ClusterFusion: Leveraging Radar Spatial Features for Radar-Camera 3D Object Detection in Autonomous Vehicles
Irfan Tito Kurniawan, Bambang Riyanto Trilaksono

TL;DR
This paper introduces ClusterFusion, a novel radar-camera 3D object detection architecture that extracts local spatial features directly from radar point cloud clusters, achieving state-of-the-art results in autonomous vehicle perception.
Contribution
ClusterFusion leverages radar point cloud clustering for feature extraction before fusion, improving spatial feature preservation and detection accuracy over existing methods.
Findings
Achieved 48.7% NDS on nuScenes dataset
Handcrafted radar feature strategy outperformed learning-based methods
Clustering-based feature extraction enhances detection performance
Abstract
Thanks to the complementary nature of millimeter wave radar and camera, deep learning-based radar-camera 3D object detection methods may reliably produce accurate detections even in low-visibility conditions. This makes them preferable to use in autonomous vehicles' perception systems, especially as the combined cost of both sensors is cheaper than the cost of a lidar. Recent radar-camera methods commonly perform feature-level fusion which often involves projecting the radar points onto the same plane as the image features and fusing the extracted features from both modalities. While performing fusion on the image plane is generally simpler and faster, projecting radar points onto the image plane flattens the depth dimension of the point cloud which might lead to information loss and makes extracting the spatial features of the point cloud harder. We proposed ClusterFusion, an…
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Taxonomy
TopicsAdvanced SAR Imaging Techniques · Advanced Neural Network Applications · Advanced Optical Sensing Technologies
