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Papers/CR3DT: Camera-RADAR Fusion for 3D Detection and Tracking

CR3DT: Camera-RADAR Fusion for 3D Detection and Tracking

Nicolas Baumann, Michael Baumgartner, Edoardo Ghignone, Jonas Kühne, Tobias Fischer, Yung-Hsu Yang, Marc Pollefeys, Michele Magno

2024-03-22Multi-Object TrackingAutonomous DrivingObject Tracking3D Multi-Object Trackingobject-detection3D Object DetectionObject Detection
PaperPDFCode(official)

Abstract

To enable self-driving vehicles accurate detection and tracking of surrounding objects is essential. While Light Detection and Ranging (LiDAR) sensors have set the benchmark for high-performance systems, the appeal of camera-only solutions lies in their cost-effectiveness. Notably, despite the prevalent use of Radio Detection and Ranging (RADAR) sensors in automotive systems, their potential in 3D detection and tracking has been largely disregarded due to data sparsity and measurement noise. As a recent development, the combination of RADARs and cameras is emerging as a promising solution. This paper presents Camera-RADAR 3D Detection and Tracking (CR3DT), a camera-RADAR fusion model for 3D object detection, and Multi-Object Tracking (MOT). Building upon the foundations of the State-of-the-Art (SotA) camera-only BEVDet architecture, CR3DT demonstrates substantial improvements in both detection and tracking capabilities, by incorporating the spatial and velocity information of the RADAR sensor. Experimental results demonstrate an absolute improvement in detection performance of 5.3% in mean Average Precision (mAP) and a 14.9% increase in Average Multi-Object Tracking Accuracy (AMOTA) on the nuScenes dataset when leveraging both modalities. CR3DT bridges the gap between high-performance and cost-effective perception systems in autonomous driving, by capitalizing on the ubiquitous presence of RADAR in automotive applications. The code is available at: https://github.com/ETH-PBL/CR3DT.

Results

TaskDatasetMetricValueModel
Multi-Object Trackingnuscenes Camera-RadarAMOTA0.355CR3DT
Object Trackingnuscenes Camera-RadarAMOTA0.355CR3DT
3D Multi-Object Trackingnuscenes Camera-RadarAMOTA0.355CR3DT

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