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Clue: Cross-modal Coherence Modeling for Caption Generation

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arxiv 2005.00908 v1 pith:GP2ERJNO submitted 2020-05-02 cs.CL cs.CV

Clue: Cross-modal Coherence Modeling for Caption Generation

classification cs.CL cs.CV
keywords coherencerelationscaptioningimageimage--captioninformationmodelsneeds
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We use coherence relations inspired by computational models of discourse to study the information needs and goals of image captioning. Using an annotation protocol specifically devised for capturing image--caption coherence relations, we annotate 10,000 instances from publicly-available image--caption pairs. We introduce a new task for learning inferences in imagery and text, coherence relation prediction, and show that these coherence annotations can be exploited to learn relation classifiers as an intermediary step, and also train coherence-aware, controllable image captioning models. The results show a dramatic improvement in the consistency and quality of the generated captions with respect to information needs specified via coherence relations.

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