IEEE Access (Jan 2022)

LiDAR Point Cloud Compression by Vertically Placed Objects Based on Global Motion Prediction

  • Junsik Kim,
  • Seongbae Rhee,
  • Hyukmin Kwon,
  • Kyuheon Kim

DOI
https://doi.org/10.1109/ACCESS.2022.3148252
Journal volume & issue
Vol. 10
pp. 15298 – 15310

Abstract

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A point cloud acquired through a Light Detection And Ranging (LiDAR) sensor can be illustrated as a continuous frame with a time axis. Since the frame-by-frame point cloud has a high correlation between frames, a higher compression efficiency can be obtained by using an inter-prediction scheme, and for this purpose, Geometry-based Point Cloud Compression (G-PCC) in the Moving Picture Expert Group (MPEG) opened Inter-Exploratory Model (Inter-EM) which experiments on continuous LiDAR based point cloud frames compression through inter-prediction. The points of the LiDAR based point cloud have two different types of motion: global motion brought about by a vehicle with a LiDAR sensor and local motion generated by an object e.g., a walking person. Thus, Inter-EM consists of a compression structure in terms of both global and local motion, and the Inter-EM’s global motion compensation technology increases the compression efficiency via a single matrix describing the global motion of points. However, this is difficult to predict with a single matrix, which causes imprecise global motion estimation since the objects in a LiDAR-based point cloud show different global motion estimates according to object characteristics such as shape and position. Therefore, this paper proposes a global motion prediction and compensation scheme that considers the characteristics of objects for efficient compression of LiDAR-based point cloud frames. The proposed global motion prediction and compensation scheme achieved maximum gain of −22.0% and average of −9.4% in terms of the Bjontegaard-Delta-rate (BD-rate), and effectively compressed the LiDAR-based sparse point cloud.

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