作者: Zhang, ZX (Zhang, Zhenxin); Zhang, LQ (Zhang, Liqiang); Tong, XH (Tong, Xiaohua); Mathiopoulos, PT (Mathiopoulos, P. Takis); Guo, B (Guo, Bo); Huang, XF (Huang, Xianfeng); Wang, Z (Wang, Zhen); Wang, YB (Wang, Yuebin)
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摘要: Point cloud classification plays a critical role in point cloud processing and analysis. Accurately classifying objects on the ground in urban environments from airborne laser scanning (ALS) point clouds is a challenge because of their large variety, complex geometries, and visual appearances. In this paper, a novel framework is presented for effectively extracting the shape features of objects from an ALS point cloud, and then, it is used to classify large and small objects in a point cloud. In the framework, the point cloud is split into hierarchical clusters of different sizes based on a natural exponential function threshold. Then, to take advantage of hierarchical point cluster correlations, latent Dirichlet allocation and sparse coding are jointly performed to extract and encode the shape features of the multilevel point clusters. The features at different levels are used to capture information on the shapes of objects of different sizes. This way, robust and discriminative shape features of the objects can be identified, and thus, the precision of the classification is significantly improved, particularly for small objects.
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