颜色和形状的效率异常检测从自动到用户评估

IF 3.8 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Visual Informatics Pub Date : 2022-06-01 DOI:10.1016/j.visinf.2022.03.001
Loann Giovannangeli, Romain Bourqui, Romain Giot, David Auber
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引用次数: 4

摘要

高效表示的设计是探索和分析复杂或大型数据的有效方法。在这些表示中,根据表示本身的需要,用各种视觉属性对数据进行编码。为了对视觉属性做出连贯的设计选择,视觉搜索领域根据人类大脑对特征的感知提出了指导方针。然而,信息可视化表示经常需要描述比这些指导方针已验证的数据量更多的数据。此后,信息可视化社区将这些准则扩展到更广泛的参数空间。本文通过将视觉搜索理论扩展到信息可视化语境,为这一主题做出了贡献。我们考虑了一个视觉搜索任务,在这个任务中,受试者被要求在随机布置的干扰物网格中找到一个未知的异常值。为了在视觉上对分类数据进行编码,刺激被定义为颜色和形状特征。实验方案由基于机器学习模型的参数空间缩减步骤(即子采样)和用户评估组成,以验证假设和测量容量限制。结果表明,主要的困难因素是用于编码离群值的视觉属性的数量。当进行冗余编码时,显示异质性对任务没有影响。当使用一个属性进行编码时,难度取决于该属性的异质性,直到达到其容量限制(颜色为7,形状为5)。最后,当同时使用两个属性编码时,即使异质性很小,性能也会急剧下降。
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Color and Shape efficiency for outlier detection from automated to user evaluation

The design of efficient representations is well established as a fruitful way to explore and analyze complex or large data. In these representations, data are encoded with various visual attributes depending on the needs of the representation itself. To make coherent design choices about visual attributes, the visual search field proposes guidelines based on the human brain’s perception of features. However, information visualization representations frequently need to depict more data than the amount these guidelines have been validated on. Since, the information visualization community has extended these guidelines to a wider parameter space.

This paper contributes to this theme by extending visual search theories to an information visualization context. We consider a visual search task where subjects are asked to find an unknown outlier in a grid of randomly laid out distractors. Stimuli are defined by color and shape features for the purpose of visually encoding categorical data. The experimental protocol is made of a parameters space reduction step (i.e., sub-sampling) based on a machine learning model, and a user evaluation to validate hypotheses and measure capacity limits. The results show that the major difficulty factor is the number of visual attributes that are used to encode the outlier. When redundantly encoded, the display heterogeneity has no effect on the task. When encoded with one attribute, the difficulty depends on that attribute heterogeneity until its capacity limit (7 for color, 5 for shape) is reached. Finally, when encoded with two attributes simultaneously, performances drop drastically even with minor heterogeneity.

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来源期刊
Visual Informatics
Visual Informatics Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.70
自引率
3.30%
发文量
33
审稿时长
79 days
期刊最新文献
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