Iterative Camera-LiDAR Extrinsic Optimization via Surrogate Diffusion
Ni Ou, Zhuo Chen, Xinru Zhang, Junzheng Wang

TL;DR
This paper introduces a surrogate diffusion-based iterative calibration method for Camera-LiDAR sensors that improves accuracy and reduces inference time compared to existing single and multi-range models.
Contribution
The paper presents a novel surrogate diffusion approach with buffering for efficient, high-accuracy extrinsic calibration in autonomous vehicle sensors.
Findings
Outperforms other single-model iterative calibration methods.
Reduces rotation error by 24.5% over state-of-the-art.
Achieves 20.4% less rotation error and 9.6% less translation error.
Abstract
Cameras and LiDAR are essential sensors for autonomous vehicles. Camera-LiDAR data fusion compensate for deficiencies of stand-alone sensors but relies on precise extrinsic calibration. Many learning-based calibration methods predict extrinsic parameters in a single step. Driven by the growing demand for higher accuracy, a few approaches utilize multi-range models or integrate multiple methods to improve extrinsic parameter predictions, but these strategies incur extended training times and require additional storage for separate models. To address these issues, we propose a single-model iterative approach based on surrogate diffusion to significantly enhance the capacity of individual calibration methods. By applying a buffering technique proposed by us, the inference time of our surrogate diffusion is 43.7% less than that of multi-range models. Additionally, we create a calibration…
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Taxonomy
TopicsAdvanced Vision and Imaging · Industrial Vision Systems and Defect Detection · Infrared Target Detection Methodologies
MethodsDiffusion
