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arxiv: 1603.02618 · v2 · pith:6CJJM322new · submitted 2016-03-08 · 💻 cs.CL · cs.CV

The red one!: On learning to refer to things based on their discriminative properties

classification 💻 cs.CL cs.CV
keywords attributesdiscriminativelearningpropertiesvisualagentsassignattribute
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As a first step towards agents learning to communicate about their visual environment, we propose a system that, given visual representations of a referent (cat) and a context (sofa), identifies their discriminative attributes, i.e., properties that distinguish them (has_tail). Moreover, despite the lack of direct supervision at the attribute level, the model learns to assign plausible attributes to objects (sofa-has_cushion). Finally, we present a preliminary experiment confirming the referential success of the predicted discriminative attributes.

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