Home /Research /Real-Time Fast Channel Clustering for LiDAR Point Cloud
PERCEPTION

Real-Time Fast Channel Clustering for LiDAR Point Cloud

Xiao Zhang, Xinming Huang

Year
2022
Citations
13

Abstract

LiDAR sensors can produce point clouds with precise 3D depth information that is essential for autonomous vehicles and robotic systems. As a perception task, point cloud clustering algorithms can be applied to segment the points into object instances. In this brief, we propose a novel, hardware-friendly fast channel clustering (FCC) algorithm that achieves state-of-the-art performance when evaluated using KITTI panoptic segmentation benchmark. Furthermore, an efficient, pipeline hardware architecture is proposed to implement the FCC algorithm on an FPGA. Experiments show that the hardware design can process each LiDAR frame with 64 channels, 2048 horizontal resolution at various point sparsity in 1.93 ms, which is more than 471.5 times faster than running on the CPU. The code will be released to the public via GitHub.

Keywords

Point cloudComputer scienceCluster analysisBenchmark (surveying)Pipeline (software)LidarFrame (networking)Field-programmable gate arraySegmentationChannel (broadcasting)

Related papers

Browse all PERCEPTION papers