Autonomous Navigation Using Deep Reinforcement Learning in ROS

G. Khekare, Shahrukh Sheikh
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引用次数: 1

Abstract

For an autonomous robot to move safely in an environment where people are around and moving dynamically without knowing their goal position, it is required to set navigation rules and human behaviors. This problem is challenging with the highly stochastic behavior of people. Previous methods believe to provide features of human behavior, but these features vary from person to person. The method focuses on setting social norms that are telling the robot what not to do. With deep reinforcement learning, it has become possible to set a time-efficient navigation scheme that regulates social norms. The solution enables mobile robot full autonomy along with collision avoidance in people rich environment.
基于深度强化学习的自主导航
为了使自主机器人在不知道目标位置的情况下在周围有人的环境中安全移动并动态移动,需要设置导航规则和人的行为。由于人的行为是高度随机的,这个问题很有挑战性。以前的方法相信能提供人类行为的特征,但这些特征因人而异。该方法的重点是设置社会规范,告诉机器人不要做什么。有了深度强化学习,就有可能设置一个时间效率高的导航方案来调节社会规范。该解决方案使移动机器人能够在人多的环境中实现完全自主和避免碰撞。
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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