Multidimensional analysis of EEG features using advanced spectral estimates for diagnosis accuracy
Conference Paper
Publication Date:
2013
abstract:
Electroencephalogram (EEG) is a source of
interesting information if one is able to extract them according
to appropriate techniques. The conditions of individual under
EEG test is a key issue. In general, EEG feature extraction can
be associated to other information like Electrocardiogram
(ECG), ergospirometry and electromyogram (EMG). However,
in some cases, a multidimensional representation is used;
bispectrum is an example of such a representation. HOS (high
order statistics), for instance, include the bispectrum and the
trispectrum (third and fourth order statistics, respectively).
Advanced estimate spectral analysis can reveal new
information encompassed in EEG signals. That is the reason
the author propose an algorithm based on DSD (Decimated
Signal Diagonalization) that is able of processing exponentially
dumped signals like those that regard EEG features. The
version proposed here is a multidimensional one.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
EEG; Signal processing; Decimated Signal Diagonalization; Diagnosis Accuracy; Biomedical measurements; Bispectral analysis
List of contributors:
Casciaro, Sergio; Conversano, Francesco
Book title:
2013 IEEE INTERNATIONAL SYMPOSIUM ON MEDICAL MEASUREMENTS AND APPLICATIONS PROCEEDINGS (MEMEA)