对凝视数据进行探索性分析的有用方法:增强的热图、聚类图和过渡图

Poika Isokoski, J. Kangas, P. Majaranta
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引用次数: 8

摘要

凝视数据的探索性分析需要能够在最小化人力劳动的同时处理大量数据的方法。探索凝视数据的传统方法是构建热图可视化。虽然简单直观,但传统的热图并不能清楚地表明不同观众群体之间的差异,也不能估计其可重复性(即,如果再次收集数据,热图的哪些部分看起来相似)。我们将讨论满足这些需求的差异图和重要性图。此外,我们描述了基于自动聚类的方法,使我们能够通过聚类观察图和过渡图获得类似的结果。正如我们的示例数据所示,这些方法比传统的热图更有效地突出了组间最大的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Useful approaches to exploratory analysis of gaze data: enhanced heatmaps, cluster maps, and transition maps
Exploratory analysis of gaze data requires methods that make it possible to process large amounts of data while minimizing human labor. The conventional approach in exploring gaze data is to construct heatmap visualizations. While simple and intuitive, conventional heatmaps do not clearly indicate differences between groups of viewers or give estimates for the repeatability (i.e., which parts of the heatmap would look similar if the data were collected again). We discuss difference maps and significance maps that answer to these needs. In addition we describe methods based on automatic clustering that allow us to achieve similar results with cluster observation maps and transition maps. As demonstrated with our example data, these methods are effective in highlighting the strongest differences between groups more effectively than conventional heatmaps.
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