An Elliptic Kernel Unsupervised Autoencoder-Graph Convolutional Network Ensemble Model for Hyperspectral Unmixing
Estefania Alfaro-Mejia, Carlos J Delgado, Vidya Manian

TL;DR
This paper introduces AEGEM, an ensemble model combining elliptical kernel-based graph construction and graph convolutional networks to improve hyperspectral unmixing accuracy, outperforming baseline methods on benchmark datasets.
Contribution
The novel AEGEM framework integrates elliptical kernel spectral distance measurement with graph convolutional networks for enhanced endmember extraction and abundance estimation.
Findings
AEGEM outperforms baseline algorithms on Samson, Jasper, and Urban datasets.
Achieves lower root mean square error and spectral angle distance metrics.
Improves abundance map accuracy for key endmembers like water, tree, and asphalt.
Abstract
Spectral Unmixing is an important technique in remote sensing used to analyze hyperspectral images to identify endmembers and estimate abundance maps. Over the past few decades, performance of techniques for endmember extraction and fractional abundance map estimation have significantly improved. This article presents an ensemble model workflow called Autoencoder Graph Ensemble Model (AEGEM) designed to extract endmembers and fractional abundance maps. An elliptical kernel is applied to measure spectral distances, generating the adjacency matrix within the elliptical neighborhood. This information is used to construct an elliptical graph, with centroids as senders and remaining pixels within the geometry as receivers. The next step involves stacking abundance maps, senders, and receivers as inputs to a Graph Convolutional Network, which processes this input to refine abundance maps.…
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Taxonomy
TopicsRemote-Sensing Image Classification · Advanced Image Fusion Techniques
