Semantically enriching personal mobility data using OpenStreetMap: a case study using smartphone users' frequently visited places.

IF 1.4 Q4 TELECOMMUNICATIONS
Jixin Li, Binod Thapa-Chhetry, Aditya Ponnada, Shirlene D Wang, Micaela Hewus, Genevieve F Dunton, Stephen Intille
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引用次数: 0

Abstract

Behavioral scientists use geodatabases to automatically annotate mobile device location data with semantically meaningful point-of-interest (POI) labels. Using volunteered geographic information (VGI), such as OpenStreetMap (OSM) data, to annotate large amounts of location data is more cost-effective and efficient than manual annotation by participants. The data quality of VGI, however, has been questioned, with limited evidence supporting its use for annotating personal mobility data. We assessed the performance of using OSM POI data to annotate year-long smartphone location data acquired from 93 people in the United States. A Python package was developed to extract POI geometric and semantic information from the OSM geodatabase and annotate places frequently visited by participants. We evaluated the semantic annotation performance of our OSM package against participant-provided annotations and compared OSM with two popular commercial geodatabases: Foursquare and Google Maps. Annotations acquired using OSM data had the best overall performance across eight categories of places, with 81% of places labeled and an average F1 score of 0.65, although Foursquare and Google Maps showed advantages for annotating some categories. This case study provides empirical evidence supporting the use of OSM for semantic enrichment in mobile device location data research. We outline recommendations for future implementations.

使用OpenStreetMap语义丰富个人移动数据:一个使用智能手机用户经常访问的地点的案例研究。
行为科学家使用地理数据库自动地用语义上有意义的兴趣点(POI)标签标注移动设备位置数据。利用自愿提供的地理信息(VGI),如OpenStreetMap (OSM)数据,对大量的位置数据进行标注,比参与者手工标注更具成本效益和效率。然而,VGI的数据质量一直受到质疑,支持其用于注释个人移动数据的证据有限。我们评估了使用OSM POI数据来注释从93名美国人那里获得的长达一年的智能手机位置数据的性能。开发了一个Python包,用于从OSM地理数据库中提取POI几何和语义信息,并注释参与者经常访问的地方。我们根据参与者提供的注释评估了OSM包的语义注释性能,并将OSM与两种流行的商业地理数据库:Foursquare和谷歌Maps进行了比较。使用OSM数据获得的注释在8个地点类别中表现最好,有81%的地点被标记,平均F1分数为0.65,尽管Foursquare和谷歌Maps在注释某些类别方面表现出优势。本案例研究提供了经验证据,支持在移动设备位置数据研究中使用OSM进行语义丰富。我们概述了对未来实现的建议。
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
12
期刊介绍: The aim of this interdisciplinary and international journal is to provide a forum for the exchange of original ideas, techniques, designs and experiences in the rapidly growing field of location based services on networked mobile devices. It is intended to interest those who design, implement and deliver location based services in a wide range of contexts. Published research will span the field from location based computing and next-generation interfaces through telecom location architectures to business models and the social implications of this technology. The diversity of content echoes the extended nature of the chain of players required to make location based services a reality.
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