Wavelet based Independent Component Analysis for Multispectral Brain Tissue Classification
Data(s) |
22/07/2014
22/07/2014
01/04/2013
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Resumo |
Multispectral analysis is a promising approach in tissue classification and abnormality detection from Magnetic Resonance (MR) images. But instability in accuracy and reproducibility of the classification results from conventional techniques keeps it far from clinical applications. Recent studies proposed Independent Component Analysis (ICA) as an effective method for source signals separation from multispectral MR data. However, it often fails to extract the local features like small abnormalities, especially from dependent real data. A multisignal wavelet analysis prior to ICA is proposed in this work to resolve these issues. Best de-correlated detail coefficients are combined with input images to give better classification results. Performance improvement of the proposed method over conventional ICA is effectively demonstrated by segmentation and classification using k-means clustering. Experimental results from synthetic and real data strongly confirm the positive effect of the new method with an improved Tanimoto index/Sensitivity values, 0.884/93.605, for reproduced small white matter lesions International conference on Communication and Signal Processing, April 3-5, 2013, India Cochin University of Science and Technology |
Identificador | |
Idioma(s) |
en |
Publicador |
IEEE |
Palavras-Chave | #Independent Component Analysis #Magnetic Resonance Imaging #Multispectral Analysis #Wavelet Transforms |
Tipo |
Article |