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引用次数: 11

摘要

眼动数据具有时空性,这使得设计合适的可视化技术成为一项具有挑战性的任务。此外,通常通过跟踪不同研究参与者的眼睛来记录眼动数据,以获得应用视觉任务解决策略的重要结果。如果我们必须处理大量的眼动数据,以数据挖掘的形式进行数据预处理是有用的,因为它可以应用于计算一组规则。它们聚合、过滤并因此减少原始数据以从中派生出模式。生成的规则集仍然足够大,可以作为可视化分析系统的输入数据。本文提出了一种结合数据挖掘和可视化的眼动数据可视化分析模型,目的是在不同时空粒度水平上对眼动数据的兴趣点(POI)和兴趣区域(AOI)相关性进行分析。这些相关性可以支持数据分析师得出可以映射到数据模式的视觉模式,即,一组眼动追踪的人具有不同概率的视觉扫描策略。我们通过将我们的数据挖掘和可视化系统应用于先前进行的调查地铁地图可读性的眼动追踪实验中记录的数据集,展示了它的有用性。
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Mining and visualizing eye movement data
Eye movement data has a spatio-temporal nature which makes the design of suitable visualization techniques a challenging task. Moreover, eye movement data is typically recorded by tracking the eyes of various study participants in order to achieve significant results about applied visual task solution strategies. If we have to deal with vast amounts of eye movement data, a data preprocessing in form of data mining is useful since it can be applied to compute a set of rules. Those aggregate, filter, and hence reduce the original data to derive patterns in it. The generated rule sets are still large enough to serve as input data for a visual analytics system. In this paper we describe a visual analysis model for eye movement data combining data mining and visualization with the goal to get an impression about point-of-interest (POI) and area-of-interest (AOI) correlations in eye movement data on different levels of spatial and temporal granularities. Those correlations can support a data analyst to derive visual patterns that can be mapped to data patterns, i.e., visual scanning strategies with different probabilities of a group of eye tracked people. We show the usefulness of our data mining and visualization system by applying it to datasets recorded in a formerly conducted eye tracking experiment investigating the readability of metro maps.
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