Range image-based density-based spatial clustering of application with noise clustering method of three-dimensional point clouds
Mingyun Wen, Seoungjae Cho, Jeongsook Chae, Yunsick Sung, Kyungeun Cho
- Year
- 2018
- Citations
- 13
- Access
- Open access
Abstract
Clustering plays an important role in processing light detection and ranging points in the autonomous perception tasks of robots. Clustering usually occurs near the start of processing three-dimensional point clouds obtained from light detection and ranging for detection and classification. Therefore, errors caused by clustering will directly affect the detection and classification accuracy. In this article, a clustering method is presented that combines density-based spatial clustering of application with noise and two-dimensional range image composed by scan lines of light detection and ranging based on the order of generation time. The results show that the proposed method achieves state-of-the-art performance in aspect of time efficiency and clustering accuracy. A ground extraction method based on scan line is also presented in this article, which has strong ability to separate ground points and non-ground points.
Keywords
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