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A Semi-supervised Method for Learning the Structure of Robot Environment Interactions

机译:一种学习机器人环境互动结构的半监督方法

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For a mobile robot to act autonomously, it must be able to construct a model of its interaction with the environment. Oates et al. developed an unsupervised learning method that produces clusters of robot experiences based on the dynamics of the interaction, rather than on static features. We present a semi-supervised extension of their technique that uses information about the controller and the task of the robot to (i) segment the stream of experience, (ii) optimise the final number of clusters and (iii) automatically select the individual sensors to feed to the clustering process. The technique is evaluated on a Pioneer 2 robot navigating obstacles and passing through doors in an office environment. We show that the technique is able to classify high dimensional robot time series several times the length previously handled with an accuracy of 91%.
机译:对于移动机器人自主行动,它必须能够构建与环境的互动模型。 oates等。开发了一种无监督的学习方法,基于交互的动态产生机器人体验的集群,而不是静态特征。我们介绍了他们的技术的半监督扩展,其技术使用有关控制器的信息和机器人的任务到(i)段段的经验流,(ii)优化最终群集和(iii)自动选择各个传感器馈送到聚类过程。该技术是在驾驶障碍物的先驱2机器人上进行评估,并通过办公环境中的门。我们表明,该技术能够将高维机器人时间序列分类多次以前处理的长度为91%。

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