Abstract

In this paper, the problem of detection of small signal-to-noise ratio (SNR) variations in noisy signals is addressed in order to provide an efficient and fast method for detection of faulty electroencephalogram (EEG) electrodes which can improve the interpretation of medical data. The method for slight SNR variation assessment, based on the estimation of the longest useful information cluster, is proposed as an alternative to commonly used estimators such as signal energy spectral density, spectral peaks, and spectrogram entropy, which exhibited limited reliability for the considered task. The method proposed in this paper is validated on real signals, which are resistance fluctuations of the EEG Corkscrew electrode solder connection, in which failure is typically manifested as a lower signal-to-noise ratio in the output signal, when compared to the valid electrode. In order to obtain a reliable criterion for the distinction of signals with slight SNR variations, a time-frequency method that relies on observation of the longest useful information cluster of data preserved after the K-means-based denoising application has been introduced. Based on the measurement of the longest existing stationary component, an expert system has been developed, which provides reliable failure detection method with detection accuracy of up to 97.6%. Results on real and simulated data show that the proposed method can be adopted as a computer-aided decision system in a wide range of applications requiring high sensitivity to slight variations of SNRs.

Highlights

  • A widely accepted method to determine the reliability and lifetime of a wide range of electronic devices is through testing of the chemical and mechanical properties of the used materials

  • 4 Criteria application on simulated data We have developed a model that fits distributions of signal energies, valid electrode energy spectral densities’ local maxima, and Renyi entropy of the spectrogram of measured data

  • The spectrogram shows a tendency of signals in higher signal-to-noise ratio (SNR) to present a more ordered structure, generally gaining smaller entropy values (Fig. 3c, Fig. 8c), result that indicates that smaller SNRs preserve a more compact structure of the component energy cluster

Read more

Summary

Introduction

A widely accepted method to determine the reliability and lifetime of a wide range of electronic devices is through testing of the chemical and mechanical properties of the used materials. The goal of such tests is to reliably determine the set on of the failure. EURASIP Journal on Advances in Signal Processing (2019) 2019:38 stainless steel tip and the lead wire can appear during the manufacturing procedure of Corkscrew electrodes and cannot be detected immediately but becomes apparent after some time of use. Simulations are performed for a range of different noise realizations in order to study the influence of noise type and level on spectrograms’ entropy. By focusing on steady-state behavior of total resistance, properties of measured resistance fluctuations are analyzed employing the analysis of the information content of the signal in the TF domain

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call