An Entropy Analysis-Based Window Size Optimization Scheme for Merging LiDAR Data Frames

Sensors (Basel). 2022 Nov 29;22(23):9293. doi: 10.3390/s22239293.

Abstract

LiDAR is a useful technology for gathering point cloud data from its environment and has been adapted to many applications. We use a cost-efficient LiDAR system attached to a moving object to estimate the location of the moving object using referenced linear structures. In the stationary state, the accuracy of extracting linear structures is low given the low-cost LiDAR. We propose a merging scheme for the LiDAR data frames to improve the accuracy by using the movement of the moving object. The proposed scheme tries to find the optimal window size by means of an entropy analysis. The optimal window size is determined by finding the minimum point between the entropy indicator of the ideal result and the entropy indicator of the actual result of each window size. The proposed indicator can describe the accuracy of the entire path of the moving object at each window size using a simple single value. The experimental results show that the proposed scheme can improve the linear structure extraction accuracy.

Keywords: LiDAR; entropy analysis; linear structure extraction; merging point cloud data frames; window size optimization.

Grants and funding

This work was supported by a grant (code: 22SCIP-C151582-04) from the Construction Technologies Program funded by the Ministry of Land, Infrastructure and Transport of the Korean government and the Gachon University research fund of 2021 (GCU-2021-202008450001).