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首页> 外文期刊>IEEE Transactions on Signal Processing >Statistical Models of Reconstructed Phase Spaces for Signal Classification
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Statistical Models of Reconstructed Phase Spaces for Signal Classification

机译:用于信号分类的重构相空间统计模型

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摘要

This paper introduces a novel approach to the analysis and classification of time series signals using statistical models of reconstructed phase spaces. With sufficient dimension, such reconstructed phase spaces are, with probability one, guaranteed to be topologically equivalent to the state dynamics of the generating system, and, therefore, may contain information that is absent in analysis and classification methods rooted in linear assumptions. Parametric and nonparametric distributions are introduced as statistical representations over the multidimensional reconstructed phase space, with classification accomplished through methods such as Bayes maximum likelihood and artificial neural networks (ANNs). The technique is demonstrated on heart arrhythmia classification and speech recognition. This new approach is shown to be a viable and effective alternative to traditional signal classification approaches, particularly for signals with strong nonlinear characteristics.
机译:本文介绍了一种使用重建相空间的统计模型对时间序列信号进行分析和分类的新方法。具有足够的维数,这样的重构相空间以概率一被保证在拓扑上等同于发电系统的状态动态,因此,可能包含基于线性假设的分析和分类方法所缺少的信息。引入参数和非参数分布作为多维重构相空间上的统计表示,并通过贝叶斯最大似然法和人工神经网络(ANN)等方法完成分类。该技术在心律不齐分类和语音识别方面得到了证明。这种新方法显示出是传统信号分类方法的可行且有效的替代方法,特别是对于具有强非线性特性的信号。

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