Decomposition of Higher-Order Spectra for Blind Multiple-Input Deconvolution, Pattern Identification and Separation

01/28/2019
by   Christopher K. Kovach, et al.
0

Like the ordinary power spectrum, higher-order spectra (HOS) describe signal properties that are invariant under translations in time. Unlike the power spectrum, HOS retain phase information from which details of the signal waveform can be recovered. Here we consider the problem of identifying multiple unknown transient waveforms which recur within an ensemble of records at mutually random delays. We develop a new technique for recovering filters from HOS whose performance in waveform detection approaches that of an optimal matched filter, requiring no prior information about the waveforms. Unlike previous techniques of signal identification through HOS, the method applies equally well to signals with deterministic and non-deterministic HOS. In the non-deterministic case, it yields an additive decomposition, introducing a new approach to the separation of component processes within non-Gaussian signals having non-deterministic higher moments. We show a close relationship to minimum-entropy blind deconvolution (MED), which the present technique improves upon by avoiding the need for numerical optimization, while requiring only numerically stable operations of time shift, element-wise multiplication and averaging, making it particularly suited for real-time applications. The application of HOS decomposition to real-world signals is demonstrated with blind denoising, detection and classification of normal and abnormal heartbeats in electrocardiograms.

READ FULL TEXT
research
03/12/2018

Blind Identification of Invertible Graph Filters with Multiple Sparse Inputs

This paper deals with problem of blind identification of a graph filter ...
research
11/20/2018

Blind Deconvolution using Modulated Inputs

This paper considers the blind deconvolution of multiple modulated signa...
research
09/19/2013

Blind Deconvolution via Maximum Kurtosis Adaptive Filtering

In this paper, we present an algorithm for identifying a parametrically ...
research
10/27/2020

Graph Blind Deconvolution with Sparseness Constraint

We propose a blind deconvolution method for signals on graphs, with the ...
research
02/03/2012

Wavelet-based deconvolution of ultrasonic signals in nondestructive evaluation

In this paper, the inverse problem of reconstructing reflectivity functi...
research
12/29/2019

Complex Cepstrum-based Decomposition of Speech for Glottal Source Estimation

Homomorphic analysis is a well-known method for the separation of non-li...

Please sign up or login with your details

Forgot password? Click here to reset