Recent state-of-the-art methods for point cloud processing are based on the notion of point convolution, for which several approaches have been proposed. In this paper, inspired by discrete convolution in image processing, we provide a formulation to relate and analyze a number of point convolution methods. We also propose our own convolution variant, that separates the estimation of geometry-less kernel weights and their alignment to the spatial support of features. Additionally, we define a point sampling strategy for convolution that is both effective and fast. Finally, using our convolution and sampling strategy, we show competitive results on classification and semantic segmentation benchmarks while being time and memory efficient.
翻译:最近的点云处理最新最先进的方法基于点变换的概念,为此提出了几种方法。在本文中,在图像处理过程中的离散变异的启发下,我们提供了一种配方,用于联系和分析一些点变异的方法。我们还提出了我们自己变异的变方,将无几何内核重量的估算及其与特征的空间支持相匹配。此外,我们为点变异确定了有效和快速的点变异抽样战略。最后,我们利用我们的变异和抽样战略,在时间和记忆效率的同时,在分类和语义分割基准上展示了竞争性的结果。