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CoBEV: Elevating Roadside 3D Object Detection with Depth and Height Complementarity

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Academic paper
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Academic Paper attributes

arXiv ID
2310.028150
arXiv Classification
Computer science
Computer science
0
Publication URL
arxiv.org/pdf/2310.0...15.pdf0
Publisher
ArXiv
ArXiv
DOI
doi.org/10.48550/ar...10.028150
Paid/Free
Free
Academic Discipline
Electrical engineering
Electrical engineering
0
Robotics
Robotics
0
Computer Vision
Computer Vision
0
Computer science
Computer science
0
Submission Date
October 4, 2023
0
October 18, 2023
0
Author Names
Kaiwei Wang0
Rainer Stiefelhagen0
Yining Lin0
Yuhao Wu0
Chengshan Pang0
Hao Shi0
Huajian Ni0
Jiaming Zhang0
...
Paper abstract

Roadside camera-driven 3D object detection is a crucial task in intelligent transportation systems, which extends the perception range beyond the limitations of vision-centric vehicles and enhances road safety. While previous studies have limitations in using only depth or height information, we find both depth and height matter and they are in fact complementary. The depth feature encompasses precise geometric cues, whereas the height feature is primarily focused on distinguishing between various categories of height intervals, essentially providing semantic context. This insight motivates the development of Complementary-BEV (CoBEV), a novel end-to-end monocular 3D object detection framework that integrates depth and height to construct robust BEV representations. In essence, CoBEV estimates each pixel's depth and height distribution and lifts the camera features into 3D space for lateral fusion using the newly proposed two-stage complementary feature selection (CFS) module. A BEV feature distillation framework is also seamlessly integrated to further enhance the detection accuracy from the prior knowledge of the fusion-modal CoBEV teacher. We conduct extensive experiments on the public 3D detection benchmarks of roadside camera-based DAIR-V2X-I and Rope3D, as well as the private Supremind-Road dataset, demonstrating that CoBEV not only achieves the accuracy of the new state-of-the-art, but also significantly advances the robustness of previous methods in challenging long-distance scenarios and noisy camera disturbance, and enhances generalization by a large margin in heterologous settings with drastic changes in scene and camera parameters. For the first time, the vehicle AP score of a camera model reaches 80 DAIR-V2X-I in terms of easy mode. The source code will be made publicly available at https://github.com/MasterHow/CoBEV.

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