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

机译:“红色的!”:关于学习基于判别属性的事物

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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, although supervision is only provided in terms of discriminativeness of attributes for pairs, the model learns to assign plausible attributes to specific objects (SOFA-has_cushion). Finally, we present a preliminary experiment confirming the referential success of the predicted discriminative attributes.
机译:作为代理商学习交流其视觉环境的第一步,我们提出了一个系统,该系统在给定对象(CAT)和上下文(SOFA)的视觉表示的情况下,识别其区分属性,即区分它们的属性(has_tail) 。此外,尽管仅根据对属性的区分性提供监视,但是该模型学会了将合理的属性分配给特定对象(SOFA-has_cushion)。最后,我们提出了一项初步实验,确认了预测的歧视属性的参考成功。

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