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An Advanced LiDAR Point Cloud Sequence Coding Scheme for Autonomous Driving

Xuebin Sun, Sukai Wang, Miaohui Wang, Shing Shin Cheng, Ming Liu

202026 citationsDOI

Abstract

Due to the huge volume of point cloud data, storing or transmitting it is currently difficult and expensive in autonomous driving. Learning from the high efficiency video coding (HEVC) coding framework, we propose an advanced coding scheme for large-scale LiDAR point cloud sequences, in which several techniques have been developed to remove the spatial and temporal redundancy. The proposed strategy consists mainly of intra-coding and inter-coding. For intra-coding, we utilize a cluster-based prediction method to remove the spatial redundancy. For inter-coding, a predictive recurrent network is designed, which is capable of generating future frames according to the previously encoded frames. By calculating the residual error between the predicted and real point cloud data, the temporal redundancy can be removed. Finally, the residual data is quantized and encoded by lossless coding schemes. Experiments are conducted on the KITTI data set with four different scenes to verify the effectiveness and efficiency of the proposed method. Our approach can deal with multiple types of point cloud data from the simple to more complex, and yields better performance in terms of compression ratio compared with octree, Google Draco, MPEG TMC13 and other recently proposed methods.

Topics & Concepts

Computer scienceCoding (social sciences)Point cloudOctreeContext-adaptive binary arithmetic codingRedundancy (engineering)Coding tree unitData compressionResidualArtificial intelligenceComputer visionAlgorithmDecoding methodsMathematicsStatisticsOperating system3D Shape Modeling and AnalysisRemote Sensing and LiDAR ApplicationsAdvanced Vision and Imaging
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