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Signal Folding for Efficient Classification of Near-Cyclostationary Biological Signals
by
Loskot, Pavel
, Zheng, Tianxiang
in
Accuracy
/ ARIMA
/ Autoregressive models
/ Classification
/ Classifiers
/ cyclostationary
/ Data models
/ Discriminant analysis
/ ECG
/ Feature extraction
/ Folding
/ Food science
/ Machine learning
/ Random variables
/ Signal classification
/ signal folding
/ Signal processing
/ Sleep apnea
/ Time series
/ Wavelet transforms
2022
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Signal Folding for Efficient Classification of Near-Cyclostationary Biological Signals
by
Loskot, Pavel
, Zheng, Tianxiang
in
Accuracy
/ ARIMA
/ Autoregressive models
/ Classification
/ Classifiers
/ cyclostationary
/ Data models
/ Discriminant analysis
/ ECG
/ Feature extraction
/ Folding
/ Food science
/ Machine learning
/ Random variables
/ Signal classification
/ signal folding
/ Signal processing
/ Sleep apnea
/ Time series
/ Wavelet transforms
2022
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Signal Folding for Efficient Classification of Near-Cyclostationary Biological Signals
by
Loskot, Pavel
, Zheng, Tianxiang
in
Accuracy
/ ARIMA
/ Autoregressive models
/ Classification
/ Classifiers
/ cyclostationary
/ Data models
/ Discriminant analysis
/ ECG
/ Feature extraction
/ Folding
/ Food science
/ Machine learning
/ Random variables
/ Signal classification
/ signal folding
/ Signal processing
/ Sleep apnea
/ Time series
/ Wavelet transforms
2022
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Signal Folding for Efficient Classification of Near-Cyclostationary Biological Signals
Journal Article
Signal Folding for Efficient Classification of Near-Cyclostationary Biological Signals
2022
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Overview
The classification of biological signals is important in detecting abnormal conditions in observed biological subjects. The classifiers are trained on feature vectors, which often constitute the parameters of the observed time series data models. Since the feature extraction is usually the most time-consuming step in training a classifier, in this paper, signal folding and the associated folding operator are introduced to reduce the variability in near-cyclostationary biological signals so that these signals can be represented by models that have a lower order. This leads to a substantial reduction in computational complexity, so the classifier can be learned an order of magnitude faster and still maintain its decision accuracy. The performance of different classifiers involving signal folding as a pre-processing step is studied for sleep apnea detection in one-lead ECG signals assuming ARIMA modeling of the time series data. It is shown that the R-peak-based folding of ECG segments has superior performance to other more general, similarity based signal folding methods. The folding order can be optimized for the best classification accuracy. However, signal folding requires precise scaling and alignment of the created signal fragments.
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