With recent success of deep learning in 2D visual recognition, deep learning-based 3D point cloud analysis has received increasing attention from the community, especially due to the rapid development of autonomous driving technologies. However, most existing methods directly learn point features in the spatial domain, leaving the local structures in the spectral domain poorly investigated. In this paper, we introduce a new method, PointWavelet, to explore local graphs in the spectral domain via a learnable graph wavelet transform. Specifically, we first introduce the graph wavelet transform to form multi-scale spectral graph convolution to learn effective local structural representations. To avoid the time-consuming spectral decomposition, we then devise a learnable graph wavelet transform, which significantly accelerates the overall training process. Extensive experiments on four popular point cloud datasets, ModelNet40, ScanObjectNN, ShapeNet-Part, and S3DIS, demonstrate the effectiveness of the proposed method on point cloud classification and segmentation.
翻译:由于最近在2D视觉认知方面的深层学习取得成功,特别是由于自主驱动技术的迅速发展,深入学习的三维点云分析已日益受到社区的注意。然而,大多数现有方法直接学习空间域的点特征,使得光谱域的当地结构调查不力。在本文件中,我们引入了一种新的方法,即PointWavelet,通过可学习的图形波列变换,探索光谱域的本地图。具体地说,我们首先引入了图形波列,形成多尺度的光谱图变换,以学习有效的当地结构表现。为了避免耗时的光谱分解,我们随后设计了可学习的图形波子变换,大大加快了总体培训进程。关于四个流行点云数据集、模型Net40、ScanObjectN、ShapeNet-Part和S3DIS的广泛实验,展示了在点云分类和分解方面拟议方法的有效性。