The paper addresses the challenge of ambiguous sample allocation in anchor-based LiDAR 3D object detection methods. It introduces PASS, a novel approach that combines IoUpoint and IoUbox metrics to improve detector performance. Experimental results demonstrate the effectiveness of PASS in elevating average precision and reducing ambiguity in sample selection.
In automated systems like autonomous driving, accurate 3D object detection is crucial. LiDAR sensors provide precise depth measurements, making them ideal for this task. Anchor-based methods rely on predefined boxes for predictions, while anchor-free methods directly predict objects without anchors. The sparsity of LiDAR point clouds poses challenges for accurate object representation and feature learning.
Existing anchor-based methods face limitations due to ambiguity in sample selection based on IoUbox. The proposed PASS method integrates IoUpoint to provide a clearer assessment of anchor samples, improving feature learning and detection performance. Comparative experiments on datasets like KITTI and Waymo Open Dataset validate the effectiveness of PASS in enhancing anchor-based detectors.
Till ett annat språk
från källinnehåll
arxiv.org
Djupare frågor