6533b853fe1ef96bd12ad572

RESEARCH PRODUCT

Graph Embedding via High Dimensional Model Representation for Hyperspectral Images

Gustau Camps-vallsGülşen Taşkın

subject

FOS: Computer and information sciencesComputer Science - Machine LearningI.5.2Computer Vision and Pattern Recognition (cs.CV)G.1.6I.5.4Image and Video Processing (eess.IV)0211 other engineering and technologiesComputer Science - Computer Vision and Pattern RecognitionI.4.702 engineering and technologyElectrical Engineering and Systems Science - Image and Video ProcessingI.4.10; I.5.2; G.1.6; I.4.7; I.5.4I.4.10Machine Learning (cs.LG)FOS: Electrical engineering electronic engineering information engineeringGeneral Earth and Planetary SciencesElectrical and Electronic Engineering021101 geological & geomatics engineering

description

Learning the manifold structure of remote sensing images is of paramount relevance for modeling and understanding processes, as well as to encapsulate the high dimensionality in a reduced set of informative features for subsequent classification, regression, or unmixing. Manifold learning methods have shown excellent performance to deal with hyperspectral image (HSI) analysis but, unless specifically designed, they cannot provide an explicit embedding map readily applicable to out-of-sample data. A common assumption to deal with the problem is that the transformation between the high-dimensional input space and the (typically low) latent space is linear. This is a particularly strong assumption, especially when dealing with hyperspectral images due to the well-known nonlinear nature of the data. To address this problem, a manifold learning method based on High Dimensional Model Representation (HDMR) is proposed, which enables to present a nonlinear embedding function to project out-of-sample samples into the latent space. The proposed method is compared to manifold learning methods along with its linear counterparts and achieves promising performance in terms of classification accuracy of a representative set of hyperspectral images.

10.1109/tgrs.2021.3133957http://arxiv.org/abs/2111.14680