@inproceedings{22db435cb9124ef888f947553e06d26d,
title = "Visual Attention is Attracted by Text Features Even in Scenes without Text",
abstract = "Previous studies have found that viewers{\textquoteright} attention is disproportionately attracted by texts, and one possible reason is that viewers have developed a “text detector” in their visual system to bias their attention toward text features. To verify this hypothesis, we add a text detector module to a visual attention model and test if the inclusion increases the model{\textquoteright}s ability to predict eye fixation positions, particularly in scenes without any text. A model including text detector, saliency, and center bias is found to predict viewers{\textquoteright} eye fixations better than the same model without text detector, even in text-absent images. Furthermore, adding the text detector – which was designed for English texts – improves the prediction of both English- and Chinese-speaking viewers{\textquoteright} attention but with a stronger effect for English-speaking viewers. These results support the conclusion that, due to the viewers{\textquoteright} everyday reading training, their attention in natural scenes is biased toward text features.",
keywords = "eye movements, real-world scenes, text detector, visual attention",
author = "Wang, {Hsueh Cheng} and Shijian Lu and Lim, {Joo Hwee} and Marc Pomplun",
note = "Publisher Copyright: {\textcopyright} CogSci 2012.All rights reserved.; null ; Conference date: 01-08-2012 Through 04-08-2012",
year = "2012",
language = "English",
series = "Building Bridges Across Cognitive Sciences Around the World - Proceedings of the 34th Annual Meeting of the Cognitive Science Society, CogSci 2012",
publisher = "The Cognitive Science Society",
pages = "2505--2510",
editor = "Naomi Miyake and David Peebles and Cooper, {Richard P.}",
booktitle = "Building Bridges Across Cognitive Sciences Around the World - Proceedings of the 34th Annual Meeting of the Cognitive Science Society, CogSci 2012",
}