Region-aware knowledge distillation between monocular camera-based 3D object detectors

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초록

Recent knowledge distillation (KD) for 3D object detection often involves costly LiDAR or multi-camera data. We focus on monocular camera-based 3D detectors, where missing 3D cues cause large feature gaps. To address this, we propose region-aware KD, aligning object features by matching their scales and pyramid levels. We introduce a probabilistic distribution to weigh region importance. Applied to MonoRCNN++ and MonoDETR on the KITTI and Waymo dataset, our approach achieves reduced complexity and strong performance with a lightweight backbone. Compared to recent KD methods, ours excels in both effectiveness and efficiency. © 2025 The Authors

키워드

3D object detectionFeature pyramid networksKnowledge distillationModel compressionMulti-scale feature map
제목
Region-aware knowledge distillation between monocular camera-based 3D object detectors
저자
Cheon, Se-GwonShin, Hyuk-JinBae, Seung-Hwan
DOI
10.1016/j.icte.2025.04.012
발행일
2025-08
유형
Article
저널명
ICT Express
11
4
페이지
696 ~ 702