Proximity mining: finding proximity using sensor data history

T. Takada, S. Kurihara, Toshio Hirotsu, T. Sugawara
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引用次数: 17

Abstract

Emerging ubiquitous and pervasive computing applications often need to know where things are physically located. To meet this need, many location-sensing systems have been developed, but none of the systems for the indoor environment have been widely adopted. We propose proximity mining, a new approach to build location information by mining sensor data. The proximity mining does not use geometric views for location modeling, but automatically discovers symbolic views by mining time series data from sensors which are placed in surroundings. We deal with trend curves representing time series sensor data, and use their topological characteristics to classify locations where the sensors are placed.
邻近挖掘:使用传感器数据历史查找邻近
新兴的无处不在和普适计算应用程序通常需要知道事物的物理位置。为了满足这一需求,人们开发了许多位置传感系统,但没有一种用于室内环境的系统得到广泛应用。本文提出了一种通过挖掘传感器数据来构建位置信息的新方法——邻近挖掘。邻近挖掘不使用几何视图进行位置建模,而是通过挖掘放置在周围环境中的传感器的时间序列数据来自动发现符号视图。我们处理表示时间序列传感器数据的趋势曲线,并使用它们的拓扑特征对传感器放置的位置进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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