Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/44970
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Type: Conference paper
Title: Classification of lactose and mandelic acid THz spectra using subspace and wavelet-packet algorithms
Author: Yin, X.
Hadjiloucas, S.
Fischer, B.
Ng, B.
Paiva, H.
Galvao, R.
Walker, G.
Bowen, J.
Abbott, D.
Citation: Microelectronics: Design, Technology, and Packaging III / Alex J. Hariz, Vijay K. Varadan (eds.):pp.1-9
Publisher: SPIE
Publisher Place: CDROM
Issue Date: 2007
Series/Report no.: Proceedings of SPIE ; 6798
ISBN: 9780819469694
ISSN: 0277-786X
1996-756X
Conference Name: Microelectronics: Design, Technology, and Packaging III (2007 : ACT, Australia)
Editor: Derek Abbott,
Statement of
Responsibility: 
Xiaoxia Yin ; Sillas Hadjiloucas ; Bernd M. Fischer ; Brian W.-H. Ng ; Henrique M. Paiva ; Roberto K. H. Galvão ; Gillian C. Walker ; John W. Bowen ; Derek Abbott
Abstract: This work compares classification results of lactose, mandelic acid and dl-mandelic acid, obtained on the basis of their respective THz transients. The performance of three different pre-processing algorithms applied to the time-domain signatures obtained using a THz-transient spectrometer are contrasted by evaluating the classifier performance. A range of amplitudes of zero-mean white Gaussian noise are used to artificially degrade the signal-to-noise ratio of the time-domain signatures to generate the data sets that are presented to the classifier for both learning and validation purposes. This gradual degradation of interferograms by increasing the noise level is equivalent to performing measurements assuming a reduced integration time. Three signal processing algorithms were adopted for the evaluation of the complex insertion loss function of the samples under study; a) standard evaluation by ratioing the sample with the background spectra, b) a subspace identification algorithm and c) a novel wavelet-packet identification procedure. Within class and between class dispersion metrics are adopted for the three data sets. A discrimination metric evaluates how well the three classes can be distinguished within the frequency range 0.1-1.0 THz using the above algorithms.
Description: Copyright © 2007 SPIE - The International Society for Optical Engineering.
DOI: 10.1117/12.755154
Published version: http://dx.doi.org/10.1117/12.755154
Appears in Collections:Aurora harvest
Electrical and Electronic Engineering publications

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