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首页> 外文期刊>Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on >Language Bootstrapping: Learning Word Meanings From Perception–Action Association
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Language Bootstrapping: Learning Word Meanings From Perception–Action Association

机译:语言引导:从感知-行动协会中学习单词的含义

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We address the problem of bootstrapping language acquisition for an artificial system similarly to what is observed in experiments with human infants. Our method works by associating meanings to words in manipulation tasks, as a robot interacts with objects and listens to verbal descriptions of the interactions. The model is based on an affordance network, i.e., a mapping between robot actions, robot perceptions, and the perceived effects of these actions upon objects. We extend the affordance model to incorporate spoken words, which allows us to ground the verbal symbols to the execution of actions and the perception of the environment. The model takes verbal descriptions of a task as the input and uses temporal co-occurrence to create links between speech utterances and the involved objects, actions, and effects. We show that the robot is able form useful word-to-meaning associations, even without considering grammatical structure in the learning process and in the presence of recognition errors. These word-to-meaning associations are embedded in the robot's own understanding of its actions. Thus, they can be directly used to instruct the robot to perform tasks and also allow to incorporate context in the speech recognition task. We believe that the encouraging results with our approach may afford robots with a capacity to acquire language descriptors in their operation's environment as well as to shed some light as to how this challenging process develops with human infants.
机译:我们针对人工系统解决引导语言获取的问题,类似于在人类婴儿实验中观察到的问题。当机器人与对象进行交互并听取交互的口头描述时,我们的方法通过将含义与操作任务中的单词相关联来工作。该模型基于可负担性网络,即机器人动作,机器人感知以及这些动作对对象的感知影响之间的映射。我们扩展了可负担性模型以包含口头语言,这使我们能够将言语符号植根于行动的执行和对环境的感知。该模型将任务的口头描述作为输入,并使用时间共现来创建语音表达与所涉及的对象,动作和效果之间的链接。我们证明,即使在学习过程中并且不存在识别错误​​的情况下,即使不考虑语法结构,该机器人也能够形成有用的词义关联。这些词义关联被嵌入到机器人自身对其动作的理解中。因此,它们可以直接用于指示机器人执行任务,也可以将上下文合并到语音识别任务中。我们相信,采用我们的方法所取得的令人鼓舞的结果可能使机器人能够在其操作环境中获取语言描述符,并阐明这种挑战性过程如何随着人类婴儿的发展而有所发展。

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