Rendering-Enhanced Automatic Image-to-Point Cloud Registration for Roadside Scenes
Yu Sheng, Lu Zhang, Xingchen Li, Yifan Duan, Yanyong Zhang, Yu Zhang,, and Jianmin Ji

TL;DR
This paper introduces a novel rendering-enhanced method for automatic registration of prior point clouds with roadside camera images, significantly improving accuracy and robustness in environmental perception tasks.
Contribution
It proposes a new rendering-based registration approach with an efficient neighbor rendering algorithm and an automatic initial guess estimation, enhancing roadside scene alignment accuracy.
Findings
Achieves rotation accuracy of 0.202 degrees
Achieves translation precision of 0.079 meters
Improves monocular 3D object detection performance
Abstract
Prior point cloud provides 3D environmental context, which enhances the capabilities of monocular camera in downstream vision tasks, such as 3D object detection, via data fusion. However, the absence of accurate and automated registration methods for estimating camera extrinsic parameters in roadside scene point clouds notably constrains the potential applications of roadside cameras. This paper proposes a novel approach for the automatic registration between prior point clouds and images from roadside scenes. The main idea involves rendering photorealistic grayscale views taken at specific perspectives from the prior point cloud with the help of their features like RGB or intensity values. These generated views can reduce the modality differences between images and prior point clouds, thereby improve the robustness and accuracy of the registration results. Particularly, we specify an…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Computer Graphics and Visualization Techniques · Traffic Prediction and Management Techniques
