Robust Global Localization by Using Global Visual Features and Range Finders Data

Xuefeng Zhou, Zerong Su, Dan Huang, Hong Zhang, Taobo Cheng, Junjun Wu
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引用次数: 7

Abstract

Global localization is a challenging problem of using sensor data to estimate the pose of a robot in an environment when the starting pose is unknowm. The conventional probabilistic algorithms called Monte Carlo Positioning (MCL) is one of the most popular methods to solve this problem. MCL algorithms use a set of weighted particles to approximate the distribution probability of where the robot is located and it requires a wandering motion to converge to a single, high likelihood pose during global localization. Sometimes this wandering motion is not allowed in actual industrial applications. This paper presents a framework which incorporates image-based localization module into a conventional MCL algorithm. The core module in our proposed approach is called Double Re-localization Decision Process (DRDP) by performing two selection of relocation decisions before and after the pose update process with two different sensor sources. A compact global descriptor is used for fast image association and a scan matching using vanilla ICP (Iterative Closest Point) of Point-to-line metric is applied to obtain further pose of the proposal candidate. Several experiments are designed to verify the effectiveness of the our approach in indoor environment.
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基于全局视觉特征和测距仪数据的鲁棒全局定位
全局定位是在初始姿态未知的情况下,利用传感器数据估计机器人姿态的一个具有挑战性的问题。传统的概率算法蒙特卡罗定位(MCL)是解决这一问题最常用的方法之一。MCL算法使用一组加权粒子来近似机器人所在位置的分布概率,并且在全局定位过程中,它需要一个漫游运动收敛到一个单一的高可能性姿态。有时在实际工业应用中不允许这种徘徊运动。本文提出了一种将基于图像的定位模块集成到传统MCL算法中的框架。我们提出的方法的核心模块被称为双重重新定位决策过程(DRDP),通过使用两个不同的传感器源在姿态更新过程之前和之后执行两次重新定位决策选择。采用紧凑的全局描述子实现图像的快速关联,采用点对线度量的迭代最近点(ICP)进行扫描匹配,进一步获得候选候选方案的位姿。设计了几个实验来验证我们的方法在室内环境中的有效性。
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