GPS2space:用于从GPS数据中提取空间测量的开源Python库。

Shuai Zhou, Yanling Li, G. Chi, Junjun Yin, Zita Oravecz, Yosef Bodovski, N. Friedman, S. Vrieze, Sy-Miin Chow
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引用次数: 4

摘要

在这个数字时代,全球定位系统(GPS)数据已经成为可穿戴设备、手机和社交媒体平台收集的常规数据流之一。这些数据提供了研究机会,因为它们可以提供上下文信息,以阐明个人在何时、何地以及为何从事并维持特定的行为模式。然而,由密集采样的经纬度坐标对时间序列组成的原始GPS数据不容易传达有关个体内部动态和个体间差异的有意义的信息;需要大量的数据处理。原始的GPS数据需要整合到地理信息系统(GIS)中并进行分析,从中可以得出个人的流动性和活动模式,这是许多行为科学家不熟悉的过程。在这篇教程文章中,我们介绍了GPS2space,这是我们开发的一个免费的开源Python库,用于促进GPS数据的处理,与GIS集成以从感兴趣的地标获取距离,以及提取两个空间特征:个体的活动空间和个体之间的共享空间,例如同一家族的成员。我们使用科罗拉多在线双胞胎研究的数据展示了图书馆中可用的功能,以探索个体活动空间和双胞胎兄弟姐妹共享空间的季节性和年龄相关变化,以及性别、合子性和基线年龄相关的初始水平差异和/或随时间变化。最后,我们讨论了GPS2space的其他潜在用途、注意事项和未来发展。
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GPS2space: An Open-source Python Library for Spatial Measure Extraction from GPS Data.
Global Positioning System (GPS) data have become one of the routine data streams collected by wearable devices, cell phones, and social media platforms in this digital age. Such data provide research opportunities in that they may provide contextual information to elucidate where, when, and why individuals engage in and sustain particular behavioral patterns. However, raw GPS data consisting of densely sampled time series of latitude and longitude coordinate pairs do not readily convey meaningful information concerning intra-individual dynamics and inter-individual differences; substantial data processing is required. Raw GPS data need to be integrated into a Geographic Information System (GIS) and analyzed, from which the mobility and activity patterns of individuals can be derived, a process that is unfamiliar to many behavioral scientists. In this tutorial article, we introduced GPS2space, a free and open-source Python library that we developed to facilitate the processing of GPS data, integration with GIS to derive distances from landmarks of interest, as well as extraction of two spatial features: activity space of individuals and shared space between individuals, such as members of the same family. We demonstrated functions available in the library using data from the Colorado Online Twin Study to explore seasonal and age-related changes in individuals' activity space and twin siblings' shared space, as well as gender, zygosity and baseline age-related differences in their initial levels and/or changes over time. We concluded with discussions of other potential usages, caveats, and future developments of GPS2space.
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