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An Adaptive Memory Model for Long-Term Navigation of Autonomous Mobile Robots

机译:自主移动机器人长期导航的自适应记忆模型

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This paper introduces an environmental representation for autonomous mobile robots that continuously adapts over time. The presented approach is inspired by human memory information processing and stores the current as well as past knowledge of the environment. In this paper, the memory model is applied to time-variant information about obstacles and driveable routes in the workspace of the autonomous robot and used for solving the navigation cycle of the robot. This includes localization and path planning as well as vehicle control. The presented approach is evaluated in a real-world experiment within changing indoor environment. The results show that the environmental representation is stable, improves its quality over time, and adapts to changes.
机译:本文介绍了自主移动机器人的环境表示,该环境表示会随着时间的推移不断进行调整。所提出的方法受到人类记忆信息处理的启发,并存储了环境的当前和过去知识。本文将记忆模型应用于自主机器人工作空间中障碍物和可行驶路线的时变信息,并用于求解机器人的导航周期。这包括本地化和路径规划以及车辆控制。在不断变化的室内环境下,在真实世界的实验中评估了所提出的方法。结果表明,环境表示是稳定的,可以随着时间的推移改善其质量,并适应变化。

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