ViA:一个感知可视化助手

C. Healey, R. St. Amant, Mahmoud Elhaddad
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引用次数: 36

摘要

本文介绍了一种名为ViA的自动可视化助手。ViA旨在帮助用户构建感知光学可视化,以表示、探索和分析大型、复杂的多维数据集。我们通过研究人类视觉注意力控制的已知知识来解决这个问题。通过利用低级人类视觉系统,我们可以支持快速和准确可视化的双重目标。我们通过心理物理实验建立的感知指南构成了ViA的基础。ViA使用改进的人工智能混合主动规划算法来搜索感知光学数据属性到视觉特征映射。我们的感知指南被集成到评估引擎中,为给定的数据-特征映射提供评估权重,并提示如何改进该映射。ViA首先向用户询问一组关于他们的数据集和他们想要执行的分析任务的简单问题。这些问题的答案与评估引擎结合使用,以识别和智能地追求有前途的数据特征映射。结果是一组自动生成的映射,这些映射在感知上是显著的,但也尊重数据集的上下文和用户关于他们希望如何可视化数据的偏好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ViA: a perceptual visualization assistant
This paper describes an automated visualized assistant called ViA. ViA is designed to help users construct perceptually optical visualizations to represent, explore, and analyze large, complex, multidimensional datasets. We have approached this problem by studying what is known about the control of human visual attention. By harnessing the low-level human visual system, we can support our dual goals of rapid and accurate visualization. Perceptual guidelines that we have built using psychophysical experiments form the basis for ViA. ViA uses modified mixed-initiative planning algorithms from artificial intelligence to search of perceptually optical data attribute to visual feature mappings. Our perceptual guidelines are integrated into evaluation engines that provide evaluation weights for a given data-feature mapping, and hints on how that mapping might be improved. ViA begins by asking users a set of simple questions about their dataset and the analysis tasks they want to perform. Answers to these questions are used in combination with the evaluation engines to identify and intelligently pursue promising data-feature mappings. The result is an automatically-generated set of mappings that are perceptually salient, but that also respect the context of the dataset and users' preferences about how they want to visualize their data.
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