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Improving Self-Localisation of Mobile Robots Based on Asynchronous Monte-Carlo Localization Method

机译:基于异步蒙特卡洛定位方法的移动机器人自我定位

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This paper presents a set of robust and efficient algorithms with O(N) cost for the following situations: 1) object detection with a laser ranger; 2) mobile robot pose estimation and 3) an improved Monte-Carlo localization (MCL) method using multi-rate techniques. Object detection is mainly based on a novel multiple line fitting method for wall detection with regular constrained angles. Columns are also detected based on conventional circle fitting. In addition, two mobile robot self-localization methods are based on detected walls and columns respectively. These methods perform an efficient estimation based on LS sense and they can provide global pose estimation under assumption of known data-association. Moreover, the standard MCL method has been extended by considering the asynchronous sampling of sensors and actuators. Experimental results show that significant improvements in pose estimation can be obtained, since the algorithm runs at the fastest possible sampling frequencies for each process. This improvement allows the same accuracy as the standard MCL with fewer particles and lower computational cost.
机译:本文针对以下情况提出了一套健壮而高效的算法,成本为O(N):1)用激光测距仪进行目标检测; 2)移动机器人姿态估计和3)使用多速率技术的改进的蒙特卡洛定位(MCL)方法。目标检测主要基于一种新颖的多线拟合方法,用于具有规则约束角度的墙壁检测。还可以基于常规的圆拟合来检测列。另外,两种移动机器人自定位方法分别基于检测到的墙壁和圆柱。这些方法基于LS感知执行有效的估计,并且它们可以在已知数据关联的假设下提供全局姿态估计。此外,通过考虑传感器和执行器的异步采样,扩展了标准MCL方法。实验结果表明,由于该算法在每个过程中都以最快的采样频率运行,因此可以大大改善姿势估计。这项改进使精度与标准MCL相同,颗粒更少,计算成本更低。

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