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Abstract
This paper introduces a new latent variable probabilistic framework for representing spectral data of high spatial and spectral dimensionality, such as hyperspectral images. We use a generative Bayesian model to represent the image formation process and provide interpretable and efficient inference and learning methods. Surprisingly, our approach can be implemented with simple tools and does not require extensive training data, detailed pixel-by-pixel labeling, or significant computational resources. Numerous experiments with simulated data and real benchmark scenarios show encouraging image classification performance. These results validate the unique ability of our framework to discriminate complex hyperspectral images, irrespective of the presence of highly discriminative spectral signatures.
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Details
1 University of Chile, Advanced Laboratory for Geostatistical Supercomputing - ALGES, Advanced Mining Technology Center - AMTC, Santiago, Chile (GRID:grid.443909.3) (ISNI:0000 0004 0385 4466); University of Chile, Department of Information Decision Group, Electrical Engineering, Santiago, Chile (GRID:grid.443909.3) (ISNI:0000 0004 0385 4466)
2 University of Chile, Advanced Laboratory for Geostatistical Supercomputing - ALGES, Advanced Mining Technology Center - AMTC, Santiago, Chile (GRID:grid.443909.3) (ISNI:0000 0004 0385 4466)
3 Universidad Politécnica de Cartagena, Department of Applied Physics and Naval Technology, Murcia, Spain (GRID:grid.218430.c) (ISNI:0000 0001 2153 2602)