Multi-Modal Decouple and Recouple Network for Robust 3D Object Detection
Rui Ding, Zhaonian Kuang, Yuzhe Ji, Meng Yang, Xinhu Zheng, and Gang Hua

TL;DR
This paper introduces a novel multi-modal network that decouples and recouples features from LiDAR and camera data to improve robustness in 3D object detection under various data corruptions, outperforming existing methods.
Contribution
It proposes a decouple and recouple framework that isolates invariant features and adapts to different data corruptions, enhancing robustness in multi-modal 3D detection.
Findings
Achieves superior accuracy on corrupted and clean data.
Effectively recovers invariant features across modalities.
Demonstrates robustness on a new corrupted data benchmark.
Abstract
Multi-modal 3D object detection with bird's eye view (BEV) has achieved desired advances on benchmarks. Nonetheless, the accuracy may drop significantly in the real world due to data corruption such as sensor configurations for LiDAR and scene conditions for camera. One design bottleneck of previous models resides in the tightly coupling of multi-modal BEV features during fusion, which may degrade the overall system performance if one modality or both is corrupted. To mitigate, we propose a Multi-Modal Decouple and Recouple Network for robust 3D object detection under data corruption. Different modalities commonly share some high-level invariant features. We observe that these invariant features across modalities do not always fail simultaneously, because different types of data corruption affect each modality in distinct ways.These invariant features can be recovered across modalities…
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Taxonomy
TopicsAdvanced Neural Network Applications · Visual Attention and Saliency Detection · Robotics and Sensor-Based Localization
