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首页> 外文期刊>Autonomous Mental Development, IEEE Transactions on >A Behavior-Grounded Approach to Forming Object Categories: Separating Containers From Noncontainers
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A Behavior-Grounded Approach to Forming Object Categories: Separating Containers From Noncontainers

机译:基于行为的方法来形成对象类别:将容器与非容器分开

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摘要

This paper introduces a framework that allows a robot to form a single behavior-grounded object categorization after it uses multiple exploratory behaviors to interact with objects and multiple sensory modalities to detect the outcomes that each behavior produces. Our robot observed acoustic and visual outcomes from six different exploratory behaviors performed on 20 objects (containers and noncontainers). Its task was to learn 12 different object categorizations (one for each behavior–modality combination), and then to unify these categorizations into a single one. In the end, the object categorization acquired by the robot matched closely the object labels provided by a human. In addition, the robot acquired a visual model of containers and noncontainers based on its unified categorization, which it used to label correctly 29 out of 30 novel objects.
机译:本文介绍了一个框架,该框架允许机器人在使用多种探索性行为与对象进行交互以及使用多种感官模式检测每种行为产生的结果之后,形成一个基于行为的对象分类。我们的机器人观察了对20个对象(容器和非容器)进行的六种不同探索行为的听觉和视觉结果。它的任务是学习12种不同的对象分类(每种行为-模式组合一个),然后将这些分类统一为一个。最后,由机器人获取的对象分类与人类提供的对象标签紧密匹配。此外,该机器人还基于统一的分类方法获得了一个容器和非容器的可视化模型,用于正确标记30个新对象中的29个。

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