从传感器流进化人类活动分类器

J. A. Iglesias, P. Angelov, Agapito Ledezma, A. Sanchis
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引用次数: 0

摘要

智能环境中的人类活动识别对于辅助生活或监控等许多应用来说是一项非常重要的任务。为了使这些环境对人们敏感,有必要识别和跟踪他们作为日常生活的一部分所进行的活动。目前大多数识别人类活动的方法都没有考虑到人类如何执行特定活动的变化。这些方法依赖于预定义的活动,这些活动随着时间的推移被表示为静态模型。在本文中,我们提出了一种自动化的方法来跟踪和识别来自传感器流的日常活动。在本研究中,任何活动都被表示为一系列原始传感器数据。使用统计方法处理这些序列,以便发现活动模式。然而,由于人类活动的动态性,这些模式会发生变化。因此,由于执行活动的方式通常不是固定的,而是不断变化和发展的,我们提出了一种基于进化系统的人类活动识别方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving human activity classifier from sensor streams
Human activity recognition in intelligent environments is a very important task for many applications such as assisted living or surveillance. In order to make those environments sensitive to people, it is necessary to recognize and track the activities that they perform as part of their daily routines. Most of the current approaches for recognizing human activities do not consider the changes in how a human performs a specific activity. Those approaches rely on predefined activities which are represented as static models over time. In this paper, we propose an automated approach to track and recognize daily activities from sensor streams. Any activity is represented in this research as a sequence of raw sensors data. These sequences are treated using statistical methods in order to discover activity patterns. However, these patterns change due to the dynamic nature of human activities. Therefore, as the way to perform an activity is usually not fixed but it changes and evolves, we propose a human activity recognition method based on Evolving Systems.
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