CVLGIVNov 29, 2021

Graph Embedding via High Dimensional Model Representation for Hyperspectral Images

arXiv:2111.14680v19 citations
Originality Incremental advance
AI Analysis

This addresses the need for explicit, nonlinear embedding maps in remote sensing image analysis, though it appears incremental as it builds on existing manifold learning methods.

The paper tackled the problem of out-of-sample embedding for hyperspectral images by proposing a nonlinear manifold learning method based on High Dimensional Model Representation, achieving promising classification accuracy on a representative dataset.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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