Parallel Chords: an audio-visual analytics design for parallel coordinates

Q1 Social Sciences
Elias Elmquist, Kajetan Enge, Alexander Rind, Carlo Navarra, Robert Höldrich, Michael Iber, Alexander Bock, Anders Ynnerman, Wolfgang Aigner, Niklas Rönnberg
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引用次数: 0

Abstract

One of the commonly used visualization techniques for multivariate data is the parallel coordinates plot. It provides users with a visual overview of multivariate data and the possibility to interactively explore it. While pattern recognition is a strength of the human visual system, it is also a strength of the auditory system. Inspired by the integration of the visual and auditory perception in everyday life, we introduce an audio-visual analytics design named Parallel Chords combining both visual and auditory displays. Parallel Chords lets users explore multivariate data using both visualization and sonification through the interaction with the axes of a parallel coordinates plot. To illustrate the potential of the design, we present (1) prototypical data patterns where the sonification helps with the identification of correlations, clusters, and outliers, (2) a usage scenario showing the sonification of data from non-adjacent axes, and (3) a controlled experiment on the sensitivity thresholds of participants when distinguishing the strength of correlations. During this controlled experiment, 35 participants used three different display types, the visualization, the sonification, and the combination of these, to identify the strongest out of three correlations. The results show that all three display types enabled the participants to identify the strongest correlation — with visualization resulting in the best sensitivity. The sonification resulted in sensitivities that were independent from the type of displayed correlation, and the combination resulted in increased enjoyability during usage.

Abstract Image

平行和弦:用于平行坐标的视听分析设计
平行坐标图是常用的多元数据可视化技术之一。它为用户提供了多元数据的可视化概览和交互式探索的可能性。模式识别是人类视觉系统的强项,同时也是听觉系统的强项。受日常生活中视觉和听觉感知整合的启发,我们推出了一种名为 "平行和弦 "的视听分析设计,将视觉和听觉显示结合在一起。通过与平行坐标图的坐标轴互动,"平行和弦 "可让用户利用可视化和声音化两种方式探索多元数据。为了说明该设计的潜力,我们展示了(1)原型数据模式,其中声化有助于识别相关性、聚类和异常值;(2)一个使用场景,展示了非相邻坐标轴数据的声化;以及(3)一个对照实验,研究参与者在区分相关性强度时的灵敏度阈值。在这个对照实验中,35 名参与者使用了三种不同的显示类型,即可视化、声音化和它们的组合,来识别三种相关性中最强的一种。结果显示,所有三种显示类型都能让参与者识别出最强的相关性--可视化的灵敏度最高。声化所产生的灵敏度与所显示的相关性类型无关,而组合则增加了使用过程中的乐趣。
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来源期刊
Personal and Ubiquitous Computing
Personal and Ubiquitous Computing 工程技术-电信学
CiteScore
6.60
自引率
0.00%
发文量
35
审稿时长
6-12 weeks
期刊介绍: Personal and Ubiquitous Computing publishes peer-reviewed multidisciplinary research on personal and ubiquitous technologies and services. The journal provides a global perspective on new developments in research in areas including user experience for advanced digital technologies, the Internet of Things, big data, social technologies and mobile and wearable devices.
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