Abstract

As we know, singular value decomposition (SVD) is designed for computing singular values (SVs) of a matrix. Then, if it is used for finding SVs of an m-by-1 or 1-by-m array with elements representing samples of a signal, it will return only one singular value that is not enough to express the whole signal. To overcome this problem, we designed a new kind of the feature extraction method which we call time-frequency moments singular value decomposition (TFM-SVD). In this new method, we use statistical features of time series as well as frequency series (Fourier transform of the signal). This information is then extracted into a certain matrix with a fixed structure and the SVs of that matrix are sought. This transform can be used as a preprocessing stage in pattern clustering methods. The results in using it indicate that the performance of a combined system including this transform and classifiers is comparable with the performance of using other feature extraction methods such as wavelet transforms. To evaluate TFM-SVD, we applied this new method and artificial neural networks (ANNs) for ballistocardiogram (BCG) data clustering to look for probable heart disease of six test subjects. BCG from the test subjects was recorded using a chair-like ballistocardiograph, developed in our project. This kind of device combined with automated recording and analysis would be suitable for use in many places, such as home, office, and so forth. The results show that the method has high performance and it is almost insensitive to BCG waveform latency or nonlinear disturbance.

Highlights

  • Ballistocardiogram (BCG) [1, 2] is a movement-related signal caused by shifts in the center of the mass of the blood, which consists of components attributable to cardiac activity, respiration, and body movements

  • We introduce a new method for feature extraction, which we call “time-frequency moments singular value decomposition (TFM-SVD).”

  • We introduce a new kind of feature extraction method the so-called time-frequency moments singular value decomposition (TFM-SVD) in this paper

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Summary

INTRODUCTION

Ballistocardiogram (BCG) [1, 2] is a movement-related signal caused by shifts in the center of the mass of the blood, which consists of components attributable to cardiac activity, respiration, and body movements. One of the advantages of the BCG measurement is that no electrodes are needed to be attached to the subject [3]. It could provide the possibility of serving as a relatively low-cost, noninvasive, easy-to-use, home screening procedure for cardiac performance assessment. The results will have some errors if such important factors are not counted. Another important limitation of the existing approaches is their suitability for fast implementation as well as online processing. The developed signal processing methods are presented, followed by results and discussion

MEASUREMENT SYSTEM
Patient recordings
SIGNAL ANALYSIS PROCEDURES
BCG data segmentation
Singular value decomposition
Time-frequency moments singular value decomposition
BCG feature computing using TFM-SVD
BCG data clustering using artificial neural networks
Multilayer perceptrons
Radial basis functions
RESULTS
DISCUSSION

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