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PUConv: Upsampling convolutional network for point cloud semantic segmentation

机译:PUCONV:用于点云语义分割的上采样卷积网络

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摘要

Due to the issue of disorder, it is difficult to directly utilise a 2D convolutional neural networks to process 3D point clouds. Recently, PointNet can directly use 3D point sets as the input of convolutional neural networks and complete the processing of point clouds with multi-layer perceptron (MLP) and symmetric functions. However, the use of MLP to compute the weight function ignores the problem of non-uniformity sampling caused by the density of point set data. To address the above problem, based on the PointNet++ structure, a kernel density estimation based method is proposed to calculate the density level of the local point sets region under the optimal bandwidth selection principle, and the density re-weighting of the weight function is developed to better fit the structure of local point clouds. In addition, the authors utilise the upsampling convolution operation to avoid duplicate storages and calculations, making the point cloud reconstruction more efficient. The experiments carried out the semantic segmentation on both the synthetic data and the real indoor scenes show that the proposed method is capable of obtaining promising semantic segmentation results.
机译:由于疾病问题,难以直接利用2D卷积神经网络来处理3D点云。最近,PiaNtNet可以直接使用3D点集作为卷积神经网络的输入,并完成具有多层Perceptron(MLP)和对称功能的点云的处理。然而,使用MLP来计算权重函数忽略由点集数据的密度引起的非均匀性采样问题。为了解决上述问题,基于注意力++结构,提出了一种基于内核密度估计的方法来计算最佳带宽选择原理下的局部点集区域的密度水平,并且开发了权重函数的密度重新加权为了更好地符合本地点云的结构。此外,作者还利用了上采样的卷积操作来避免重复的存储和计算,使点云重建更有效。实验在合成数据和真实室内场景中进行了语义分割,表明该方法能够获得有前途的语义分段结果。

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