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Object Counts! Bringing Explicit Detections Back into Image Captioning

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arxiv 1805.00314 v1 pith:MVQDRVDE submitted 2018-04-23 cs.CV cs.AIcs.CL

Object Counts! Bringing Explicit Detections Back into Image Captioning

classification cs.CV cs.AIcs.CL
keywords imagecaptioningend-to-endobjectdetectionsexplicitdifferentrepresentation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The use of explicit object detectors as an intermediate step to image captioning - which used to constitute an essential stage in early work - is often bypassed in the currently dominant end-to-end approaches, where the language model is conditioned directly on a mid-level image embedding. We argue that explicit detections provide rich semantic information, and can thus be used as an interpretable representation to better understand why end-to-end image captioning systems work well. We provide an in-depth analysis of end-to-end image captioning by exploring a variety of cues that can be derived from such object detections. Our study reveals that end-to-end image captioning systems rely on matching image representations to generate captions, and that encoding the frequency, size and position of objects are complementary and all play a role in forming a good image representation. It also reveals that different object categories contribute in different ways towards image captioning.

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