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Influence of Camera-LiDAR Configuration on 3D Object Detection for Autonomous Driving

Ye Li, Hanjiang Hu, Zuxin Liu, Xiaohao Xu, Xiaonan Huang, Ding Zhao

202413 citationsDOI

Abstract

Cameras and LiDARs are both important sensors for autonomous driving, playing critical roles in 3D object detection. Camera-LiDAR Fusion has been a prevalent solution for robust and accurate driving perception. In contrast to the vast majority of existing arts that focus on how to improve the performance of 3D target detection through cross-modal schemes, deep learning algorithms, and training tricks, we devote attention to the impact of sensor configurations on the performance of learning-based methods. To achieve this, we propose a unified information-theoretic surrogate metric for camera and LiDAR evaluation based on the proposed sensor perception model. We also design an accelerated high-quality framework for data acquisition, model training, and performance evaluation that functions with the CARLA simulator. To show the correlation between detection performance and our surrogate metrics, We conduct experiments using several camera-LiDAR placements and parameters inspired by selfdriving companies and research institutions. Extensive experimental results of representative algorithms on nuScenes dataset validate the effectiveness of our surrogate metric, demonstrating that sensor configurations significantly impact point-cloudimage fusion based detection models, which contribute up to 30% discrepancy in terms of the average precision.

Topics & Concepts

LidarObject detectionComputer visionComputer scienceObject (grammar)Artificial intelligenceRemote sensingGeologyPattern recognition (psychology)Advanced Neural Network ApplicationsRobotics and Sensor-Based LocalizationAutonomous Vehicle Technology and Safety
Influence of Camera-LiDAR Configuration on 3D Object Detection for Autonomous Driving | Litcius