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Journal Article

Citation

Sun M, Paek D, Kong SH. Trans. Kor. Soc. Automot. Eng. 2022; 30(8): 635-647.

Vernacular Title

자율 주행을 위한 딥러닝 기반 라이다 객체 인식 신경망 연구 분석

Copyright

(Copyright © 2022, Korean Society of Automotive Engineers)

DOI

10.7467/KSAE.2022.30.8.635

PMID

unavailable

Abstract

Object detection is one of the most crucial functions for autonomous driving because path planning, obstacle avoidance, and numerous other functions rely on the acquired information regarding the positions of objects on the road. To enable accurate object detection, numerous works utilize lidar as the primary sensor since it can accurately acquire 3D measurements and it is robust to adverse environmental conditions such as poor illumination. In this work, we aim to comprehensively review deep learning-based object detection using lidar, which has shown remarkable detection performance on various datasets. First, we explain the general concepts of deep learning-based lidar object detection along with the datasets and benchmarks that are commonly used in existing works. We then thoroughly discuss the latest state-of-the-art neural networks for lidar object detection. Finally, we provide suggestions on how to employ these networks in an autonomous driving system.

키워드: 자율주행, 딥러닝, 라이다, 삼차원 객체 인식, 신경망


Language: ko

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