Methodology for an Analysis of Influencing Factors on 3D Object Detection Performance
Methodology for an Analysis of Influencing Factors on 3D Object Detection Performance
In automated driving, object detection is crucial for perceiving the environment. Although deep learning-based detectors offer high performance, their black-box nature complicates safety assurance. We propose a novel methodology to analyze how object- and environment-related factors affect LiDAR- and camera-based 3D object detectors. A statistical univariate analysis relates each factor to pedestrian detection errors. Additionally, a Random Forest (RF) model predicts errors from meta-information, with Shapley Values interpreting feature importance. By capturing feature dependencies, the RF enables a nuanced analysis of detection errors. Understanding these factors reveals detector performance gaps and supports safer object detection system development.
Anton Kuznietsov、Dirk Schweickard、Steven Peters
自动化技术、自动化技术设备计算技术、计算机技术
Anton Kuznietsov,Dirk Schweickard,Steven Peters.Methodology for an Analysis of Influencing Factors on 3D Object Detection Performance[EB/OL].(2025-06-30)[2025-07-16].https://arxiv.org/abs/2411.08482.点此复制
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