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Visually driven analysis of movement data by progressive clustering

机译:通过逐步聚类以视觉驱动的方式对运动数据进行分析

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摘要

The paper investigates the possibilities of using clustering techniques in visual exploration and analysis of large numbers of trajectories, that is, sequences of time-stamped locations of some moving entities. Trajectories are complex spatio-temporal constructs characterized by diverse nonrtrivial,properties. To assess the degree of (dis)similarity between trajectories, specific methods (distance functions) are required. A single distance function accounting for all properties of trajectories, (1) is difficult to build, (2) would require much time to compute, and (3) might be difficult to understand and to use. We suggest the procedure of progressive clustering where a simple distance function with a clear meaning is applied on each step, which leads to easily interpretable outcomes. Successive application of several different functions enables sophisticated analyses through gradual refinement of earlier obtained results. Besides the advantages from the sense-making perspective, progressive clustering enables a rational work organization where time-consuming computations are applied to relatively small potentially interesting subsets obtained by means of 'cheap' distance functions producing quick results. We introduce the concept of progressive clustering by an example of analyzing a large real data set. We also review the existing clustering methods, describe the method OPTICS suitable for progressive clustering of trajectories, and briefly present several distance functions for trajectories.
机译:本文研究了在视觉探索和分析大量轨迹(即一些移动实体的带时间戳位置的序列)中使用聚类技术的可能性。轨迹是复杂的时空构造,其特征是具有多种非曲折特性。为了评估轨迹之间的(不相似)程度,需要特定的方法(距离函数)。考虑到轨迹所有属性的单个距离函数,(1)难以建立,(2)需要大量时间来计算,(3)可能难以理解和使用。我们建议进行逐步聚类的过程,其中在每个步骤上应用一个简单的具有明确含义的距离函数,从而可以轻松解释结果。通过逐步完善先前获得的结果,几个不同功能的连续应用可以进行复杂的分析。除了从做出感觉的角度来看的优势外,渐进式聚类还可以实现合理的工作组织,其中将耗时的计算应用于通过“便宜”距离函数产生快速结果而获得的相对较小的潜在有趣子集。我们以分析大型真实数据集为例介绍渐进式聚类的概念。我们还回顾了现有的聚类方法,描述了适用于轨迹渐进式聚类的OPTICS方法,并简要介绍了轨迹的几种距离函数。

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