DocumentCode :
144212
Title :
Hyperspectral subspace learning of forest phenology under order constraints
Author :
Uto, Kuniaki ; Kosugi, Yukio ; Saito, Genya
Author_Institution :
Tokyo Inst. of Technol., Tokyo, Japan
fYear :
2014
fDate :
13-18 July 2014
Firstpage :
4652
Lastpage :
4655
Abstract :
We propose semi-supervised regression and dimensionality reduction methods for hyperspectral subspace learning based on abundant unlabeled data and a small number of labeled data. The quantitative target variables for regression and the order constraints for dimensionality reduction are embedded in matrices representing data relations, i.e., a set of between-class scatter matrices, within-class scatter matrices and supervised local attraction matrices. The optimal projection matrices are estimated by generalized eigenvalue problems based on the matrices. The proposed methods are applied to dimensionality reduction problems based on a time-series of hyper-spectral data for a deciduous broad-leaved forest to extract local coordinates related to phenological changes.
Keywords :
eigenvalues and eigenfunctions; geophysical image processing; hyperspectral imaging; learning (artificial intelligence); regression analysis; time series; vegetation; between class scatter matrices; dimensionality reduction; forest phenology; generalized eigenvalue problems; hperspectral subspace learning; order constraints; semisupervised regression; supervised local attraction matrices; time series; within class scatter matrices; Covariance matrices; Eigenvalues and eigenfunctions; Hyperspectral imaging; Principal component analysis; Vectors; Vegetation; Hyperspectral data; dimensionality reduction; regression; semi-supervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2014 IEEE International
Conference_Location :
Quebec City, QC
Type :
conf
DOI :
10.1109/IGARSS.2014.6947530
Filename :
6947530
Link To Document :
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