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Multi-feature Fusion for Deep Reinforcement Learning: Sequential Control of Mobile Robots

机译:用于深度强化学习的多功能融合:移动机器人的顺序控制

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Compared with traditional motion planners, deep reinforcement learning has been applied more and more widely to achieving sequential behaviours control of mobile robots in indoor environment. However, the state of robot in deep reinforcement learning is commonly obtained through single sensor, which lacks accuracy and stability. In this paper, we propose a novel approach called multi-feature fusion framework. The multi-feature fusion framework utilizes multiple sensors to gather different scene images around the robot. Once environment information is gathered, a well-trained autoencoder achieves the fusion and extraction of multiple visual features. With more accurate and stable states extracted from the autoencoder, we train the mobile robot to patrol and navigate in 3D simulation environment with an asynchronous deep reinforcement learning algorithm. Extensive simulation experiments demonstrate that the proposed multi-feature fusion framework improves not only the convergence rate of training phase but also the testing performance of the mobile robot.
机译:与传统的运动计划器相比,深度强化学习已越来越广泛地应用于实现室内环境中移动机器人的顺序行为控制。但是,机器人在深度强化学习中的状态通常是通过单个传感器获得的,缺乏准确性和稳定性。在本文中,我们提出了一种新颖的方法,称为多特征融合框架。多功能融合框架利用多个传感器在机器人周围收集不同的场景图像。收集环境信息后,训练有素的自动编码器即可实现多种视觉特征的融合和提取。通过从自动编码器中提取更准确和稳定的状态,我们使用异步深度强化学习算法训练移动机器人在3D仿真环境中巡逻和导航。大量的仿真实验表明,提出的多特征融合框架不仅提高了训练阶段的收敛速度,而且提高了移动机器人的测试性能。

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