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首页> 外文期刊>International Journal of Advanced Robotic Systems >Toward navigation ability for autonomous mobile robots with learning from demonstration paradigm: A view of hierarchical temporal memory
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Toward navigation ability for autonomous mobile robots with learning from demonstration paradigm: A view of hierarchical temporal memory

机译:通过演示范例学习自主移动机器人的导航能力:分层时间记忆的观点

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Learning from demonstration, as an important component of imitation learning, is a paradigm for robot to learn new tasks. Considering the application of learning from demonstration in the navigation issue, the robot can also acquire the navigation task via the human teachera??s demonstration. Based on research of the human brain neocortex, in this article, we present a learning from demonstration navigation paradigm from the perspective of hierarchical temporal memory theory. As a type of end-to-end learning form, the demonstrated relationship between perception data and motion commands will be learned and predicted by using hierarchical temporal memory. This framework first perceives images to obtain the corresponding categories information; then the categories incorporated with depth and motion command data are encoded as a sequence of sparse distributed representation vectors. The sequential vectors are treated as the inputs to train the navigation hierarchical temporal memory. After the training, the navigation hierarchical temporal memory stores the transitions of the perceived images, depth, and motion data so that future motion commands can be predicted. The performance of the proposed navigation strategy is evaluated via the real experiments and the public data sets.
机译:从演示中学习是模仿学习的重要组成部分,是机器人学习新任务的范例。考虑到从演示中学习的应用在导航问题中,机器人还可以通过人类老师的演示来获取导航任务。在对人类大脑新皮层的研究的基础上,我们从分层时间记忆理论的角度介绍了演示导航范式的学习。作为一种端到端的学习形式,将通过使用分层的时间记忆来学习和预测感知数据和运动命令之间的关系。该框架首先感知图像以获得对应的类别信息;然后,然后,将结合深度和运动命令数据的类别编码为一系列稀疏分布的表示向量。顺序向量被视为训练导航分层时间记忆的输入。在训练之后,导航分层时间存储器存储感知到的图像,深度和运动数据的过渡,以便可以预测将来的运动命令。通过实际实验和公共数据集评估了所提出的导航策略的性能。

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