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Path planning for active SLAM based on deep reinforcement learning under unknown environments

机译:基于未知环境下深增强学习的活动SLAM路径规划

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摘要

Autonomous navigation in complex environment is an important requirement for the design of a robot. Active SLAM (simultaneous localization and mapping) combining, which combine path planning with SLAM, is proposed to improve the ability of autonomous navigation in complex environment. In this paper, fully convolutional residual networks are used to recognize the obstacles to get depth image. The avoidance obstacle path is planned by Dueling DQN algorithm in the robot's navigation; at the same time, the 2D map of the environment is built based on FastSLAM. The experiments show that the proposed algorithm can successfully identify and avoid moving and static obstacles with different quantities in the environment, and realize the autonomous navigation of the robot in a complex environment.
机译:复杂环境中的自主导航是机器人设计的重要要求。 建议使用与SLAM的路径规划相结合的主动SLAM(同时定位和映射)组合,以提高复杂环境中的自主导航能力。 在本文中,完全卷积的残余网络用于识别获得深度图像的障碍。 避免障碍路径计划通过机器人导航中的Dueling DQN算法计划; 与此同时,环境的2D地图是基于Fastslam而构建的。 实验表明,该算法可以成功识别和避免在环境中具有不同数量的移动和静态障碍物,并在复杂环境中实现机器人的自主导航。

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