类人机器人的概率概念网

H. Çelikkanat, Guner Orhan, Sinan Kalkan
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引用次数: 22

摘要

人们普遍认为,概念和概念化是实现人形机器人认知的关键因素。在这条道路上的一个重要问题是个体概念的基础表示及其之间的关系。在本文中,我们提出了一种基于马尔科夫随机场的概率方法来对人形机器人的概念网络进行建模,其中捕获了单个概念及其之间的关系。在这个网站中,每个单独的概念都使用我们在早期工作中提出的基于原型的概念化方法来表示。概念之间的关系与相互作用中概念的共同发生有关。通过传递来自感知、行动和语言的输入,概念网形成了关于物体、它们的启示、单词等丰富的、结构化的、有基础的信息。我们证明,给定一个交互,一个单词,或者来自一个对象的感知信息,网络中相应的概念就会被激活,就像它们在人类身上一样。此外,我们表明机器人可以在其概念网络中使用这些激活来完成几个任务,以消除其对场景的理解歧义。
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A Probabilistic Concept Web on a Humanoid Robot
It is now widely accepted that concepts and conceptualization are key elements towards achieving cognition on a humanoid robot. An important problem on this path is the grounded representation of individual concepts and the relationships between them. In this article, we propose a probabilistic method based on Markov Random Fields to model a concept web on a humanoid robot where individual concepts and the relations between them are captured. In this web, each individual concept is represented using a prototype-based conceptualization method that we proposed in our earlier work. Relations between concepts are linked to the cooccurrences of concepts in interactions. By conveying input from perception, action, and language, the concept web forms rich, structured, grounded information about objects, their affordances, words, etc. We demonstrate that, given an interaction, a word, or the perceptual information from an object, the corresponding concepts in the web are activated, much the same way as they are in humans. Moreover, we show that the robot can use these activations in its concept web for several tasks to disambiguate its understanding of the scene.
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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审稿时长
3 months
期刊最新文献
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