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mmcv / ops / prroi_pool.py
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# Copyright (c) OpenMMLab. All rights reserved.
from typing import Tuple, Union

import torch
import torch.nn as nn
from mmengine.utils.dl_utils import TORCH_VERSION
from torch.autograd import Function
from torch.autograd.function import once_differentiable
from torch.nn.modules.utils import _pair

from ..utils import ext_loader

ext_module = ext_loader.load_ext(
    '_ext',
    ['prroi_pool_forward', 'prroi_pool_backward', 'prroi_pool_coor_backward'])


class PrRoIPoolFunction(Function):

    @staticmethod
    def symbolic(g, features, rois, output_size, spatial_scale):
        return g.op(
            'mmcv::PrRoIPool',
            features,
            rois,
            pooled_height_i=int(output_size[0]),
            pooled_width_i=int(output_size[1]),
            spatial_scale_f=float(spatial_scale))

    @staticmethod
    def forward(ctx,
                features: torch.Tensor,
                rois: torch.Tensor,
                output_size: Tuple,
                spatial_scale: float = 1.0) -> torch.Tensor:
        if features.dtype != torch.float32 or rois.dtype != torch.float32:
            raise ValueError('Precise RoI Pooling only takes float input, got '
                             f'{features.dtype()} for features and'
                             f'{rois.dtype()} for rois.')

        pooled_height = int(output_size[0])
        pooled_width = int(output_size[1])
        spatial_scale = float(spatial_scale)

        features = features.contiguous()
        rois = rois.contiguous()
        output_shape = (rois.size(0), features.size(1), pooled_height,
                        pooled_width)
        output = features.new_zeros(output_shape)
        params = (pooled_height, pooled_width, spatial_scale)

        ext_module.prroi_pool_forward(
            features,
            rois,
            output,
            pooled_height=params[0],
            pooled_width=params[1],
            spatial_scale=params[2])
        ctx.params = params
        # everything here is contiguous.
        ctx.save_for_backward(features, rois, output)

        return output

    @staticmethod
    @once_differentiable
    def backward(
        ctx, grad_output: torch.Tensor
    ) -> Tuple[torch.Tensor, torch.Tensor, None, None, None]:
        features, rois, output = ctx.saved_tensors
        grad_input = grad_output.new_zeros(*features.shape)
        grad_coor = grad_output.new_zeros(*rois.shape)

        if features.requires_grad or TORCH_VERSION == 'parrots':
            grad_output = grad_output.contiguous()
            ext_module.prroi_pool_backward(
                grad_output,
                rois,
                grad_input,
                pooled_height=ctx.params[0],
                pooled_width=ctx.params[1],
                spatial_scale=ctx.params[2])
        if rois.requires_grad or TORCH_VERSION == 'parrots':
            grad_output = grad_output.contiguous()
            ext_module.prroi_pool_coor_backward(
                output,
                grad_output,
                features,
                rois,
                grad_coor,
                pooled_height=ctx.params[0],
                pooled_width=ctx.params[1],
                spatial_scale=ctx.params[2])

        return grad_input, grad_coor, None, None, None


prroi_pool = PrRoIPoolFunction.apply


class PrRoIPool(nn.Module):
    """The operation of precision RoI pooling. The implementation of PrRoIPool
    is modified from https://github.com/vacancy/PreciseRoIPooling/

    Precise RoI Pooling (PrRoIPool) is an integration-based (bilinear
    interpolation) average pooling method for RoI Pooling. It avoids any
    quantization and has a continuous gradient on bounding box coordinates.
    It is:

    1. different from the original RoI Pooling proposed in Fast R-CNN. PrRoI
    Pooling uses average pooling instead of max pooling for each bin and has a
    continuous gradient on bounding box coordinates. That is, one can take the
    derivatives of some loss function w.r.t the coordinates of each RoI and
    optimize the RoI coordinates.
    2. different from the RoI Align proposed in Mask R-CNN. PrRoI Pooling uses
    a full integration-based average pooling instead of sampling a constant
    number of points. This makes the gradient w.r.t. the coordinates
    continuous.

    Args:
        output_size (Union[int, tuple]): h, w.
        spatial_scale (float, optional): scale the input boxes by this number.
            Defaults to 1.0.
    """

    def __init__(self,
                 output_size: Union[int, tuple],
                 spatial_scale: float = 1.0):
        super().__init__()

        self.output_size = _pair(output_size)
        self.spatial_scale = float(spatial_scale)

    def forward(self, features: torch.Tensor,
                rois: torch.Tensor) -> torch.Tensor:
        """Forward function.

        Args:
            features (torch.Tensor): The feature map.
            rois (torch.Tensor): The RoI bboxes in [tl_x, tl_y, br_x, br_y]
                format.

        Returns:
            torch.Tensor: The pooled results.
        """
        return prroi_pool(features, rois, self.output_size, self.spatial_scale)

    def __repr__(self):
        s = self.__class__.__name__
        s += f'(output_size={self.output_size}, '
        s += f'spatial_scale={self.spatial_scale})'
        return s