Extracting Semantics of Individual Places from Movement Data by Analyzing Temporal Patterns of Visits

IF 0.1 0 LITERATURE
G. Andrienko, N. Andrienko, G. Fuchs, A. Raimond, J. Symanzik, Cezary Ziemlicki
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引用次数: 38

Abstract

Data reflecting movements of people, such as GPS or GSM tracks, can be a source of information about mobility behaviors and activities of people. Such information is required for various kinds of spatial planning in the public and business sectors. Movement data by themselves are semantically poor. Meaningful information can be derived by means of interactive visual analysis performed by a human expert; however, this is only possible for data about a small number of people. We suggest an approach that allows scaling to large datasets reflecting movements of numerous people. It includes extracting stops, clustering them for identifying personal places of interest (POIs), and creating temporal signatures of the POIs characterizing the temporal distribution of the stops with respect to the daily and weekly time cycles and the time line. The analyst can give meanings to selected POIs based on their temporal signatures (i.e., classify them as home, work, etc.), and then POIs with similar signatures can be classified automatically. We demonstrate the possibilities for interactive visual semantic analysis by example of GSM, GPS, and Twitter data. GPS data allow inferring richer semantic information, but temporal signatures alone may be insufficient for interpreting short stops. Twitter data are similar to GSM data but additionally contain message texts, which can help in place interpretation. We plan to develop an intelligent system that learns how to classify personal places and trips while a human analyst visually analyzes and semantically annotates selected subsets of movement data.
从运动数据中提取个体地点语义的时间模式分析
反映人员移动的数据,如GPS或GSM轨迹,可以成为有关人员移动行为和活动的信息来源。公共和商业部门的各种空间规划都需要这些信息。运动数据本身在语义上很差。有意义的信息可以通过由人类专家执行的交互式可视化分析来获得;然而,这只适用于一小部分人的数据。我们建议一种方法,允许扩展到反映许多人运动的大型数据集。它包括提取站点,将它们聚类以识别个人兴趣地点(poi),并创建poi的时间签名,以表征站点相对于每日和每周时间周期和时间线的时间分布。分析人员可以根据所选的poi的时间签名(即,将它们分类为家庭、工作等)赋予其含义,然后可以自动对具有相似签名的poi进行分类。我们通过GSM、GPS和Twitter数据的示例来演示交互式可视化语义分析的可能性。GPS数据允许推断更丰富的语义信息,但时间特征本身可能不足以解释短暂停留。Twitter数据类似于GSM数据,但另外包含消息文本,这有助于就地解释。我们计划开发一个智能系统,学习如何对个人地点和旅行进行分类,而人类分析师则对选定的运动数据子集进行视觉分析和语义注释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Comparatist
Comparatist LITERATURE-
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