全向三维扫描快速扫描上下文匹配

Hikaru Kihara, M. Kumon, K. Nakatsuma, T. Furukawa
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引用次数: 0

摘要

自主机器人需要通过识别场景来识别环境。扫描上下文是全局描述符之一,它将场景的三维扫描数据编码成矩阵形式,便于识别。扫描上下文采用矩阵形式,易于存储,但是扫描上下文的匹配可能需要计算,因为描述符依赖于方向。由于激光雷达全向扫描的扫描上下文在方位角上具有周期性,本文提出了结合互相关和快速傅里叶变换的扫描上下文匹配方法,并将其命名为快速扫描上下文匹配。本文报道了该方法在计算时间、精度和鲁棒性方面的有效性。该方法作为SLAM封装的闭环检测器进行了实际应用测试,结果表明该方法优于传统的扫描上下文匹配方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Scan Context Matching for Omnidirectional 3D Scan
Autonomous robots need to recognize the environment by identifying the scene. Scan context is one of global descriptors, and it encodes the three-dimensional scan data of the scene for the identification in a matrix form. Scan context is in a matrix form that is simple to store, but the matching of scan contexts can require computational effort because the descriptor is orientation-dependent. Because a scan context of an omnidirectional LiDAR scan becomes periodic in azimuth, this paper proposes to compute the scan context matching efficiently incorporating the cross-correlation with fast Fourier transform, and, hence, the method is named fast scan context matching. The effectiveness of the proposed method for computation time, accuracy, and robustness are reported in this paper. It is also shown that the method was also tested as a loop closure detector of a SLAM package as a practical application and that the proposed method outperformed the conventional scan context matching.
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