User: Guest  Login
Author(s):
Bieniarz, J.; Aguilera, E.; Zhu, X.X.; Muller, R.; Reinartz, P.
Title:
Joint {Sparsity} {Model} for {Multilook} {Hyperspectral} {Image} {Unmixing}
Abstract:
Recent work on hyperspectral image (HSI) unmixing has addressed the use of overcomplete dictionaries by employing sparse models. In essence, this approach exploits the fact that HSI pixels can be associated with a small number of constituent pure materials. However, unlike traditional least-squares-based methods, sparsity-based techniques do not require a preselection of endmembers and are thus able to simultaneously estimate the underlying active materials along with their respective abundances...     »
Keywords:
Vectors, Signal to noise ratio, Materials, overcomplete spectral dictionary, Joints, Joint Sparsity, Dictionaries, spectral unmixing, hyperspectral imaging
Journal title:
IEEE Geoscience and Remote Sensing Letters
Year:
2014
Journal volume:
12
Journal issue:
4
Pages contribution:
696--700
Fulltext / DOI:
doi:10.1109/LGRS.2014.2358623
Print-ISSN:
1545-598X
Notes:
00000
 BibTeX