用于显示分子表面不确定性的共线变量的感知评价

A. Sterzik, N. Lichtenberg, M. Krone, D. Cunningham, K. Lawonn
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引用次数: 4

摘要

数据通常有一定程度的不确定性,无论是偶然的还是认知的。这既适用于用传感器获得的实验数据,也适用于模拟数据。忠实地显示这些数据及其不确定性对于获取知识至关重要。具体而言,不确定性的有效沟通会影响数据的解释和用户对可视化的信任。然而,不确定性感知可视化在分子可视化中很少受到关注。当使用已建立的分子表示时,分子数据的物理化学属性通常已经占据了常见的视觉通道,如形状、大小和颜色。因此,为了对不确定性信息进行编码,我们需要利用特征线开辟另一条通道。尽管已经提出了用于不确定性可视化的各种线变量,但迄今为止,它们主要用于二维数据,并且很少有感知评估。因此,我们进行了一项感性研究,以确定线条变量草图度、冲淡度、灰度和宽度的适用性,以区分分子表面上的几个不确定值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perceptual Evaluation of Common Line Variables for Displaying Uncertainty on Molecular Surfaces
Data are often subject to some degree of uncertainty, whether aleatory or epistemic. This applies both to experimental data acquired with sensors as well as to simulation data. Displaying these data and their uncertainty faithfully is crucial for gaining knowledge. Specifically, the effective communication of the uncertainty can influence the interpretation of the data and the users’ trust in the visualization. However, uncertainty-aware visualization has gotten little attention in molecular visualization. When using the established molecular representations, the physicochemical attributes of the molecular data usually already occupy the common visual channels like shape, size, and color. Consequently, to encode uncertainty information, we need to open up another channel by using feature lines. Even though various line variables have been proposed for uncertainty visualizations, they have so far been primarily used for two-dimensional data and there has been little perceptual evaluation. Therefore, we conducted a perceptual study to determine the suitability of the line variables sketchiness, dashing, grayscale, and width for distinguishing several uncertainty values on molecular surfaces.
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