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Open Access

Curb Detection and Mapping via Robust Iterative Gaussian Process Regression

Di Wang1,§Si Chen2,§Zhenni Ma1,§Jiajia Shi1Fuchun Zhang1( )
School of Physics and Electronic Information, Yan'an University, Yan'an, Shaanxi 716000, China
China Electronics Technology Group Corporation, Beijing 100086, China

§ Di Wang,Si Chen,and Zhenni Ma are co-first authors

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Abstract

Curb detection and mapping are of great importance to ensure the safety and efficiency of intelligent vehicles. However, it remains challenging because shape estimation under noise and outliers is not well addressed in real traffic scenarios. In this paper, an efficient curb detection and mapping algorithm is proposed to achieve an accurate representation of curb shape. More specifically, an iterative Gaussian process regression (iGPR) is introduced, where each candidate point is verified multiple times. Then iGPR is employed in shape estimation of both road profile and curb, which serves as the backbone unit in curb candidate detection. During this process, the input 3D point cloud is segmented into road and obstacles, and potential curb points are selected by evaluating physically interpretable curb features. Finally, the proposed iGPR is validated and tested on two large-scale, complex urban datasets under real traffic scenarios. Experimental results show that the proposed iGPR achieves better performance than several state-of-the-art algorithms.

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Journal of Highway and Transportation Research and Development (English Edition)
Pages 26-33
Cite this article:
Wang D, Chen S, Ma Z, et al. Curb Detection and Mapping via Robust Iterative Gaussian Process Regression. Journal of Highway and Transportation Research and Development (English Edition), 2024, 18(2): 26-33. https://doi.org/10.26599/HTRD.2024.9480011

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Received: 14 September 2023
Accepted: 30 December 2023
Published: 30 June 2024
© The Author(s) 2024. Published by Tsinghua Uhiversity Press.

This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.00/).

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