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Neural network based reactive navigation for mobile robot in dynamic environment

机译:动态环境下基于神经网络的移动机器人反应导航

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When mobile robots are used among people, the best accepted motion related behavior is a human-like motion of the robot. Such behavior is difficult to obtain with commonly used finite state machine based planners, but can easily be evoked when human controls the robot. The paper presents the way of transforming such knowledge from human controller to reactive planner in the robot navigation module. Reactive planner is based on machine learning, neural networks in particular. The planner consists of two separate neural networks, one serving as predictor of dynamic obstacles behavior, second one serving as the reactive planner itself, producing desirable actions of the robot both in terms of velocity and direction. Planner was verified on real robot producing human-like behavior when used in real environment.
机译:当在人中使用移动机器人时,最佳的与运动相关的行为是机器人的类似人的运动。使用基于有限状态机的常用计划器很难获得这种行为,但是当人们控制机器人时,很容易引起这种行为。本文提出了将这种知识从人类控制器转换为机器人导航模块中的反应式计划器的方法。响应式计划程序基于机器学习,尤其是基于神经网络。该计划程序由两个独立的神经网络组成,一个用作动态障碍行为的预测器,第二个用作反应性计划程序本身,从而在速度和方向方面产生机器人所需的动作。在实际环境中使用时,Planner已在可产生类人行为的真实机器人上进行了验证。

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