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3D Object Detection Algorithm Based on the Reconstruction of Sparse Point Clouds in the Viewing Frustum

Authors :
Xing Xu
Xiang Wu
Yun Zhao
Xiaoshu Lü
Aki Aapaoja
Zhejiang University of Science and Technology
Department of Civil Engineering
Solita Oy
Aalto-yliopisto
Aalto University
Publication Year :
2022
Publisher :
Hindawi Publishing Corporation, 2022.

Abstract

Publisher Copyright: © 2022 Xing Xu et al. In response to the problem that the detection precision of the current 3D object detection algorithm is low when the object is severely occluded, this study proposes an object detection algorithm based on the reconstruction of sparse point clouds in the viewing frustum. The algorithm obtains more local feature information of the sparse point clouds in the viewing frustum through dimensional expansion, performs the fusion of local and global feature information of the point cloud data to obtain point cloud data with more complete semantic information, and then applies the obtained data to the 3D object detection task. The experimental results show that the precision of object detection in both 3D view and BEV (Bird's Eye View) can be improved effectively through the algorithm, especially object detection of moderate and hard levels when the object is severely occluded. In the 3D view, the average precision of the 3D detection of cars, pedestrians, and cyclists at a moderate level can be increased by 7.1p.p., 16.39p.p., and 5.42p.p., respectively; in BEV, the average precision of the 3D detection of car, pedestrians, and cyclists at hard level can be increased by 6.51p.p., 16.57p.p., and 7.18p.p., respectively, thus indicating the effectiveness of the algorithm.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....90226b7a03dd3868087f137bb86ef9db