基于空间数据源的人类活动识别

Zolzaya Dashdorj, Stanislav Sobolevsky, L. Serafini, C. Ratti
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引用次数: 7

摘要

最近人类活动数字痕迹大数据的出现促进了对人类行为的研究。然而,在大多数数据集中,如手机数据或GPS跟踪,通常缺少一个重要的信息层:提供人们去的时间和地点的广泛信息通常无法了解他们在那里做什么。在这种情况下,当这些信息不能直接从数据中获得时,预测人类行为的背景是一项复杂的任务,它解决了背景识别问题。为了填充这些数据的上下文信息,我们开发了一个本体和随机模型(HRBModel),该模型可以解释地理地图(如OpenStreetMap)中的语义(高级)人类行为,分析在给定区域和时间段内兴趣点(poi)的分布。人的语义行为是人的活动伴随其可能性,取决于其地点和时间。在本文中,我们基于其他定性数据源(即西班牙全国范围内的匿名银行卡交易数据)对该模型进行了扩展评估,该数据包含有关交易发生的位置和业务类别类型的上下文信息。这允许我们通过将预测的活动模式与实际观察到的活动模式相匹配来验证模型,以便稍后将其应用于无法获得此类信息的情况。该扩展评价旨在定义HRBModel预测模型的适用性,同时考虑各种类型的时空因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity recognition from spatial data sources
Recent availability of big data of digital traces of human activity boosted research on human behavior. However, in most of the datasets such as mobile phone data or GPS traces, an important layer of information is typically missing: providing an extensive information of when and where people go typically does not allow understanding of what they do there. Predicting the context of human behavior in such cases where such information is not directly available from the data is a complex task that addresses context recognition problems. To fill in the contextual information for such data, we developed an ontological and stochastic model (HRBModel) that interprets semantic (high-level) human behaviors from geographical maps like OpenStreetMap, analyzing the distribution of Points of Interest(POIs), in a given region and time period. The semantic human behaviors are human activities that are accompanied by their likelihood, depending on their location and time. In this paper, we perform an extended evaluation of this model based on other qualitative data source, namely a country-wide anonymized bank card transaction data in Spain, which contains contextual information about the locations and the types of business categories where transactions occurred. This allows us to validate the model, by matching our predicted activity patterns with the actually observed ones, so that it can be later applied to the cases where such information is unavailable. This extended evaluation aimed to define the applicability of the predictive model, HRBModel, taking various type of spatial and temporal factors into account.
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