Objective: A major challenge in non-stationary signal analysis is reliable estimation of correlation. Neurophysiological recordings can be many minutes in duration with data that exhibits correlation which changes over different time scales. Local smoothing can be used to estimate time-dependency, however, an effective framework needs to adjust levels of smoothing in response to changes in correlation. Approach: Here we present a novel data-adaptive algorithm, the z-tracker, for estimating local correlation in segmented data. The algorithm constructs single segment coherence estimates using multi-taper windows. These are subject to adaptive Kalman filtering/smoothing in the z-domain to construct a local coherence estimate for each segment...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
The use of coherence is a wellestablished standard approach for the analysis of biomedical signals....
Objective: A major challenge in non-stationary signal analysis is reliable estimation of correlation...
Coherence is a widely used measure for characterizing linear dependence between two time series. Cla...
We present a method for the testing of significance when evaluating the coherence of two oscillatory...
Time-frequency coherence has been widely used to quantify statistical dependencies in bivariate data...
Wavelet analysis has become an emerging method in a wide range of applications with non-stationary d...
We consider the problem of estimating time-localized cross-dependence in a collection of nonstationa...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Coherence analysis characterizes frequency-dependent covariance between signals, and is useful for m...
Neural recordings from high-density microelectrode arrays yield high-dimensional time-series observa...
A method of single-trial coherence analysis is presented, through the application of continuous muld...
The quantification of covariance between neuronal activities (functional connectivity) requires the ...
In neuroscience, it is of key importance to assess how neurons interact with each other as evidenced...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
The use of coherence is a wellestablished standard approach for the analysis of biomedical signals....
Objective: A major challenge in non-stationary signal analysis is reliable estimation of correlation...
Coherence is a widely used measure for characterizing linear dependence between two time series. Cla...
We present a method for the testing of significance when evaluating the coherence of two oscillatory...
Time-frequency coherence has been widely used to quantify statistical dependencies in bivariate data...
Wavelet analysis has become an emerging method in a wide range of applications with non-stationary d...
We consider the problem of estimating time-localized cross-dependence in a collection of nonstationa...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Coherence analysis characterizes frequency-dependent covariance between signals, and is useful for m...
Neural recordings from high-density microelectrode arrays yield high-dimensional time-series observa...
A method of single-trial coherence analysis is presented, through the application of continuous muld...
The quantification of covariance between neuronal activities (functional connectivity) requires the ...
In neuroscience, it is of key importance to assess how neurons interact with each other as evidenced...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
The use of coherence is a wellestablished standard approach for the analysis of biomedical signals....