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Spatiotemporal Analysis of Sensor Logs using Growth Ring Maps

机译:使用生长环图的传感器日志的时空分析

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Abstract—Spatiotemporal analysis of sensor logs is a challenging research field due to three facts: a) traditional two-dimensional maps do not support multiple events to occur at the same spatial location, b) three-dimensional solutions introduce ambiguity and are hard to navigate, and c) map distortions to solve the overlap problem are unfamiliar to most users. This paper introduces a novel approach to represent spatial data changing over time by plotting a number of non-overlapping pixels, close to the sensor positions in a map. Thereby, we encode the amount of time that a subject spent at a particular sensor to the number of plotted pixels. Color is used in a twofold manner; while distinct colors distinguish between sensor nodes in different regions, the colors’ intensity is used as an indicator to the temporal property of the subjects’ activity. The resulting visualization technique, called Growth Ring Maps, enables users to find similarities and extract patterns of interest in spatiotemporal data by using humans’ perceptual abilities. We demonstrate the newly introduced technique on a dataset that shows the behavior of healthy and Alzheimer transgenic, male and female mice. We motivate the new technique by showing that the temporal analysis based on hierarchical clustering and the spatial analysis based on transition matrices only reveal limited results. Results and findings are cross-validated using multidimensional scaling. While the focus of this paper is to apply our visualization for monitoring animal behavior, the technique is also applicable for analyzing data, such as packet tracing, geographic monitoring of sales development, or mobile phone capacity planning.
机译:摘要—由于以下三个事实,对传感器日志的时空分析是一个具有挑战性的研究领域:a)传统的二维地图不支持在同一空间位置发生多个事件,b)三维解决方案引入了歧义性并且难以导航和c)大多数用户都不熟悉解决重叠问题的地图变形。本文介绍了一种新颖的方法,通过绘制一些不重叠的像素(靠近地图中的传感器位置)来表示随时间变化的空间数据。因此,我们将对象在特定传感器上花费的时间编码为绘制像素的数量。颜色以双重方式使用。尽管不同的颜色区分了不同区域中的传感器节点,但是颜色的强度被用作指示对象活动的时间属性的指标。由此产生的可视化技术称为“成长环图”,使用户能够利用人类的感知能力找到相似之处并提取时空数据中感兴趣的模式。我们在数据集上展示了新引入的技术,该数据集显示了健康和阿尔茨海默氏病转基因雄性和雌性小鼠的行为。我们通过表明基于层次聚类的时间分析和基于过渡矩阵的空间分析仅揭示有限的结果来激励新技术。使用多维标度对结果和发现进行交叉验证。尽管本文的重点是将可视化应用于监视动物行为,但该技术也适用于分析数据,例如数据包跟踪,销售开发的地理监视或手机容量规划。

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