Robust stereo visual odometry: A comparison of random sample consensus algorithms based on three major hypothesis generators

IF 1.9 4区 工程技术 Q2 ENGINEERING, MARINE Journal of Navigation Pub Date : 2022-05-12 DOI:10.1017/S0373463322000236
Guangzhi Guo, Zuoxiao Dai, Yuanfeng Dai
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引用次数: 1

Abstract

Abstract Almost all robust stereo visual odometry work uses the random sample consensus (RANSAC) algorithm for model estimation with the existence of noise and outliers. To date, there have been few comparative studies to evaluate the performance of RANSAC algorithms based on different hypothesis generators. In this work, we analyse and compare three popular and efficient RANSAC schemes. They mainly differ in using the two-dimensional (2-D) data points measured directly and the three-dimensional (3-D) data points inferred through triangulation. This comparison presents several quantitative experiments intended for comparing the accuracy, robustness and efficiency of each scheme under varying levels of noise and different percentages of outlier conditions. The results suggest that in the presence of noise and outliers, the perspective-three-point RANSAC provides more accurate and robust pose estimates. However, in the absence of noise, the iterative closest point RANSAC obtains better results regardless of the percentage of outliers. Efficiency, in terms of the number of RANSAC iterations, is found in that the relative speed of the perspective-three-point RANSAC becomes superior under low noise levels and low percentages of outlier conditions. Otherwise, the iterative closest-point RANSAC may be computationally more efficient.
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鲁棒立体视觉里程计:基于三种主要假设生成器的随机样本一致性算法的比较
摘要几乎所有稳健的立体视觉里程计工作都使用随机样本一致性(RANSAC)算法在存在噪声和异常值的情况下进行模型估计。到目前为止,很少有比较研究来评估基于不同假设生成器的RANSAC算法的性能。在这项工作中,我们分析和比较了三种流行且有效的RANSAC方案。它们的主要区别在于使用直接测量的二维(2-D)数据点和通过三角测量推断的三维(3-D)数据点。这种比较提供了几个定量实验,旨在比较每个方案在不同噪声水平和不同百分比的异常值条件下的准确性、稳健性和效率。结果表明,在存在噪声和异常值的情况下,透视三点RANSAC提供了更准确和稳健的姿态估计。然而,在没有噪声的情况下,无论异常值的百分比如何,迭代最接近点RANSAC都能获得更好的结果。就RANSAC迭代次数而言,发现效率在于,在低噪声水平和低百分比的异常值条件下,透视三点RANSAC的相对速度变得优越。否则,迭代最近点RANSAC在计算上可能更高效。
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来源期刊
Journal of Navigation
Journal of Navigation 工程技术-工程:海洋
CiteScore
6.10
自引率
4.20%
发文量
59
审稿时长
4.6 months
期刊介绍: The Journal of Navigation contains original papers on the science of navigation by man and animals over land and sea and through air and space, including a selection of papers presented at meetings of the Institute and other organisations associated with navigation. Papers cover every aspect of navigation, from the highly technical to the descriptive and historical. Subjects include electronics, astronomy, mathematics, cartography, command and control, psychology and zoology, operational research, risk analysis, theoretical physics, operation in hostile environments, instrumentation, ergonomics, financial planning and law. The journal also publishes selected papers and reports from the Institute’s special interest groups. Contributions come from all parts of the world.
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