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Introducing separable utility regions in a motivational engine for cognitive developmental robotics

机译:引进可分离的公用事业区域,用于认知发育机器人的动机发动机

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摘要

Cognitive Developmental Robotics relies on lifelong open-ended learning processes, where mechanisms are needed to allow the robot to self-discover and self-select goals as well as to self-define its state space evaluation with regards to them. Thus, this paper addresses the problem of finding and using goals in continuous state spaces and automatically obtaining sub-goal hierarchies that allow autonomous development. In particular, the main purpose of this paper is to propose a new approach to the creation of utility models based on the concept of separable utility regions (SURs), which reduce the complexity of standard value function like utility models. These regions exhibit a correlation between the expected utility and the response of one sensor of the robot. Once they are discovered, the evaluation of the candidate states is only based on the changes of one sensor, which provides a strong independence from noise or dynamism in the utility models. A non-static variation of the classical collect-a-ball scenario and a robot gathering problem were used to test this approach in simulation and on real robots in order to identify goals and sub-goals in an autonomous way. The results confirm the good response of the method as a highly promising approach towards autonomous learning of continuous domains in cognitive robotics.
机译:认知发育机器人依赖于终身开放式学习过程,其中需要机器人允许机器人自我发现和自我选择的目标以及对其进行自我定义其状态空间评估。因此,本文解决了在连续状态空间中找到和使用目标的问题,并自动获取允许自主开发的子目标层次结构。特别是,本文的主要目的是提出基于可分离公用事业区域(SUS)的概念的效用模型创建新方法,这降低了标准值函数的复杂性,如实用程序。这些区域表现出预期效用与机器人的一个传感器的响应之间的相关性。一旦发现它们,候选国家的评估就是基于一个传感器的变化,这在实用程序模型中提供了噪声或动力的强烈独立性。经典收集 - A-Ball场景的非静态变化和机器人收集问题用于测试模拟和真实机器人的方法,以便以自主方式识别目标和子目标。结果证实了该方法的良好反应作为认知机器人中连续域的自主学习的高度有希望的方法。

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