FEC: Fast Euclidean Clustering for Point Cloud Segmentation
Yu Cao, Yancheng Wang, Yifei Xue, Huiqing Zhang, Yizhen Lao
- Year
- 2022
- Access
- Open access
Abstract
Segmentation from point cloud data is essential in many applications such as remote sensing, mobile robots, or autonomous cars. However, the point clouds captured by the 3D range sensor are commonly sparse and unstructured, challenging efficient segmentation. In this paper, we present a fast solution to point cloud instance segmentation with small computational demands. To this end, we propose a novel fast Euclidean clustering (FEC) algorithm which applies a pointwise scheme over the clusterwise scheme used in existing works. Our approach is conceptually simple, easy to implement (40 lines in C++), and achieves two orders of magnitudes faster against the classical segmentation methods while producing high-quality results.
Keywords
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