Published August 18, 2025 | Version v1

Methodology for an Analysis of Influencing Factors on 3D Object Detection Performance

  • 1. ROR icon Technical University of Darmstadt

Description

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. 

Files

Abstract.pdf

Files (111.6 kB)

Name Size Download all
md5:590713382972aba48e5a16333a5f4613
111.6 kB Preview Download

Additional details