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from torch import nn as nn |
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from torch.autograd import Function |
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from ..utils import ext_loader |
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ext_module = ext_loader.load_ext('_ext', ['roipoint_pool3d_forward']) |
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class RoIPointPool3d(nn.Module): |
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"""Encode the geometry-specific features of each 3D proposal. |
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Please refer to `Paper of PartA2 <https://arxiv.org/pdf/1907.03670.pdf>`_ |
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for more details. |
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Args: |
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num_sampled_points (int, optional): Number of samples in each roi. |
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Default: 512. |
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""" |
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def __init__(self, num_sampled_points=512): |
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super().__init__() |
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self.num_sampled_points = num_sampled_points |
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def forward(self, points, point_features, boxes3d): |
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""" |
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Args: |
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points (torch.Tensor): Input points whose shape is (B, N, C). |
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point_features (torch.Tensor): Features of input points whose shape |
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is (B, N, C). |
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boxes3d (B, M, 7), Input bounding boxes whose shape is (B, M, 7). |
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Returns: |
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pooled_features (torch.Tensor): The output pooled features whose |
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shape is (B, M, 512, 3 + C). |
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pooled_empty_flag (torch.Tensor): Empty flag whose shape is (B, M). |
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""" |
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return RoIPointPool3dFunction.apply(points, point_features, boxes3d, |
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self.num_sampled_points) |
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class RoIPointPool3dFunction(Function): |
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@staticmethod |
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def forward(ctx, points, point_features, boxes3d, num_sampled_points=512): |
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""" |
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Args: |
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points (torch.Tensor): Input points whose shape is (B, N, C). |
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point_features (torch.Tensor): Features of input points whose shape |
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is (B, N, C). |
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boxes3d (B, M, 7), Input bounding boxes whose shape is (B, M, 7). |
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num_sampled_points (int, optional): The num of sampled points. |
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Default: 512. |
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Returns: |
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pooled_features (torch.Tensor): The output pooled features whose |
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shape is (B, M, 512, 3 + C). |
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pooled_empty_flag (torch.Tensor): Empty flag whose shape is (B, M). |
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""" |
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assert len(points.shape) == 3 and points.shape[2] == 3 |
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batch_size, boxes_num, feature_len = points.shape[0], boxes3d.shape[ |
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1], point_features.shape[2] |
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pooled_boxes3d = boxes3d.view(batch_size, -1, 7) |
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pooled_features = point_features.new_zeros( |
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(batch_size, boxes_num, num_sampled_points, 3 + feature_len)) |
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pooled_empty_flag = point_features.new_zeros( |
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(batch_size, boxes_num)).int() |
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ext_module.roipoint_pool3d_forward(points.contiguous(), |
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pooled_boxes3d.contiguous(), |
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point_features.contiguous(), |
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pooled_features, pooled_empty_flag) |
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return pooled_features, pooled_empty_flag |
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@staticmethod |
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def backward(ctx, grad_out): |
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raise NotImplementedError |
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