Title :
Dimensionality Reduction via Regression in Hyperspectral Imagery
Author :
Laparra, Valero ; Malo, Jesus ; Camps-Valls, Gustau
Author_Institution :
Image Process. Lab. (IPL), Univ. de Valencia, Paterna, Spain
Abstract :
This paper introduces a new unsupervised method for dimensionality reduction via regression (DRR). The algorithm belongs to the family of invertible transforms that generalize principal component analysis (PCA) by using curvilinear instead of linear features. DRR identifies the nonlinear features through multivariate regression to ensure the reduction in redundancy between the PCA coefficients, the reduction of the variance of the scores, and the reduction in the reconstruction error. More importantly, unlike other nonlinear dimensionality reduction methods, the invertibility, volume-preservation, and straightforward out-of-sample extension, makes DRR interpretable and easy to apply. The properties of DRR enable learning a more broader class of data manifolds than the recently proposed non-linear principal components analysis (NLPCA) and principal polynomial analysis (PPA). We illustrate the performance of the representation in reducing the dimensionality of remote sensing data. In particular, we tackle two common problems: processing very high dimensional spectral information such as in hyperspectral image sounding data, and dealing with spatial-spectral image patches of multispectral images. Both settings pose collinearity and ill-determination problems. Evaluation of the expressive power of the features is assessed in terms of truncation error, estimating atmospheric variables, and surface land cover classification error. Results show that DRR outperforms linear PCA and recently proposed invertible extensions based on neural networks (NLPCA) and univariate regressions (PPA).
Keywords :
geophysical image processing; hyperspectral imaging; image reconstruction; land cover; principal component analysis; regression analysis; remote sensing; transforms; DRR; PCA; atmospheric variable estimation; curvilinear; data manifolds; dimensionality reduction via regression; hyperspectral imagery; ill-determination problem; invertible transforms; multispectral images; multivariate regression; nonlinear features; pose collinearity problem; principal component analysis; reconstruction error; remote sensing data dimensionality; spatial-spectral image patches; surface land cover classification error; truncation error; unsupervised method; Feature extraction; Hyperspectral imaging; Manifolds; Principal component analysis; Transforms; Dimensionality reduction via regression; Infrared Atmospheric Sounding Interferometer (IASI); hyperspectral sounder; landsat; manifold learning; nonlinear dimensionality reduction; principal component analysis (PCA);
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2015.2417833