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import torch
from torch.autograd import Function

from .. import deform_pool_cuda


class DeformRoIPoolingFunction(Function):

    @staticmethod
    def forward(ctx,
                data,
                rois,
                offset,
                spatial_scale,
                out_size,
                out_channels,
                no_trans,
                group_size=1,
                part_size=None,
                sample_per_part=4,
                trans_std=.0):
        ctx.spatial_scale = spatial_scale
        ctx.out_size = out_size
        ctx.out_channels = out_channels
        ctx.no_trans = no_trans
        ctx.group_size = group_size
        ctx.part_size = out_size if part_size is None else part_size
        ctx.sample_per_part = sample_per_part
        ctx.trans_std = trans_std

        assert 0.0 <= ctx.trans_std <= 1.0
        if not data.is_cuda:
            raise NotImplementedError

        n = rois.shape[0]
        output = data.new_empty(n, out_channels, out_size, out_size)
        output_count = data.new_empty(n, out_channels, out_size, out_size)
        deform_pool_cuda.deform_psroi_pooling_cuda_forward(
            data, rois, offset, output, output_count, ctx.no_trans,
            ctx.spatial_scale, ctx.out_channels, ctx.group_size, ctx.out_size,
            ctx.part_size, ctx.sample_per_part, ctx.trans_std)

        if data.requires_grad or rois.requires_grad or offset.requires_grad:
            ctx.save_for_backward(data, rois, offset)
        ctx.output_count = output_count

        return output

    @staticmethod
    def backward(ctx, grad_output):
        if not grad_output.is_cuda:
            raise NotImplementedError

        data, rois, offset = ctx.saved_tensors
        output_count = ctx.output_count
        grad_input = torch.zeros_like(data)
        grad_rois = None
        grad_offset = torch.zeros_like(offset)

        deform_pool_cuda.deform_psroi_pooling_cuda_backward(
            grad_output, data, rois, offset, output_count, grad_input,
            grad_offset, ctx.no_trans, ctx.spatial_scale, ctx.out_channels,
            ctx.group_size, ctx.out_size, ctx.part_size, ctx.sample_per_part,
            ctx.trans_std)
        return (grad_input, grad_rois, grad_offset, None, None, None, None,
                None, None, None, None)


deform_roi_pooling = DeformRoIPoolingFunction.apply