Stable Visual Summaries for Trajectory Collections

J. Wulms, J. Buchmüller, Wouter Meulemans, Kevin Verbeek, B. Speckmann
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引用次数: 5

Abstract

The availability of devices that track moving objects has led to an explosive growth in trajectory data. When exploring the resulting large trajectory collections, visual summaries are a useful tool to identify time intervals of interest. A typical approach is to represent the spatial positions of the tracked objects at each time step via a one-dimensional ordering; visualizations of such orderings can then be placed in temporal order along a time line. There are two main criteria to assess the quality of the resulting visual summary: spatial quality – how well does the ordering capture the structure of the data at each time step, and stability – how coherent are the orderings over consecutive time steps or temporal ranges?In this paper we introduce a new Stable Principal Component (SPC) method to compute such orderings, which is explicitly parameterized for stability, allowing a trade-off between the spatial quality and stability. We conduct extensive computational experiments that quantitatively compare the orderings produced by ours and other stable dimensionality-reduction methods to various state-of-the-art approaches using a set of well-established quality metrics that capture spatial quality and stability. We conclude that stable dimensionality reduction outperforms existing methods on stability, without sacrificing spatial quality or efficiency; in particular, our new SPC method does so at a fraction of the computational costs.
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稳定的视觉总结轨迹集合
跟踪移动物体的设备的可用性导致了轨迹数据的爆炸式增长。当探索产生的大型轨迹集合时,可视化摘要是识别感兴趣的时间间隔的有用工具。一种典型的方法是通过一维排序来表示跟踪对象在每个时间步长的空间位置;这种排序的可视化可以沿着时间线放置在时间顺序中。评估结果可视化摘要的质量有两个主要标准:空间质量——排序在每个时间步捕获数据结构的程度;稳定性——在连续时间步或时间范围内排序的一致性如何?在本文中,我们引入了一种新的稳定主成分(SPC)方法来计算这种排序,该方法被明确地参数化以保证稳定性,从而在空间质量和稳定性之间进行权衡。我们进行了大量的计算实验,定量地比较了我们和其他稳定降维方法产生的排序与各种最先进的方法,使用一套完善的质量指标来捕获空间质量和稳定性。在不牺牲空间质量和效率的前提下,稳定降维方法在稳定性方面优于现有方法;特别是,我们的新的SPC方法在计算成本的一小部分这样做。
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