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Exploring Errors in Reading a Visualization via Eye Tracking Models Using Stochastic Geometry

机译:探索使用随机几何通过眼动追踪模型读取可视化效果时的错误

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Information visualizations of quantitative data are rapidly becoming more complex as the dimension and volume of data increases. Critical to modern applications, an information visualization is used to communicate numeric data using objects such as lines, rectangles, bars, circles, and so forth. Via visual inspection, the viewer assigns numbers to these objects using their geometric properties of size and shape. Any difference between this estimation and the desired numeric value we call the "visual measurement error". The research objective of this paper is to propose models of the visual measure error utilizing stochastic geometry. The fundamental technique in building our models is the conceptualization of eye fixation points as might be determined by an eye-tracking experiment of viewers estimating size and shape of a visualization's object configurations. The fixation points are first considered as a stochastic point process whose characteristics require comment before proceeding to the statistical shape analysis of the visualization. Once clarified the fixation points are reinterpreted as a sampling of the shape and size of the landmark configurations of geometric landmarks on the visualization. The ultimate end of these models is to find optimal shape and size parameters leading to minimum visual measurement error.
机译:随着数据的规模和数量的增加,定量数据的信息可视化正变得越来越复杂。对于现代应用程序而言至关重要的是,信息可视化用于使用诸如线条,矩形,条形图,圆形等对象来传递数值数据。通过视觉检查,查看器使用其大小和形状的几何属性为这些对象分配编号。此估算值与所需数值之间的任何差异都称为“视觉测量误差”。本文的研究目的是提出利用随机几何的视觉测量误差模型。建立模型的基本技术是对眼睛注视点的概念化,这可以由观察者的眼动实验来确定,这些观察者估计可视化对象配置的大小和形状。固定点首先被认为是随机点过程,其特征在进行可视化的统计形状分析之前需要进行注释。澄清后,将固定点重新解释为可视化图形上几何界标的界标配置的形状和大小的采样。这些模型的最终目的是找到导致最小的视觉测量误差的最佳形状和尺寸参数。

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