用于发现行为模式的GPS跟踪挖掘

Weijun Qiu, A. Bandara
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引用次数: 7

摘要

不同的个人设备中内置了不同的传感器应用程序,这些设备能够记录与用户各个方面相关的数据。随着智能手机等个人设备的日益普及和成本的降低,从这些设备中可用的移动传感器收集数据变得可行。从这些传感器收集的数据中可以收集到丰富的信息,这些数据揭示了个人行为和活动的各个方面。现有的数据分析方法主要集中在推断语义上下文和从这些数据中检测关联。例如,启用GPS的设备允许用户以时空流点的形式记录他们的运动,并且可以根据不同的研究目标提取有意义的信息。在本文中,我们研究了一个计算框架,以便从GPS轨迹数据中识别用户的活动类别及其事件关联。这个框架有几个渐进的阶段,每个阶段都基于不同的方法设计,这将有助于分析人们与户外行为相关的日常生活方式。此外,我们还提出了一种方法,通过结合不同来源的移动传感器数据(即GPS和音频数据)来提高该框架的语义注释过程的性能。所提出的框架和方法已经在实际数据集上进行了验证,这些数据集包括微软的Geolife数据集和我们自己收集的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GPS Trace Mining for Discovering Behaviour Patterns
There are diverse sensor applications built into different personal devices, which have the ability to record data related to various aspects of the user. With the ever increasing popularity and lowering costs of such personal devices such as Smart Phones, collecting data from the mobile sensors available in these devices becomes feasible. A wealth of information can be gleaned from such data collected from these sensors which reveals various aspects of the individual's behaviour and activity. Existing approaches for analyzing such data mainly focuses on inferring semantic context and detecting associations from such data. For example, GPS enabled devices allow users to record their movements in the form of spatio-temporal stream points, and meaningful information can be extracted based on different research objectives. In this paper, we have investigated a computation framework in order to identify users' activity categories and their event's associations from GPS trajectory data. This framework has several progressive stages and is designed based on different approaches in each stage, which will facilitate to analyse people's everyday lifestyles that are related to outdoor behaviours. Moreover, we have proposed an approach to improve the performance of the semantic annotation process of this framework, by combining different sources of mobile sensor data (i.e. GPS and audio data). The proposed framework and approaches have been validated on actual data sets which include the Microsoft's Geolife data set and a data set collected by ourselves.
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