一个交互式的基于网络的可视化分析工具,用于检测战略性眼球运动模式

Michael Burch, Ayush Kumar, Neil Timmermans
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引用次数: 16

摘要

在本文中,我们描述了一个交互式的基于web的可视化分析工具,结合了链接可视化技术和算法方法,用于探索一组人在静态刺激下解决任务时的分层视觉扫描行为。这样做的好处是,记录的眼球运动数据可以以一种更有条理的方式观察,目的是找到一组眼球追踪者的共同扫描行为模式。为了实现这一目标,我们首先根据先前定义的兴趣区域(aoi)对扫描路径进行预处理和聚合,从而生成加权有向图。我们将生成的AOI图可视化地表示为修改后的分层图布局。这可以用来过滤和导航在单独的视图中显示的眼动数据,覆盖在刺激上,以保留心理地图,并提供对原始刺激语义的直观视图。实现了几种交互技术和带有可视化的互补视图。此外,由于该工具基于web的特性,用户可以与其他人上传、共享和探索数据。为了说明我们的概念的实用性,我们将其应用于以前进行的眼动追踪实验的真实眼动数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An interactive web-based visual analytics tool for detecting strategic eye movement patterns
In this paper we describe an interactive and web-based visual analytics tool combining linked visualization techniques and algorithmic approaches for exploring the hierarchical visual scanning behavior of a group of people when solving tasks in a static stimulus. This has the benefit that the recorded eye movement data can be observed in a more structured way with the goal to find patterns in the common scanning behavior of a group of eye tracked people. To reach this goal we first preprocess and aggregate the scanpaths based on formerly defined areas of interest (AOIs) which generates a weighted directed graph. We visually represent the resulting AOI graph as a modified hierarchical graph layout. This can be used to filter and navigate in the eye movement data shown in a separate view overplotted on the stimulus for preserving the mental map and for providing an intuitive view on the semantics of the original stimulus. Several interaction techniques and complementary views with visualizations are implemented. Moreover, due to the web-based nature of the tool, users can upload, share, and explore data with others. To illustrate the usefulness of our concept we apply it to real-world eye movement data from a formerly conducted eye tracking experiment.
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