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Morphological diversity and sparsity: new insights into multivariate data analysis
被引:1
|作者:
Bobin, J.
[1
]
Fadili, J.
[2
]
Moudden, Y.
[1
]
Starck, J. -L.
[1
]
机构:
[1] CEA Saclay, Serv Astrophys, SEDI SAP, DAPNIA, F-91191 Gif Sur Yvette, France
[2] ENSICAEN, GREYC CNRS UMR 6072, Image Proc Grp, F-14050 Caen, France
来源:
关键词:
morphological diversity;
sparsity;
overcomplete representation;
curvelets;
wavelets;
multichannel data;
blind source separation;
denoising;
inpainting;
D O I:
10.1117/12.731589
中图分类号:
O43 [光学];
学科分类号:
070207 ;
0803 ;
摘要:
Over the last few years, the development of multi-channel sensors motivated interest in methods for the coherent processing of multivariate data. From blind source separation (BSS) to multi/hyper-spectral data restoration, an extensive work has already been dedicated to multivariate data processing. Previous work(1) has emphasized on the fundamental role played by sparsity and morphological diversity to enhance multichannel signal processing. Morphological diversity(2,3) has been first introduced in the mono-channel case to deal with contour/texture extraction. The morphological diversity concept states that the data are the linear combination of several so-called morphological components which are sparse in different incoherent representations. In that setting, piecewise smooth features (contours) and oscillating components (textures) are separated based on their morphological differences assuming that contours (respectively textures) are sparse in the Curvelet representation (respectively Local Discrete Cosine representation). In the present paper, we define a multichannel-based framework for sparse multivariate data representation. We introduce an extension of morphological diversity to the multichannel case which boils down to assuming that each multichannel morphological component is diversely sparse spectrally and/or spatially. We propose the Generalized Morphological Component Analysis algorithm (GMCA) which aims at recovering the so-called multichannel morphological components. Hereafter, we apply the GMCA framework to two distinct multivariate inverse problems : blind source separation (BSS) and multichannel data restoration. In the two aforementioned applications, we show that GMCA provides new and essential insights into the use of morphological diversity and sparsity for multivariate data processing. Further details and numerical results in multivariate image and signal processing will be given illustrating the good performance of GMCA in those distinct applications.
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页数:11
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