基于注视指数的网页文本与图像视觉特征的相关性研究

Sandeep Vidyapu, V. Saradhi, S. Bhattacharya
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引用次数: 4

摘要

Web元素根据其数据模式与一组视觉特性相关联。例如,文本与字体大小和字体族相关,而图像与强度和颜色相关。将这些异质视觉特征联系起来的方法的缺乏限制了基于注意力的网页分析。在本文中,我们提出了一种新的方法来建立影响用户注意力的文本和图像视觉特征之间的相关性。我们根据从眼动追踪中获得的相关注视指数对文本和图像的视觉特征进行配对。利用典型相关分析(Canonical Correlation Analysis, CCA)从成对数据中学习公共子空间,使它们之间的相关性最大化。通过在51个真实网页上进行的眼动跟踪实验,分析了该方法的性能。文本和图像之间的相关性达到99.48%,其中与文本相关的字体族和与图像相关的颜色特征会影响相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fixation-indices based correlation between text and image visual features of webpages
Web elements associate with a set of visual features based on their data modality. For example, text associated with font-size and font-family whereas images associate with intensity and color. The unavailability of methods to relate these heterogeneous visual features limiting the attention-based analyses on webpages. In this paper, we propose a novel approach to establish the correlation between text and image visual features that influence users' attention. We pair the visual features of text and images based on their associated fixation-indices obtained from eye-tracking. From paired data, a common subspace is learned using Canonical Correlation Analysis (CCA) to maximize the correlation between them. The performance of the proposed approach is analyzed through a controlled eye-tracking experiment conducted on 51 real-world webpages. A very high correlation of 99.48% is achieved between text and images with text related font families and image related color features influencing the correlation.
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