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Effective approach for outdoor obstacle detection by clustering LIDAR data context 被引量:1

Effective approach for outdoor obstacle detection by clustering LIDAR data context
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摘要 A method of environment mapping using laser-based light detection and ranging (LIDAR) is proposed in this paper. This method not only has a good detection performance in a wide range of detection angles, but also facilitates the detection of dynamic and hollowed-out obstacles. Essentially using this method, an improved clustering algorithm based on fast search and discovery of density peaks (CBFD) is presented to extract various obstacles in the environment map. By comparing with other cluster algorithms, CBFD can obtain a favorable number of clusterings automatically. Furthermore, the experiments show that CBFD is better and more robust in functionality and performance than the K-means and iterative self-organizing data analysis techniques algorithm (ISODATA). A method of environment mapping using laser-based light detection and ranging (LIDAR) is proposed in this paper. This method not only has a good detection performance in a wide range of detection angles, but also facilitates the detection of dynamic and hollowed-out obstacles. Essentially using this method, an improved clustering algorithm based on fast search and discovery of density peaks (CBFD) is presented to extract various obstacles in the environment map. By comparing with other cluster algorithms, CBFD can obtain a favorable number of clusterings automatically. Furthermore, the experiments show that CBFD is better and more robust in functionality and performance than the K-means and iterative self-organizing data analysis techniques algorithm (ISODATA).
出处 《Journal of Beijing Institute of Technology》 EI CAS 2016年第4期483-490,共8页 北京理工大学学报(英文版)
基金 Supported by the National Natural Science Foundation of China(61103157)
关键词 context modeling clustering algorithm based on fast search and discovery of densitypeaks(CBFD) Hull algorithm obstacle detection obstacle fusion context modeling clustering algorithm based on fast search and discovery of densitypeaks(CBFD) Hull algorithm obstacle detection obstacle fusion
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