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Dettagli Bibliografici
Autori principali: Madan, Spandan, Bylinskii, Zoya, Tancik, Matthew, Recasens, Adrià, Zhong, Kimberli, Alsheikh, Sami, Pfister, Hanspeter, Oliva, Aude, Durand, Fredo
Natura: Preprint
Pubblicazione: 2018
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Accesso online:https://arxiv.org/abs/1807.10441
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author Madan, Spandan
Bylinskii, Zoya
Tancik, Matthew
Recasens, Adrià
Zhong, Kimberli
Alsheikh, Sami
Pfister, Hanspeter
Oliva, Aude
Durand, Fredo
author_facet Madan, Spandan
Bylinskii, Zoya
Tancik, Matthew
Recasens, Adrià
Zhong, Kimberli
Alsheikh, Sami
Pfister, Hanspeter
Oliva, Aude
Durand, Fredo
contents Widely used in news, business, and educational media, infographics are handcrafted to effectively communicate messages about complex and often abstract topics including `ways to conserve the environment' and `understanding the financial crisis'. Composed of stylistically and semantically diverse visual and textual elements, infographics pose new challenges for computer vision. While automatic text extraction works well on infographics, computer vision approaches trained on natural images fail to identify the stand-alone visual elements in infographics, or `icons'. To bridge this representation gap, we propose a synthetic data generation strategy: we augment background patches in infographics from our Visually29K dataset with Internet-scraped icons which we use as training data for an icon proposal mechanism. On a test set of 1K annotated infographics, icons are located with 38% precision and 34% recall (the best model trained with natural images achieves 14% precision and 7% recall). Combining our icon proposals with icon classification and text extraction, we present a multi-modal summarization application. Our application takes an infographic as input and automatically produces text tags and visual hashtags that are textually and visually representative of the infographic's topics respectively.
format Preprint
id arxiv_https___arxiv_org_abs_1807_10441
institution arXiv
publishDate 2018
record_format arxiv
spellingShingle Synthetically Trained Icon Proposals for Parsing and Summarizing Infographics
Madan, Spandan
Bylinskii, Zoya
Tancik, Matthew
Recasens, Adrià
Zhong, Kimberli
Alsheikh, Sami
Pfister, Hanspeter
Oliva, Aude
Durand, Fredo
Computer Vision and Pattern Recognition
Widely used in news, business, and educational media, infographics are handcrafted to effectively communicate messages about complex and often abstract topics including `ways to conserve the environment' and `understanding the financial crisis'. Composed of stylistically and semantically diverse visual and textual elements, infographics pose new challenges for computer vision. While automatic text extraction works well on infographics, computer vision approaches trained on natural images fail to identify the stand-alone visual elements in infographics, or `icons'. To bridge this representation gap, we propose a synthetic data generation strategy: we augment background patches in infographics from our Visually29K dataset with Internet-scraped icons which we use as training data for an icon proposal mechanism. On a test set of 1K annotated infographics, icons are located with 38% precision and 34% recall (the best model trained with natural images achieves 14% precision and 7% recall). Combining our icon proposals with icon classification and text extraction, we present a multi-modal summarization application. Our application takes an infographic as input and automatically produces text tags and visual hashtags that are textually and visually representative of the infographic's topics respectively.
title Synthetically Trained Icon Proposals for Parsing and Summarizing Infographics
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/1807.10441