CalibDNN: Multimodal Sensor Calibration for Perception Using Deep Neural Networks
About
Current perception systems often carry multimodal imagers and sensors such as 2D cameras and 3D LiDAR sensors. To fuse and utilize the data for downstream perception tasks, robust and accurate calibration of the multimodal sensor data is essential. We propose a novel deep learning-driven technique (CalibDNN) for accurate calibration among multimodal sensor, specifically LiDAR-Camera pairs. The key innovation of the proposed work is that it does not require any specific calibration targets or hardware assistants, and the entire processing is fully automatic with a single model and single iteration. Results comparison among different methods and extensive experiments on different datasets demonstrates the state-of-the-art performance.
Ganning Zhao, Jiesi Hu, Suya You, C.-C. Jay Kuo• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| LiDAR-to-Camera Calibration | KITTI Odometry Right Camera Sequence 00 | Total Angular Error0.685 | 24 | |
| LiDAR-to-Camera Calibration | KITTI Odometry Left Camera Sequence 00 | Rotation Error (Aggregate) (°)0.605 | 20 |
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