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An architecture for emotional and context-aware associative learning for robot companions

机译:用于机器人同伴的情感和情境感知联想学习的架构

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This work proposes a theoretical architectural model based on the brain's fear learning system with the purpose of generating artificial fear conditioning at both stimuli and context abstraction levels in robot companions. The proposed architecture is inspired by the different brain regions involved in fear learning, here divided into four modules that work in an integrated and parallel manner: the sensory system, the amygdala system, the hippocampal system and the working memory. Each of these modules is based on a different approach and performs a different task in the process of learning and memorizing environmental cues to predict the occurrence of unpleasant situations. The main contribution of the model proposed here is the integration of fear learning and context awareness in order to fuse emotional and contextual artificial memories. The purpose is to provide robots with more believable social responses, leading to more natural interactions between humans and robots.
机译:这项工作提出了一种基于大脑恐惧学习系统的理论架构模型,目的是在机器人同伴的刺激和情境抽象级别上产生人工恐惧条件。拟议的架构受到参与恐惧学习的不同大脑区域的启发,这里分为四个模块,这些模块以集成和并行的方式工作:感觉系统,杏仁核系统,海马系统和工作记忆。这些模块中的每个模块都基于不同的方法,并且在学习和记忆环境线索以预测不愉快情况的发生的过程中执行不同的任务。这里提出的模型的主要贡献是恐惧学习和情境意识的整合,以融合情感和情境的人工记忆。目的是为机器人提供更可信的社会反应,从而导致人与机器人之间更自然的互动。

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