识别和定位动态功能,以改善与其他代理的交互

S. L. Gay, Jean-Paul Jamont, Olivier L. Georgeon
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引用次数: 0

摘要

让机器人自己学习协调行动和合作,需要它们能够相互识别并具有主体间性。为了遵守人工发展学习和自我激励,我们遵循激进互动主义假设,其中智能体对其环境没有先验知识(甚至环境是二维的),并且不接受被定义为环境状态的直接函数的奖励。我们的目标是设计能够学习有效地与其他实体交互的代理,这些实体可能是静态的,也可能根据自己的动机做出不规则的动作。本文提出了识别和定位此类移动实体的新机制。智能体必须学习它对移动实体的感知和它们所提供的交互之间的关系。这些关系以数据结构的形式记录下来,称为交互签名,它在代理的观点中描述实体,并且利用其属性与远程实体进行交互。这些机制在模拟的捕食环境中进行了测试。所获得的特征表明,捕食者成功地学会了识别移动猎物及其概率运动,并在二维环境中有效地定位远处的猎物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying and localizing dynamic affordances to improve interactions with other agents
Allowing robots to learn by themselves to coordinate their actions and cooperate requires that they be able to recognize each other and be capable of intersubjectivity. To comply with artificial developmental learning and self motivation, we follow the radical interactionism hypothesis, in which an agent has no a priori knowledge on its environment (not even that the environment is 2D), and does not receive rewards defined as a direct function of the environment’s state. We aim at designing agents that learn to efficiently interact with other entities that may be static or may make irregular moves following their own motivation. This paper presents new mechanisms to identify and localize such mobile entities. The agent has to learn the relation between its perception of mobile entities and the interactions that they afford. These relations are recorded under the form of data structures, called signatures of interaction, that characterize entities in the agent’s point of view, and whose properties are exploited to interact with distant entities. These mechanisms were tested in a simulated prey-predator environment. The obtained signatures showed that the predator successfully learned to identify mobile preys and their probabilistic moves, and to efficiently localize distant preys in the 2D environment.
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