Acta Optica Sinica, Volume. 41, Issue 5, 0528001(2021)
Multi-Factor Segmentation of Point Cloud Based on Improved Multi-Rule Region Growing
With regard to the low segmentation accuracy of planar point sets and poor merging effect of segments in the existing multi-factor segmentation algorithms of point clouds, an improved multi-rule region growing algorithm was proposed in this paper. On one hand, the plane fitting residuals of point clouds were calculated, based on which, the seed condition was set and the segmentation of planar point sets was optimized, so as to increase the segmentation accuracy of planar factors. On the other hand, on the basis of the distance condition, the merging strategy was improved in combination with similarity and volume changes to achieve effective merging of segments. In addition, the threshold parameters involved in this algorithm were set adaptively using the median clustering, Baarda data snooping, and k-means clustering. Furthermore, three different types of point clouds were tested, and the results show that the improved algorithm can boost the segmentation accuracy of planar point sets, and enhance the veracity of segments merging. Compared with other algorithms, the proposed algorithm can take into account both accuracy and efficiency and has better segmentation results.
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Wenqi Wang, Zongchun Li, Yongjian Fu, Hua He, Feng Xiong. Multi-Factor Segmentation of Point Cloud Based on Improved Multi-Rule Region Growing[J]. Acta Optica Sinica, 2021, 41(5): 0528001
Category: Remote Sensing and Sensors
Received: Jul. 13, 2020
Accepted: Oct. 21, 2020
Published Online: Apr. 7, 2021
The Author Email: Li Zongchun (13838092876@139.com)