An unsupervised HS-SISR framework trains a super-resolution network on synthetic abundance maps from a dead leaves model derived from the low-resolution input and known PSF, then reconstructs the enhanced hyperspectral image via unmixing.
Residual dense net- work for image super-resolution,
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Synthetic Abundance Maps for Unsupervised Super-Resolution of Hyperspectral Remote Sensing Images
An unsupervised HS-SISR framework trains a super-resolution network on synthetic abundance maps from a dead leaves model derived from the low-resolution input and known PSF, then reconstructs the enhanced hyperspectral image via unmixing.