Latent Diffusion Prior Enhanced Deep Unfolding for Snapshot Spectral Compressive Imaging
About
Snapshot compressive spectral imaging reconstruction aims to reconstruct three-dimensional spatial-spectral images from a single-shot two-dimensional compressed measurement. Existing state-of-the-art methods are mostly based on deep unfolding structures but have intrinsic performance bottlenecks: $i$) the ill-posed problem of dealing with heavily degraded measurement, and $ii$) the regression loss-based reconstruction models being prone to recover images with few details. In this paper, we introduce a generative model, namely the latent diffusion model (LDM), to generate degradation-free prior to enhance the regression-based deep unfolding method. Furthermore, to overcome the large computational cost challenge in LDM, we propose a lightweight model to generate knowledge priors in deep unfolding denoiser, and integrate these priors to guide the reconstruction process for compensating high-quality spectral signal details. Numeric and visual comparisons on synthetic and real-world datasets illustrate the superiority of our proposed method in both reconstruction quality and computational efficiency. Code will be released.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Spectral Compressive Imaging Reconstruction | 10 simulated scenes | PSNR (Scene 1)38.08 | 23 | |
| Continuous Spectral Reconstruction | ICVL (test) | SAM2.16 | 10 | |
| Spectral Super-Resolution | ICVL | SAM2.08 | 10 | |
| Snapshot Compressive Imaging Reconstruction | 143-band Spectral Data (Simulated) | Params (M)10.88 | 6 |