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AuthorBouchech, Hamdi Jamel
AuthorFoufou, Sebti
AuthorAbidi, Mongi
Available date2016-05-16T10:57:31Z
Publication Date2014
Publication NameImage and Signal Processing: 6th International Conference, ICISP 2014, Cherbourg, France, June 30-July 2, 2014. Proceedings
ResourceScopus
CitationBouchech, Hamdi Jamel; Foufou, Sebti; Abidi, Mongi, "Multilinear sparse decomposition for best spectral bands selection, in Image and Signal Processing, vol. 8509 of Lecture Notes in Computer Science, pp. 384-391, Springer, 2014.
ISBN978-3-319-07997-4
ISBN978-3-319-07998-1
URIhttp://dx.doi.org/10.1007/978-3-319-07998-1_44
URIhttp://hdl.handle.net/10576/4538
AbstractOptimal spectral bands selection is a primordial step in multispectral images based systems for face recognition. In this context, we select the best spectral bands using a multilinear sparse decomposition based approach. Multispectral images of 35 subjects presenting 25 different lengths from 480nm to 720nm and three lighting conditions: fluorescent, Halogen and Sun light are groupped in a 3-mode face tensor T of size 35x25x2 . T is then decomposed using 3-mode SVD where three mode matrices for subjects, spectral bands and illuminations are sparsely determined. The 25x25 spectral bands mode matrix defines a sparse vector for each spectral band. Spectral bands having the sparse vectors with the lowest variation with illumination are selected as the best spectral bands. Experiments on two state-of-the-art algorithms, MBLBP and HGPP, showed the effectiveness of our approach for best spectral bands selection.
Languageen
PublisherSpringer Verlag
Series relationLecture Notes in Computer Science
SubjectHGPP
MBLBP
Multilinear
sparse
Spectral bands
Tensor
TitleMultilinear sparse decomposition for best spectral bands selection
TypeConference Paper
Pagination384-391
Volume Number8509


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