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L1-L2-norm comparison in global localization of mobile robots

机译:移动机器人全局定位中的L1-L2-范数比较

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摘要

The global localization methods deal with the estimation of the pose of a mobile robot assuming no prior state information about the pose and a complete a priori knowledge of the environment where the mobile robot is going to be localized. Most existing algorithms are based on the minimization of an L2-norm loss function. In spite of the extended use of the L2-norm, the use of the L1-norm offers some alternative advantages. The present work compares the L1-norm and the L2-norm with the same basic optimization mechanism to determine the advantages of each norm when applied to the global localization problem. The algorithm has been tested subject to different noise levels to demonstrate the accuracy, effectiveness, robustness, and computational efficiency of both L1-norm and L2-norm approaches.
机译:全局定位方法假设没有关于姿势的先前状态信息以及对要定位移动机器人的环境具有完整的先验知识,则对移动机器人的姿势进行估计。现有的大多数算法都是基于L2范数损失函数的最小化。尽管广泛使用了L2规范,但使用L1规范仍提供了一些替代优势。本工作将L1范数和L2范数与相同的基本优化机制进行比较,以确定将每个范数应用于全局定位问题时的优势。该算法已在不同的噪声水平下进行了测试,以证明L1规范和L2规范方法的准确性,有效性,鲁棒性和计算效率。

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