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Modeling How Humans Judge Dot-Label Relations in Point Cloud Visualizations

机译:模拟人类如何判断点云可视化中的点标题关系

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When point clouds are labeled in information visualization applications, sophisticated guidelines as in cartography do not yet exist. Existing naive strategies may mislead as to which points belong to which label. To inform improved strategies, we studied factors influencing this phenomenon. We derived a class of labeled point cloud representations from existing applications and we defined different models predicting how humans interpret such complex representations, focusing on their geometric properties. We conducted an empirical study, in which participants had to relate dots to labels in order to evaluate how well our models predict. Our results indicate that presence of point clusters, label size, and angle to the label have an effect on participants' judgment as well as that the distance measure types considered perform differently discouraging the use of label centers as reference points.
机译:当点云标记为信息可视化应用程序时,尚不存在制图中的复杂指南。现有的天真策略可能会误导哪个点属于哪个标签。为了提供改进的策略,我们研究了影响这种现象的因素。我们从现有应用程序中派生了一类标记的点云表示,我们定义了预测人类如何解释这种复杂表示的不同模型,专注于它们的几何属性。我们进行了一项实证研究,其中参与者必须将DOTS与标签相关联,以便评估模型预测的程度。我们的结果表明,点簇,标签尺寸和角度与标签的存在对参与者的判断以及所考虑的距离测量类型的判断产生不同地阻止标签中心作为参考点的使用。

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