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Mutually converted arc-line segment-based SLAM with summing parameters

机译:具有求和参数的相互转换的基于弧线段的SLAM

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摘要

This paper presents a mutually converted arc-line segment-based simultaneous localization and mapping (SLAM) algorithm by distinguishing what we call the summing parameters from other types. These redefined parameters are a combination of the coordinate values of the measuring points. Unlike most traditional features-based simultaneous localization and mapping algorithms that only update the same type of features with a covariance matrix, our algorithm can match and update different types of features, such as the arc and line. For each separated data set from every new scan, the necessary information of the measured points is stored by the small constant number of the summing parameters. The arc and line segments are extracted according to the different limit values but based on the same parameters, from which their covariance matrix can also be computed. If one stored segment matches a new extracted segment successfully, two segments can be merged as one whether the features are the same type or not. The mergence is achieved by only summing the corresponding summing parameters of the two segments. Three simultaneous localization and mapping experiments in three different indoor environments were done to demonstrate the robustness, accuracy, and effectiveness of the proposed method. The data set of the Massachusetts Institute Of Technology (MIT) Computer Science and Artificial Intelligence Laboratory (CSAIL) Building was used to validate that our method has good adaptability.
机译:本文通过区分所谓的求和参数与其他类型,提出了一种相互转换的基于弧线段的同时定位和映射(SLAM)算法。这些重新定义的参数是测量点坐标值的组合。与大多数传统的基于特征的同时定位和映射算法不同,后者仅使用协方差矩阵更新同一类型的特征,而我们的算法可以匹配和更新不同类型的特征,例如弧线和直线。对于每个新扫描的每个分离数据集,通过少量恒定的求和参数来存储测量点的必要信息。根据不同的极限值但基于相同的参数提取弧线段和线段,也可以从中计算出它们的协方差矩阵。如果一个存储的段成功匹配一个新提取的段,则无论要素是否为同一类型,两个段都可以合并为一个。通过仅对两个段的相应求和参数求和即可实现合并。在三个不同的室内环境中同时进行了三个定位和制图实验,以证明该方法的鲁棒性,准确性和有效性。麻省理工学院(MIT)计算机科学和人工智能实验室(CSAIL)大楼的数据集用于验证我们的方法具有良好的适应性。

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