mSIMPAD

Chun-Tung Li, Jiannong Cao, Xuefeng Liu, M. Stojmenovic
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引用次数: 2

摘要

连续相似模式(SSP)是在时间序列中以非规则间隔连续出现的一系列相似序列。挖掘SSP可以在没有先验知识的情况下提供有价值的信息,这在从健康监测到活动识别的许多应用中都是至关重要的。然而,大多数现有的工作在计算上是昂贵的,只关注以规则时间间隔出现的周期性模式,并且无法识别包含多个周期的模式。在这里,我们研究了一个更普遍的问题,即寻找连续出现的相似模式,其中模式之间的相似性是通过z归一化欧几里得距离来测量的。我们提出了一种线性时间、稳健的方法,称为多长度连续sIMilar模式检测器(mSIMPAD),该方法挖掘多个长度的SSP,不考虑周期性。我们将我们的方法应用于使用可穿戴惯性测量单元检测重复运动。实验在三个公共数据集上进行,其中两个数据集包含简单的步行和空闲数据,而第三个数据集更复杂,包含多项活动。与最先进的步行探测器相比,mSIMPAD在简单和复杂的数据集上分别实现了3.2%和6.5%的F分数改进。此外,mSIMPAD是可扩展的,适用于实时应用,因为它在线性时间复杂性中运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
mSIMPAD
A successive similar pattern (SSP) is a series of similar sequences that occur consecutively at non-regular intervals in time series. Mining SSPs could provide valuable information without a priori knowledge, which is crucial in many applications ranging from health monitoring to activity recognition. However, most existing work is computationally expensive, focuses only on periodic patterns occurring in regular time intervals, and is unable to recognize patterns containing multiple periods. Here we investigate a more general problem of finding similar patterns occurring successively, in which the similarity between patterns is measured by the z-normalized Euclidean distance. We propose a linear time, robust method, called Multiple-length Successive sIMilar PAtterns Detector (mSIMPAD), that mines SSPs of multiple lengths, making no assumptions regarding periodicity. We apply our method on the detection of repetitive movement using a wearable inertial measurement unit. The experiments were conducted on three public datasets, two of which contain simple walking and idle data, whereas the third is more complex and contains multiple activities. mSIMPAD achieved F-score improvements of 3.2% and 6.5%, respectively, over the simple and complex datasets compared to the state-of-the-art walking detector. In addition, mSIMPAD is scalable and applicable to real-time applications since it operates in linear time complexity.
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来源期刊
CiteScore
10.30
自引率
0.00%
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