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Learning Object Attributes with Category-Free Grounded Language from Deep Featurization

Luke E. Richards, Kasra Darvish, Cynthia Matuszek

发表年份
2020
引用次数
5

摘要

While grounded language learning, or learning the meaning of language with respect to the physical world in which a robot operates, is a major area in human-robot interaction studies, most research occurs in closed worlds or domain-constrained settings. We present a system in which language is grounded in visual percepts without using categorical constraints by combining CNN-based visual featurization with natural language labels. We demonstrate results comparable to those achieved using handcrafted features for specific traits, a step towards moving language grounding into the space of fully open world recognition.

关键词

Computer scienceNatural languageArtificial intelligenceNatural language processingRobotMeaning (existential)Object (grammar)Categorical variableDomain (mathematical analysis)Human–computer interaction

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