Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval tasks in remote sensing. In this paper, the potential of NNs has been applied in solving the unmixing problem in hyperspectral data. In its complete form, the processing scheme uses an NN architecture consisting of two stages: the first stage reduces the dimension of the input vector, while the second stage performs the mapping from the reduced input vector to the abundance percentages. The dimensionality reduction is performed by the so-called autoassociative NNs, which yield a nonlinear principal component analysis of the data. The evaluation of the whole performance is carried out for different sets of experimental data. The first one is provided by the Airborne Hyperspectral Scanner. The second set consists of images from the Compact High-Resolution Imaging Spectrometer on board the Project for On-Board Autonomy satellite, and it includes multiangle and multitemporal acquisitions. The third set is represented by Airborne Visible/InfraRed Imaging Spectrometer measurements. A quantitative performance analysis has been carried out in terms of effectiveness in the dimensionality reduction phase and in terms of the accuracy in the final estimation. The results obtained, when compared with those produced by appropriate benchmark techniques, show the advantages of this approach.

Licciardi, G., DEL FRATE, F. (2011). Pixel unmixing in hyperspectral data by means of neural networks. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 49(11), 4163-4172 [10.1109/TGRS.2011.2160950].

Pixel unmixing in hyperspectral data by means of neural networks

DEL FRATE, FABIO
2011-11-01

Abstract

Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval tasks in remote sensing. In this paper, the potential of NNs has been applied in solving the unmixing problem in hyperspectral data. In its complete form, the processing scheme uses an NN architecture consisting of two stages: the first stage reduces the dimension of the input vector, while the second stage performs the mapping from the reduced input vector to the abundance percentages. The dimensionality reduction is performed by the so-called autoassociative NNs, which yield a nonlinear principal component analysis of the data. The evaluation of the whole performance is carried out for different sets of experimental data. The first one is provided by the Airborne Hyperspectral Scanner. The second set consists of images from the Compact High-Resolution Imaging Spectrometer on board the Project for On-Board Autonomy satellite, and it includes multiangle and multitemporal acquisitions. The third set is represented by Airborne Visible/InfraRed Imaging Spectrometer measurements. A quantitative performance analysis has been carried out in terms of effectiveness in the dimensionality reduction phase and in terms of the accuracy in the final estimation. The results obtained, when compared with those produced by appropriate benchmark techniques, show the advantages of this approach.
nov-2011
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-INF/02 - CAMPI ELETTROMAGNETICI
English
Con Impact Factor ISI
Autoassociative neural networks (AANNs), dimensionality reduction, hyperspectral, NNs, nonlinear principal components, pixel unmixing
http://ieeexplore.ieee.org/xpl/login.jsp?tp=&arnumber=5967899&url=http%3A%2F%2Fieeexplore.ieee.org%2Fxpls%2Fabs_all.jsp%3Farnumber%3D5967899
Licciardi, G., DEL FRATE, F. (2011). Pixel unmixing in hyperspectral data by means of neural networks. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 49(11), 4163-4172 [10.1109/TGRS.2011.2160950].
Licciardi, G; DEL FRATE, F
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/93488
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