Shape discrimination using invariants defined from higher-order spectra


Autoria(s): Chandran, Vinod; Elgar, Steve
Data(s)

1991

Resumo

An approach to pattern recognition using invariant parameters based on higher-order spectra is presented. In particular, bispectral invariants are used to classify one-dimensional shapes. The bispectrum, which is translation invariant, is integrated along straight lines passing through the origin in bifrequency space. The phase of the integrated bispectrum is shown to be scale- and amplification-invariant. A minimal set of these invariants is selected as the feature vector for pattern classification. Pattern recognition using higher-order spectral invariants is fast, suited for parallel implementation, and works for signals corrupted by Gaussian noise. The classification technique is shown to distinguish two similar but different bolts given their one-dimensional profiles

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/45573/

Publicador

IEEE

Relação

http://eprints.qut.edu.au/45573/1/00150112_ICASSP91.pdf

DOI:10.1109/ICASSP.1991.150112

Chandran, Vinod & Elgar, Steve (1991) Shape discrimination using invariants defined from higher-order spectra. In International Conference on Acoustics, Speech, and Signal Processing (ICASSP-91), 14-17 April 1991 , Toronto, Canada .

Direitos

Copyright 1991 IEEE

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Fonte

Faculty of Built Environment and Engineering; School of Engineering Systems

Palavras-Chave #089900 OTHER INFORMATION AND COMPUTING SCIENCES #pattern recognition #random noise #spectral analysis #Gaussian noise #amplification-invariant #bifrequency space #bispectral invariants #bolts #feature vector #higher-order spectra #integrated bispectrum #invariant parameters #one-dimensional shapes #parallel implementation #pattern classification #scale invariant phase #shape discrimination #translation invariant
Tipo

Conference Paper