SpectraMorph: Structured Latent Learning for Self-Supervised Hyperspectral Super-Resolution
About
Hyperspectral sensors capture dense spectra per pixel but suffer from low spatial resolution, causing blurred boundaries and mixed-pixel effects. Co-registered companion sensors such as multispectral, RGB, or panchromatic cameras provide high-resolution spatial detail, motivating hyperspectral super-resolution through the fusion of hyperspectral and multispectral images (HSI-MSI). Existing deep learning based methods achieve strong performance but rely on opaque regressors that lack interpretability and often fail when the MSI has very few bands. We propose SpectraMorph, a physics-guided self-supervised fusion framework with a structured latent space. Instead of direct regression, SpectraMorph enforces an unmixing bottleneck: endmember signatures are extracted from the low-resolution HSI, and a compact multilayer perceptron predicts abundance-like maps from the MSI. Spectra are reconstructed by linear mixing, with training performed in a self-supervised manner via the MSI sensor's spectral response function. SpectraMorph produces interpretable intermediates, trains in under a minute, and remains robust even with a single-band (pan-chromatic) MSI. Experiments on synthetic and real-world datasets show SpectraMorph consistently outperforming state-of-the-art unsupervised/self-supervised baselines while remaining very competitive against supervised baselines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Hyperspectral Image Super-Resolution | Pavia University Mean value of 80 LR HSI-HR MSI configurations | RMSE0.0216 | 20 | |
| Hyperspectral Image Super-Resolution | Kennedy Space Center | RMSE0.043 | 20 | |
| Hyperspectral Image Super-Resolution | Pavia Center (test) | RMSE0.02 | 11 | |
| Hyperspectral Super-Resolution | Botswana | RMSE0.0118 | 11 | |
| Hyperspectral Super-Resolution | Washington DC Mall 80 LR-HSI/HR-MSI configurations | RMSE0.0178 | 11 |