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A Novel Global Localization Approach Based on Structural Unit Encoding and Multiple Hypothesis Tracking

机译:基于结构单位编码和多重假设跟踪的新型全球定位方法

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摘要

In this paper, we present a novel 2-D laser-based global localization approach for mobile robots, which is composed of geometrical relationship construction, a new structural unit encoding scheme (SUES), and an extended multiple hypothesis tracking (MHT) algorithm. Different from existing methods, we construct a 3-D "directional endpoint" feature encapsulating both the endpoint and the direction of a line segment; on this basis, a novel and efficient online structural unit encoding scheme (SUES) is proposed to describe the geometric relationship between the two directional endpoint features with some robustness to dynamic disturbances. Note that SUES presented in this paper is different from the bag-of-words scheme in two aspects: 1) SUES quantizes the geometrical relationship without offline training for vocabulary and 2) SUES is independent of the quality of the vocabulary. By factoring the global localization problem into a discrete pose estimation problem, the MHT is extended on the basis of SUES and odometry information to gradually restore the global robot pose. Different from the classical MHT framework, the extended MHT takes the independent observation results as the a priori, while the likelihood term is composed of consecutive candidate poses and the odometry information. Evaluations are carried out by using both publicly available data sets and self-recorded data sets. Comparative experimental results with respect to the adaptive Monte Carlo localization are presented to show the superior performance of the proposed approach in terms of success ratio and efficiency.
机译:在本文中,我们提出了一种新颖的基于二维激光的移动机器人全局定位方法,该方法由几何关系构造,新的结构单位编码方案(SUES)和扩展的多重假设跟踪(MHT)算法组成。与现有方法不同,我们构造了一个3-D“方向端点”功能,该功能同时封装了端点和线段的方向。在此基础上,提出了一种新颖有效的在线结构单元编码方案(SUES),用于描述两个方向端点特征之间的几何关系,并对动态扰动具有一定的鲁棒性。请注意,本文介绍的SUES在两个方面与词袋计划不同:1)SUES无需对词汇进行离线训练即可对几何关系进行量化; 2)SUES与词汇的质量无关。通过将全局定位问题分解为离散的姿态估计问题,基于SUES和里程计信息扩展了MHT,以逐步恢复全局机器人姿态。与经典的MHT框架不同,扩展的MHT将独立的观察结果作为先验,而似然项则由连续的候选姿态和里程计信息组成。通过使用公开可用的数据集和自记录的数据集进行评估。提出了关于自适应蒙特卡洛定位的比较实验结果,以显示该方法在成功率和效率方面的优越性能。

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