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Analyzing the Effect of Different Partial Overlap Sizes in Perceiving Visual Variables

机译:分析不同的部分重叠大小对感知视觉变量的影响

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摘要

Element overlap in visualization techniques is a known problem, and high amounts of data and lack of available visual space potentialize this issue. Many studies have applied techniques to reduce occlusion levels in data visualizations, such as random jitter, element transparency, layout rearrangement, and focus+context techniques. However, few studies focus on the presence of occlusion, which is a relevant topic for visualizations where some degree of overlap is inevitable or purposefully explored. This paper takes a step in this direction, and presents a comparative study of visual variables, measuring their robustness to overlap and number of unique values. The study used a grid layout to display visual variables (hue, saturation, shape, text, orientation, and texture), and varied percentage of occlusion (0%, 50%, 60%, and 70%) and number of unique values (3, 4, and 5) to measure the effect they cause on the speed and accuracy to locate the visual variables. Hence, 48 volunteers performed locate tasks on a tool that automatically generate a grid of visual variables and collect their answers. The results revealed that hue and shape were robust to high occlusion levels and a high number of unique values. Text and texture had medium loss of performance, while saturation and orientation were the most negatively affected.
机译:可视化技术中的元素重叠是一个已知问题,而大量数据和可用可视空间的缺乏可能会导致此问题。许多研究已经应用了降低数据可视化中遮挡级别的技术,例如随机抖动,元素透明性,布局重排以及焦点+上下文技术。但是,很少有研究关注遮挡的存在,这是无法避免或有目的地探索某种程度的重叠的可视化的相关主题。本文朝这个方向迈出了一步,并对视觉变量进行了比较研究,测量了它们对重叠的鲁棒性和唯一值的数量。该研究使用网格布局来显示视觉变量(色相,饱和度,形状,文本,方向和纹理),以及不同的遮挡百分比(0%,50%,60%和70%)和唯一值数量( 3、4和5),以测量它们对定位视觉变量的速度和准确性造成的影响。因此,有48位志愿者在自动生成视觉变量网格并收集其答案的工具上执行了定位任务。结果表明,色相和形状对于高遮挡水平和大量唯一值具有鲁棒性。文本和纹理的性能损失中等,而饱和度和方向受到的负面影响最大。

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