Active loop closing based on laser data in indoor environment

Xianshan Li, Maoyuan Sun, Zhenjun Liu, Fengda Zhao
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引用次数: 1

Abstract

In Artificial Intelligence, Loop Closing is a key issue of Simultaneous Localization and Mapping (SLAM) that helps SLAM work efficiently and robustly. To solve the problem of the quantity of scene matching increasing linearly with time when loop closing in SLAM for mobile robots, a laser range finder based method is proposed for classifying the geometric scene and determining the set of similar frames for indoor corridor environment. Firstly, based on the turning function, a new line segment extraction method is designed to swiftly obtain the segment feature of scenes. Secondly, the set of basically similar frames is constructed according to scene entropy, scan area and close scan area. Finally, the method describing geometric scenes with the sequences of turning angle is proposed based on the turning angle histogram. By using Longest Common Subsequence matching and Hu-moment-based contour matching, the compact set of similar frames and the best matched frames of query frame are found. The experiment proves that the compact set and the best matched frames can be obtained efficiently and accurately, and based on that, the quantity of scene matching could be greatly reduced.
基于室内环境激光数据的主动闭环闭合
在人工智能中,闭环闭合是同步定位与映射(SLAM)的关键问题,有助于SLAM高效、鲁棒地工作。针对移动机器人SLAM中闭环闭合时场景匹配量随时间线性增加的问题,提出了一种基于激光测距仪的室内走廊环境几何场景分类与相似帧集确定方法。首先,基于旋转函数,设计了一种新的线段提取方法,快速获取场景的线段特征;其次,根据场景熵、扫描区域和闭合扫描区域构造基本相似的帧集;最后,提出了基于转角直方图的用转角序列描述几何场景的方法。利用最长公共子序列匹配和基于胡矩的轮廓匹配,找到相似帧的紧凑集和查询帧的最佳匹配帧。实验证明,该算法能够高效、准确地得到压缩集和最佳匹配帧,并在此基础上大大减少了场景匹配的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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