, they can be the boxes predicted by R-CNN box head. | |
Returns: | |
In training, a dict of losses. | |
In inference, update `instances` with new fields "pred_masks" and return it. | |
""" | |
if not self.mask_on: | |
return {} if self.training else instances | |
if self.training: | |
# head is only trained on positive proposals. | |
instances, _ = select_foreground_proposals(instances, self.num_classes) | |
if self.mask_pooler is not None: | |
features = [features[f] for f in self.mask_in_features] | |
boxes = [x.proposal_boxes if self.training else x.pred_boxes for x in instances] | |
features = self.mask_pooler(features, boxes) | |
else: | |
features = {f: features[f] for f in self.mask_in_features} | |
return self.mask_head(features, instances) | |
def _forward_keypoint(self, features: Dict[str, torch.Tensor], instances: List[Instances]): | |
""" | |
Forward logic of the keypoint prediction branch. | |
Args: | |
features (dict[str, Tensor]): mapping from feature map names to tensor. | |
Same as in :meth:`ROIHeads.forward`. | |
instances (list[Instances]): the per-image instances to train/predict keypoints. | |
In training, they can be the proposals. | |
In inference, they can be the boxes predicted by R-CNN box head. | |
Returns: | |
In training, a dict of losses. | |
In inference, update `instances` with new fields "pred_keypoints" and return it. | |
""" | |
if not self.keypoint_on: | |
return {} if self.training else instances | |
if self.training: | |
# head is only trained on positive proposals with >=1 visible keypoints. | |
instances, _ = select_foreground_proposals(instances, self.num_classes) | |
instances = select_proposals_with_visible_keypoints(instances) | |
if self.keypoint_pooler is not None: | |
features = [features[f] for f in self.keypoint_in_features] | |
boxes = [x.proposal_boxes if self.training else x.pred_boxes for x in instances] | |
features = self.keypoint_pooler(features, boxes) | |
else: | |
features = {f: features[f] for f in self.keypoint_in_features} | |
return self.keypoint_head(features, instances) | |