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Label or Message: A Large-Scale Experimental Survey of Texts and Objects Co-Occurrence

2020-07-30 11:18:10
Koki Takeshita, Juntaro Shioyama, Seiichi Uchida

Abstract

Our daily life is surrounded by textual information. Nowadays, the automatic collection of textual information becomes possible owing to the drastic improvement of scene text detectors and recognizer. The purpose of this paper is to conduct a large-scale survey of co-occurrence between visual objects (such as book and car) and scene texts with a large image dataset and a state-of-the-art scene text detector and recognizer. Especially, we focus on the function of "label" texts, which are attached to objects for detailing the objects. By analyzing co-occurrence between objects and scene texts, it is possible to observe the statistics about the label texts and understand how the scene texts will be useful for recognizing the objects and vice versa.

Abstract (translated)

URL

https://arxiv.org/abs/2007.15381

PDF

https://arxiv.org/pdf/2007.15381.pdf


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