一种结合准静态环境目标表示和LRF传感器玻璃表面检测的室内导航算法

T. Shiina, Zhidong Wang
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引用次数: 6

摘要

对于自主机器人系统而言,在室内环境中执行导航等任务的移动机器人应该能够应对许多环境对象(如门)的状态变化。这将涉及许多关键技术,如映射、实时状态观察和行动决策。本文从映射层次定义了表示状态可变对象的准静态环境对象(Quasi-Static Environment Object, QSO)的概念,并利用QSO数据结构在现有的机器人地图系统中实现。提出了一种基于状态的导航决策和QSO状态表示的导航算法,使机器人在原最短路径上的观测门关闭时可以灵活地修改路径。此外,利用玻璃的反射特性和预配准的QSO地图数据,提出了一种利用通用型LRF传感器检测玻璃QSO目标的方法。这使得我们提出的扩展导航算法可以应用于大多数室内环境,包括许多具有透明玻璃门和玻璃墙的新建筑,这些在传统的基于SLAM的测绘方法中是不可见的。几个实验证明了所提方法的有效性。
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An indoor navigation algorithm incorporating representation of Quasi-Static Environmental Object and glass surface detection using LRF sensor
To autonomous robot systems, performing tasks, such as navigation a mobile robot in indoor environments should be able to cope with state changes of many environment objects, such as a door. This will involve many key technologies such as mapping, real time state observation and action decision. In this paper, we define the concept of Quasi-Static Environment Object (QSO) which represents state-changeable object from mapping level, and implement it in current robotic map system with QSO data structure. A navigation algorithm with QSO state representation and states based navigation decision is developed for allowing a robot can flexibly modify its route while observed door in its original shortest route is closed. Additionally, a method with general type LRF sensors for glass QSO object detection is proposed by using reflection characteristics of glass and pre-registered QSO map data. This lets our proposed extended navigation algorithm can be applied to most of indoor environments including many recent buildings with transparent glass doors and glass walls which are invisible in conventional SLAM based mapping methods. Several experiments are provided for illustrating the validity of the proposed methods.
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