Title :
A unified time-frequency parametrization of EEGs
Author :
Durka, P.J. ; Blinowska, K.J.
Author_Institution :
Lab. of Med. Phys., Warsaw Univ., Poland
Abstract :
Seventy years since the first recording of the human electroencephalogram (EEG), visual analysis of raw EEG traces is still the major clinical tool and point of reference for other methods, in spite of its inherent limitations: low repeatability and high cost. Seven years since the introduction of the matching pursuit (MP) algorithm, the authors have collected evidence suggesting that adaptive time-frequency approximation is a good candidate for a universal high-resolution parameterization of EEG data, compatible with the visual and spectral analysis, and applicable to a large class of problems. Here, the authors briefly discuss the need for a generally applicable method for a mathematical description (parameterization) of the signal, which would be directly related to the heritage of the traditional EEG analysis. In this context the authors discuss application of the MP algorithm. They present recent advances in analysis of sleep EEGs and discuss earlier works on event-related potentials and epileptic recordings
Keywords :
adaptive signal processing; electroencephalography; medical signal processing; sleep; time-frequency analysis; 7 y; 70 y; EEG analysis; adaptive time-frequency approximation; electrodiagnostics; epileptic recordings; event-related potentials; human electroencephalogram; mathematical description; signal parameterization; sleep EEGs; unified time-frequency parametrization; Approximation algorithms; Costs; Electroencephalography; Humans; Matching pursuit algorithms; Pursuit algorithms; Signal analysis; Sleep; Spectral analysis; Time frequency analysis;
Journal_Title :
Engineering in Medicine and Biology Magazine, IEEE