keypoint_rcnn.py 17.9 KB
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import torch
from torch import nn
from torchvision.ops import MultiScaleRoIAlign

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from ..._internally_replaced_utils import load_state_dict_from_url
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from ...ops import misc as misc_nn_ops
from ..resnet import resnet50
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from ._utils import overwrite_eps
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from .backbone_utils import _resnet_fpn_extractor, _validate_trainable_layers
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from .faster_rcnn import FasterRCNN
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__all__ = ["KeypointRCNN", "keypointrcnn_resnet50_fpn"]
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class KeypointRCNN(FasterRCNN):
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    """
    Implements Keypoint R-CNN.

    The input to the model is expected to be a list of tensors, each of shape [C, H, W], one for each
    image, and should be in 0-1 range. Different images can have different sizes.

    The behavior of the model changes depending if it is in training or evaluation mode.

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    During training, the model expects both the input tensors, as well as a targets (list of dictionary),
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    containing:
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        - boxes (``FloatTensor[N, 4]``): the ground-truth boxes in ``[x1, y1, x2, y2]`` format, with
            ``0 <= x1 < x2 <= W`` and ``0 <= y1 < y2 <= H``.
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        - labels (Int64Tensor[N]): the class label for each ground-truth box
        - keypoints (FloatTensor[N, K, 3]): the K keypoints location for each of the N instances, in the
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          format [x, y, visibility], where visibility=0 means that the keypoint is not visible.

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    The model returns a Dict[Tensor] during training, containing the classification and regression
    losses for both the RPN and the R-CNN, and the keypoint loss.

    During inference, the model requires only the input tensors, and returns the post-processed
    predictions as a List[Dict[Tensor]], one for each input image. The fields of the Dict are as
    follows:
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        - boxes (``FloatTensor[N, 4]``): the predicted boxes in ``[x1, y1, x2, y2]`` format, with
            ``0 <= x1 < x2 <= W`` and ``0 <= y1 < y2 <= H``.
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        - labels (Int64Tensor[N]): the predicted labels for each image
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        - scores (Tensor[N]): the scores or each prediction
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        - keypoints (FloatTensor[N, K, 3]): the locations of the predicted keypoints, in [x, y, v] format.
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    Args:
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        backbone (nn.Module): the network used to compute the features for the model.
            It should contain a out_channels attribute, which indicates the number of output
            channels that each feature map has (and it should be the same for all feature maps).
            The backbone should return a single Tensor or and OrderedDict[Tensor].
        num_classes (int): number of output classes of the model (including the background).
            If box_predictor is specified, num_classes should be None.
        min_size (int): minimum size of the image to be rescaled before feeding it to the backbone
        max_size (int): maximum size of the image to be rescaled before feeding it to the backbone
        image_mean (Tuple[float, float, float]): mean values used for input normalization.
            They are generally the mean values of the dataset on which the backbone has been trained
            on
        image_std (Tuple[float, float, float]): std values used for input normalization.
            They are generally the std values of the dataset on which the backbone has been trained on
        rpn_anchor_generator (AnchorGenerator): module that generates the anchors for a set of feature
            maps.
        rpn_head (nn.Module): module that computes the objectness and regression deltas from the RPN
        rpn_pre_nms_top_n_train (int): number of proposals to keep before applying NMS during training
        rpn_pre_nms_top_n_test (int): number of proposals to keep before applying NMS during testing
        rpn_post_nms_top_n_train (int): number of proposals to keep after applying NMS during training
        rpn_post_nms_top_n_test (int): number of proposals to keep after applying NMS during testing
        rpn_nms_thresh (float): NMS threshold used for postprocessing the RPN proposals
        rpn_fg_iou_thresh (float): minimum IoU between the anchor and the GT box so that they can be
            considered as positive during training of the RPN.
        rpn_bg_iou_thresh (float): maximum IoU between the anchor and the GT box so that they can be
            considered as negative during training of the RPN.
        rpn_batch_size_per_image (int): number of anchors that are sampled during training of the RPN
            for computing the loss
        rpn_positive_fraction (float): proportion of positive anchors in a mini-batch during training
            of the RPN
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        rpn_score_thresh (float): during inference, only return proposals with a classification score
            greater than rpn_score_thresh
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        box_roi_pool (MultiScaleRoIAlign): the module which crops and resizes the feature maps in
            the locations indicated by the bounding boxes
        box_head (nn.Module): module that takes the cropped feature maps as input
        box_predictor (nn.Module): module that takes the output of box_head and returns the
            classification logits and box regression deltas.
        box_score_thresh (float): during inference, only return proposals with a classification score
            greater than box_score_thresh
        box_nms_thresh (float): NMS threshold for the prediction head. Used during inference
        box_detections_per_img (int): maximum number of detections per image, for all classes.
        box_fg_iou_thresh (float): minimum IoU between the proposals and the GT box so that they can be
            considered as positive during training of the classification head
        box_bg_iou_thresh (float): maximum IoU between the proposals and the GT box so that they can be
            considered as negative during training of the classification head
        box_batch_size_per_image (int): number of proposals that are sampled during training of the
            classification head
        box_positive_fraction (float): proportion of positive proposals in a mini-batch during training
            of the classification head
        bbox_reg_weights (Tuple[float, float, float, float]): weights for the encoding/decoding of the
            bounding boxes
        keypoint_roi_pool (MultiScaleRoIAlign): the module which crops and resizes the feature maps in
             the locations indicated by the bounding boxes, which will be used for the keypoint head.
        keypoint_head (nn.Module): module that takes the cropped feature maps as input
        keypoint_predictor (nn.Module): module that takes the output of the keypoint_head and returns the
            heatmap logits

    Example::

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        >>> import torch
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        >>> import torchvision
        >>> from torchvision.models.detection import KeypointRCNN
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        >>> from torchvision.models.detection.anchor_utils import AnchorGenerator
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        >>>
        >>> # load a pre-trained model for classification and return
        >>> # only the features
        >>> backbone = torchvision.models.mobilenet_v2(pretrained=True).features
        >>> # KeypointRCNN needs to know the number of
        >>> # output channels in a backbone. For mobilenet_v2, it's 1280
        >>> # so we need to add it here
        >>> backbone.out_channels = 1280
        >>>
        >>> # let's make the RPN generate 5 x 3 anchors per spatial
        >>> # location, with 5 different sizes and 3 different aspect
        >>> # ratios. We have a Tuple[Tuple[int]] because each feature
        >>> # map could potentially have different sizes and
        >>> # aspect ratios
        >>> anchor_generator = AnchorGenerator(sizes=((32, 64, 128, 256, 512),),
        >>>                                    aspect_ratios=((0.5, 1.0, 2.0),))
        >>>
        >>> # let's define what are the feature maps that we will
        >>> # use to perform the region of interest cropping, as well as
        >>> # the size of the crop after rescaling.
        >>> # if your backbone returns a Tensor, featmap_names is expected to
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        >>> # be ['0']. More generally, the backbone should return an
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        >>> # OrderedDict[Tensor], and in featmap_names you can choose which
        >>> # feature maps to use.
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        >>> roi_pooler = torchvision.ops.MultiScaleRoIAlign(featmap_names=['0'],
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        >>>                                                 output_size=7,
        >>>                                                 sampling_ratio=2)
        >>>
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        >>> keypoint_roi_pooler = torchvision.ops.MultiScaleRoIAlign(featmap_names=['0'],
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        >>>                                                          output_size=14,
        >>>                                                          sampling_ratio=2)
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        >>> # put the pieces together inside a KeypointRCNN model
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        >>> model = KeypointRCNN(backbone,
        >>>                      num_classes=2,
        >>>                      rpn_anchor_generator=anchor_generator,
        >>>                      box_roi_pool=roi_pooler,
        >>>                      keypoint_roi_pool=keypoint_roi_pooler)
        >>> model.eval()
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        >>> model.eval()
        >>> x = [torch.rand(3, 300, 400), torch.rand(3, 500, 400)]
        >>> predictions = model(x)
    """
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    def __init__(
        self,
        backbone,
        num_classes=None,
        # transform parameters
        min_size=None,
        max_size=1333,
        image_mean=None,
        image_std=None,
        # RPN parameters
        rpn_anchor_generator=None,
        rpn_head=None,
        rpn_pre_nms_top_n_train=2000,
        rpn_pre_nms_top_n_test=1000,
        rpn_post_nms_top_n_train=2000,
        rpn_post_nms_top_n_test=1000,
        rpn_nms_thresh=0.7,
        rpn_fg_iou_thresh=0.7,
        rpn_bg_iou_thresh=0.3,
        rpn_batch_size_per_image=256,
        rpn_positive_fraction=0.5,
        rpn_score_thresh=0.0,
        # Box parameters
        box_roi_pool=None,
        box_head=None,
        box_predictor=None,
        box_score_thresh=0.05,
        box_nms_thresh=0.5,
        box_detections_per_img=100,
        box_fg_iou_thresh=0.5,
        box_bg_iou_thresh=0.5,
        box_batch_size_per_image=512,
        box_positive_fraction=0.25,
        bbox_reg_weights=None,
        # keypoint parameters
        keypoint_roi_pool=None,
        keypoint_head=None,
        keypoint_predictor=None,
        num_keypoints=17,
    ):
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        assert isinstance(keypoint_roi_pool, (MultiScaleRoIAlign, type(None)))
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        if min_size is None:
            min_size = (640, 672, 704, 736, 768, 800)
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        if num_classes is not None:
            if keypoint_predictor is not None:
                raise ValueError("num_classes should be None when keypoint_predictor is specified")

        out_channels = backbone.out_channels

        if keypoint_roi_pool is None:
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            keypoint_roi_pool = MultiScaleRoIAlign(featmap_names=["0", "1", "2", "3"], output_size=14, sampling_ratio=2)
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        if keypoint_head is None:
            keypoint_layers = tuple(512 for _ in range(8))
            keypoint_head = KeypointRCNNHeads(out_channels, keypoint_layers)

        if keypoint_predictor is None:
            keypoint_dim_reduced = 512  # == keypoint_layers[-1]
            keypoint_predictor = KeypointRCNNPredictor(keypoint_dim_reduced, num_keypoints)

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        super().__init__(
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            backbone,
            num_classes,
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            # transform parameters
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            min_size,
            max_size,
            image_mean,
            image_std,
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            # RPN-specific parameters
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            rpn_anchor_generator,
            rpn_head,
            rpn_pre_nms_top_n_train,
            rpn_pre_nms_top_n_test,
            rpn_post_nms_top_n_train,
            rpn_post_nms_top_n_test,
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            rpn_nms_thresh,
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            rpn_fg_iou_thresh,
            rpn_bg_iou_thresh,
            rpn_batch_size_per_image,
            rpn_positive_fraction,
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            rpn_score_thresh,
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            # Box parameters
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            box_roi_pool,
            box_head,
            box_predictor,
            box_score_thresh,
            box_nms_thresh,
            box_detections_per_img,
            box_fg_iou_thresh,
            box_bg_iou_thresh,
            box_batch_size_per_image,
            box_positive_fraction,
            bbox_reg_weights,
        )
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        self.roi_heads.keypoint_roi_pool = keypoint_roi_pool
        self.roi_heads.keypoint_head = keypoint_head
        self.roi_heads.keypoint_predictor = keypoint_predictor


class KeypointRCNNHeads(nn.Sequential):
    def __init__(self, in_channels, layers):
        d = []
        next_feature = in_channels
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        for out_channels in layers:
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            d.append(nn.Conv2d(next_feature, out_channels, 3, stride=1, padding=1))
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            d.append(nn.ReLU(inplace=True))
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            next_feature = out_channels
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        super().__init__(*d)
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        for m in self.children():
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            if isinstance(m, nn.Conv2d):
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                nn.init.kaiming_normal_(m.weight, mode="fan_out", nonlinearity="relu")
                nn.init.constant_(m.bias, 0)


class KeypointRCNNPredictor(nn.Module):
    def __init__(self, in_channels, num_keypoints):
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        super().__init__()
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        input_features = in_channels
        deconv_kernel = 4
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        self.kps_score_lowres = nn.ConvTranspose2d(
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            input_features,
            num_keypoints,
            deconv_kernel,
            stride=2,
            padding=deconv_kernel // 2 - 1,
        )
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        nn.init.kaiming_normal_(self.kps_score_lowres.weight, mode="fan_out", nonlinearity="relu")
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        nn.init.constant_(self.kps_score_lowres.bias, 0)
        self.up_scale = 2
        self.out_channels = num_keypoints

    def forward(self, x):
        x = self.kps_score_lowres(x)
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        return torch.nn.functional.interpolate(
            x, scale_factor=float(self.up_scale), mode="bilinear", align_corners=False, recompute_scale_factor=False
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        )


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model_urls = {
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    # legacy model for BC reasons, see https://github.com/pytorch/vision/issues/1606
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    "keypointrcnn_resnet50_fpn_coco_legacy": "https://download.pytorch.org/models/keypointrcnn_resnet50_fpn_coco-9f466800.pth",
    "keypointrcnn_resnet50_fpn_coco": "https://download.pytorch.org/models/keypointrcnn_resnet50_fpn_coco-fc266e95.pth",
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}


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def keypointrcnn_resnet50_fpn(
    pretrained=False,
    progress=True,
    num_classes=2,
    num_keypoints=17,
    pretrained_backbone=True,
    trainable_backbone_layers=None,
    **kwargs,
):
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    """
    Constructs a Keypoint R-CNN model with a ResNet-50-FPN backbone.

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    Reference: `"Mask R-CNN" <https://arxiv.org/abs/1703.06870>`_.

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    The input to the model is expected to be a list of tensors, each of shape ``[C, H, W]``, one for each
    image, and should be in ``0-1`` range. Different images can have different sizes.

    The behavior of the model changes depending if it is in training or evaluation mode.

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    During training, the model expects both the input tensors, as well as a targets (list of dictionary),
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    containing:
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        - boxes (``FloatTensor[N, 4]``): the ground-truth boxes in ``[x1, y1, x2, y2]`` format, with
          ``0 <= x1 < x2 <= W`` and ``0 <= y1 < y2 <= H``.
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        - labels (``Int64Tensor[N]``): the class label for each ground-truth box
        - keypoints (``FloatTensor[N, K, 3]``): the ``K`` keypoints location for each of the ``N`` instances, in the
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          format ``[x, y, visibility]``, where ``visibility=0`` means that the keypoint is not visible.

    The model returns a ``Dict[Tensor]`` during training, containing the classification and regression
    losses for both the RPN and the R-CNN, and the keypoint loss.

    During inference, the model requires only the input tensors, and returns the post-processed
    predictions as a ``List[Dict[Tensor]]``, one for each input image. The fields of the ``Dict`` are as
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    follows, where ``N`` is the number of detected instances:
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        - boxes (``FloatTensor[N, 4]``): the predicted boxes in ``[x1, y1, x2, y2]`` format, with
          ``0 <= x1 < x2 <= W`` and ``0 <= y1 < y2 <= H``.
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        - labels (``Int64Tensor[N]``): the predicted labels for each instance
        - scores (``Tensor[N]``): the scores or each instance
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        - keypoints (``FloatTensor[N, K, 3]``): the locations of the predicted keypoints, in ``[x, y, v]`` format.
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    For more details on the output, you may refer to :ref:`instance_seg_output`.

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    Keypoint R-CNN is exportable to ONNX for a fixed batch size with inputs images of fixed size.

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    Example::

        >>> model = torchvision.models.detection.keypointrcnn_resnet50_fpn(pretrained=True)
        >>> model.eval()
        >>> x = [torch.rand(3, 300, 400), torch.rand(3, 500, 400)]
        >>> predictions = model(x)
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        >>>
        >>> # optionally, if you want to export the model to ONNX:
        >>> torch.onnx.export(model, x, "keypoint_rcnn.onnx", opset_version = 11)
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    Args:
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        pretrained (bool): If True, returns a model pre-trained on COCO train2017
        progress (bool): If True, displays a progress bar of the download to stderr
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        num_classes (int): number of output classes of the model (including the background)
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        num_keypoints (int): number of keypoints, default 17
        pretrained_backbone (bool): If True, returns a model with backbone pre-trained on Imagenet
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        trainable_backbone_layers (int): number of trainable (not frozen) resnet layers starting from final block.
            Valid values are between 0 and 5, with 5 meaning all backbone layers are trainable.
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    """
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    trainable_backbone_layers = _validate_trainable_layers(
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        pretrained or pretrained_backbone, trainable_backbone_layers, 5, 3
    )
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    if pretrained:
        # no need to download the backbone if pretrained is set
        pretrained_backbone = False
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    backbone = resnet50(pretrained=pretrained_backbone, progress=progress, norm_layer=misc_nn_ops.FrozenBatchNorm2d)
    backbone = _resnet_fpn_extractor(backbone, trainable_backbone_layers)
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    model = KeypointRCNN(backbone, num_classes, num_keypoints=num_keypoints, **kwargs)
    if pretrained:
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        key = "keypointrcnn_resnet50_fpn_coco"
        if pretrained == "legacy":
            key += "_legacy"
        state_dict = load_state_dict_from_url(model_urls[key], progress=progress)
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        model.load_state_dict(state_dict)
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        overwrite_eps(model, 0.0)
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    return model