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Low-probability event-detection and separation via statistical wavelet thresholding : an application to psychophysiological denoising

หน่วยงาน Central Queensland University, Australia

รายละเอียด

ชื่อเรื่อง : Low-probability event-detection and separation via statistical wavelet thresholding : an application to psychophysiological denoising
นักวิจัย : Browne, Matthew. , Cutmore, T. R. H.
คำค้น : LIBRARY OF CONGRESS NEEDED , 970101 Expanding Knowledge in the Mathematical Sciences. , 110903 Central Nervous System. , Event-related potential -- Wavelet -- Filtering -- Psychophysiology -- Pre-processing -- Denoising , Journal Article. Refereed, Scholarly Journal
หน่วยงาน : Central Queensland University, Australia
ผู้ร่วมงาน : -
ปีพิมพ์ : 2545
อ้างอิง : http://hdl.cqu.edu.au/10018/938887
ที่มา : Browne, M & Cutmore, TRH 2002, 'Low-probability event-detection and separation via statistical wavelet thresholding: an application to psychophysiological denoising', Clinical Neurophysiology, vol. 113, no. 9, pp. 1403-1411, http://dx.doi.org/10.1016/S1388-2457(02)00194-3
ความเชี่ยวชาญ : -
ความสัมพันธ์ : Clinical neurophysiology. Ireland : Elsevier, 2002. Vol. 113, no. 9 (2002), p. 1403-1411 9 pages Refereed 1388-2457 1872-8952 (online) , ACQUIRE [electronic resource] : Central Queensland University Institutional Repository.
ขอบเขตของเนื้อหา : -
บทคัดย่อ/คำอธิบาย :

Objectives: The aim of this paper is to introduce and test a general, wavelet-based method for the automatic removal of noise and artefact from psychophysiological data. Methods: Statistical wavelet thresholding (SWT) performs blind source separation by transforming data to the wavelet domain, and subsequent filtering of wavelet coefficients based on a statistical framework. The observed wavelet coefficients are modelled using a Gaussian distribution, from which low-probability outliers are attenuated based on their z-scores. Results: The technique was applied to both simulated and real event-related potentials (ERP) data. SWT applied to artificial data displayed increased signal-to-noise ratio (SNR) improvements as noise amplitude increased. ERP averages of filtered experimental data displayed acorrelation of 0.93 with operator-filtered data, compared with a correlation of 0.56 for unfiltered data. The energy of operator-designated contaminated trials was attenuated by a factor of 7.46 relative to uncontaminated trials. SNR improvement was observed in simulated tests. Conclusions: Variations of SWT may be useful in situations where one wishes to separate uncommon/uncharacteristic structures from time series data sets. For artefact removal applications, SWT appears to be a valid alternative to expert operator screening.

บรรณานุกรม :
Browne, Matthew. , Cutmore, T. R. H. . (2545). Low-probability event-detection and separation via statistical wavelet thresholding : an application to psychophysiological denoising.
    กรุงเทพมหานคร : Central Queensland University, Australia.
Browne, Matthew. , Cutmore, T. R. H. . 2545. "Low-probability event-detection and separation via statistical wavelet thresholding : an application to psychophysiological denoising".
    กรุงเทพมหานคร : Central Queensland University, Australia.
Browne, Matthew. , Cutmore, T. R. H. . "Low-probability event-detection and separation via statistical wavelet thresholding : an application to psychophysiological denoising."
    กรุงเทพมหานคร : Central Queensland University, Australia, 2545. Print.
Browne, Matthew. , Cutmore, T. R. H. . Low-probability event-detection and separation via statistical wavelet thresholding : an application to psychophysiological denoising. กรุงเทพมหานคร : Central Queensland University, Australia; 2545.