Object-sensitive potential fields for mobile robot navigation and mapping in indoor environments

Jingdao Chen, Pileun Kim, Y. Cho, J. Ueda
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引用次数: 10

Abstract

Mobile robots may be deployed in indoor environments for numerous tasks such as object manipulation, search and rescue, and infrastructure mapping. To be safely deployed in unknown and cluttered environments, mobile robots should be able to recognize both static and dynamic obstacles in its surroundings to determine its navigable paths. Current methods for navigating a mobile robot while avoiding obstacles do not consider the semantic categorization of objects when deciding how to move around them. This study proposes an obj ect-sensitive potential field method for mobile robot navigation and mapping in indoor environments. The mobile robot uses laser scanners to sense the 3D geometry of its surroundings. Next, a point-cloud based object detector is trained using deep learning techniques to semantically parse the laser scan data. The object detection output is used to create potential fields with varying strengths corresponding to the types of obj ects. This allows the path planning routine to strongly weigh immobile obstacles such as walls while weakly weighing potentially mobile obstacles such as chairs. The proposed algorithm was implemented and tested with a custom-designed mobile robot platform, Ground Robot for Mapping Infrastructure (GRoMI), in an indoor corridor environment. Overall, the proposed algorithm allowed for more intelligent navigation of mobile robots in cluttered environments by taking into account the categorization of obstacles.
室内环境中移动机器人导航与测绘的目标敏感势场
移动机器人可以部署在室内环境中执行许多任务,如物体操作、搜索和救援以及基础设施测绘。为了在未知和混乱的环境中安全部署,移动机器人应该能够识别周围的静态和动态障碍物,以确定其可导航的路径。目前的移动机器人避障导航方法在决定如何绕过物体时没有考虑物体的语义分类。提出了一种用于室内环境下移动机器人导航与测绘的目标敏感势场方法。移动机器人使用激光扫描仪来感知周围环境的三维几何形状。接下来,使用深度学习技术训练基于点云的目标检测器,以对激光扫描数据进行语义解析。对象检测输出用于创建与对象类型对应的具有不同强度的势场。这使得路径规划程序能够强烈地衡量诸如墙壁之类的固定障碍物,同时微弱地衡量诸如椅子之类的潜在移动障碍物。在室内走廊环境中,使用定制的移动机器人平台Ground robot for Mapping Infrastructure (GRoMI)对所提出的算法进行了实现和测试。总的来说,该算法通过考虑障碍物的分类,使移动机器人在混乱的环境中更加智能地导航。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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