Spatial-Spectral Smooth Graph Convolutional Network for Multispectral Point Cloud Classification

Qingwang Wang, Xiangrong Zhang, Yanfeng Gu
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引用次数: 1

Abstract

Multispectral point cloud, as a new type of data containing both spectrum and spatial geometry, opens the door to three-dimensional (3D) land cover classification at a finer scale. In this paper, we model the multispectral point cloud as a spatial-spectral graph and propose a smooth graph convolutional network for multispectral point cloud classification, abbreviated 3SGCN. We construct the spectral graph and spatial graph respectively to mine patterns in spectral and spatial geometric domains. Then, the multispectral point cloud graph is generated by combining the spatial and spectral graphs. For remote sensing scene classification tasks, it is usually desirable to make the classification map relatively smooth and avoid salt and pepper noise. Heat operator is introduced to enhance the low- frequency filters and enforce the smoothness in the graph signal. Further, a graph -based smoothness prior is deployed in our loss function. Experiments are conducted on real multispectral point cloud. The experimental results demonstrate that 3 SGCN can achieve significant improvements in comparison with several state-of-the art algori thms.
多光谱点云分类的空间-光谱光滑图卷积网络
多光谱点云作为一种包含光谱和空间几何的新型数据类型,为更精细的三维土地覆盖分类打开了大门。本文将多光谱点云建模为空间光谱图,提出了一种用于多光谱点云分类的平滑图卷积网络,简称3SGCN。我们分别构造谱图和空间图,在谱域和空间几何域上挖掘模式。然后,结合空间图和光谱图生成多光谱点云图。对于遥感场景分类任务,通常希望分类图相对平滑,避免盐和胡椒噪声。引入热算子增强了低频滤波器,增强了图信号的平滑性。此外,在损失函数中部署了基于图的平滑先验。在真实的多光谱点云上进行了实验。实验结果表明,与几种最先进的算法相比,3 SGCN可以取得显着的改进。
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