A Trainable Spectral-Spatial Sparse Coding Model for Hyperspectral Image Restoration
About
Hyperspectral imaging offers new perspectives for diverse applications, ranging from the monitoring of the environment using airborne or satellite remote sensing, precision farming, food safety, planetary exploration, or astrophysics. Unfortunately, the spectral diversity of information comes at the expense of various sources of degradation, and the lack of accurate ground-truth "clean" hyperspectral signals acquired on the spot makes restoration tasks challenging. In particular, training deep neural networks for restoration is difficult, in contrast to traditional RGB imaging problems where deep models tend to shine. In this paper, we advocate instead for a hybrid approach based on sparse coding principles that retains the interpretability of classical techniques encoding domain knowledge with handcrafted image priors, while allowing to train model parameters end-to-end without massive amounts of data. We show on various denoising benchmarks that our method is computationally efficient and significantly outperforms the state of the art.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Denoising | Washington DC Mall (test) | MPSNR43.85 | 90 | |
| Hyperspectral Image Denoising | ICVL (test) | PSNR45.81 | 50 | |
| Hyperspectral Image Denoising | Washington DC Mall (full) | MPSNR42.88 | 48 | |
| HSI Denoising | Salinas | PSNR41.06 | 24 | |
| HSI Denoising | WDC mall | PSNR38.7 | 24 | |
| HSI Denoising | Houston | PSNR33.91 | 24 | |
| Hyperspectral Image Denoising | ICVL Gaussian noise σ ∈ [0, 15] (test) | PSNR49.68 | 15 | |
| Hyperspectral Image Denoising | ICVL Gaussian noise σ ∈ [0, 55] (test) | PSNR45.15 | 15 | |
| Hyperspectral Image Denoising | ICVL Gaussian noise σ ∈ [0, 95] (test) | PSNR43.1 | 15 | |
| HSI Denoising | PAVIA CITY CENTER | PSNR28.69 | 15 |