TRAcME:利用移动电话数据进行时间活动识别

Driss Choujaa, Naranker Dulay
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引用次数: 40

摘要

人类活动识别的目的是识别一个用户或一组用户在给定的时间点上正在做什么,例如旅行或工作。活动识别在移动计算和普适计算中扮演着重要的角色,无论是作为目标本身还是作为高级应用程序设计的中间任务。实际上,所有现有的手机活动识别系统都是基于位置线索进行预测的。这种方法迫使用户公开个人信息,例如她的家庭或工作区域。在本文中,我们提出了一种新的活动识别系统,称为TRAcME(移动环境活动的时间识别),它从大的上下文窗口、Allenpsilas时间关系和匿名地标识别一般的人类活动。与现有系统不同,TRAcME处理同时进行的活动,并以用户日为单位输出彼此一致的活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TRAcME: Temporal Activity Recognition Using Mobile Phone Data
The aim of human activity recognition is to identify what a user or a group of users are doing at a given point in time, for example travelling or working. Activity recognition plays an important role in mobile and ubiquitous computing both as a goal in itself and as an intermediate task in the design of advanced applications. Virtually all existing activity recognition systems for mobile phones base their predictions on location cues. This approach forces the user to disclose personal information such as her home or work area. In this paper, we present a novel activity recognition system called TRAcME (temporal recognition of activities for mobile environments) which recognises generic human activities from large windows of context, Allenpsilas temporal relations and anonymous landmarks. Unlike existing systems, TRAcME handles simultaneous activities and outputs activities which are consistent with each other at the scale of a userpsilas day.
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