DPCalib: Dual-Perspective View Network for LiDAR-Camera Joint Calibration

摘要

The precise calibration of a LiDAR-camera system is a crucial prerequisite for multimodal 3D information fusion in perception systems. The accuracy and robustness of existing traditional offline calibration methods are inferior to methods based on deep learning. Meanwhile, most parameter regression-based online calibration methods directly project LiDAR data onto a specific plane, leading to information loss and perceptual limitations. A novel network, DPCalib, a dual perspective view network that mitigates the aforementioned issue, is proposed in this paper. This paper proposes a novel neural network architecture to achieve the fusion and reuse of input information. We design a feature encoder that effectively extracts features from two orthogonal views using attention mechanisms. Furthermore, we propose an effective decoder that aggregates features from two views, thereby obtaining accurate extrinsic parameter estimation outputs. The experimental results demonstrate that our approach outperforms existing SOTA methods, and the ablation experiments validate the rationality and effectiveness of our work.

出版物
In Electronics 2024
Jinghao Cao(曹靖豪)
Jinghao Cao(曹靖豪)
博士(2022-)

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Xiong Yang(杨雄)
Xiong Yang(杨雄)
硕士(2022-)

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Sheng Liu(刘晟)
Sheng Liu(刘晟)
硕博连读(2021-)

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Tiejian Tang(唐铁健)
Tiejian Tang(唐铁健)
硕士(2022-)

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Yang Li(李杨)
Yang Li(李杨)
副教授

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Sidan Du(都思丹)
Sidan Du(都思丹)
教授

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