$L^2$FMamba: Lightweight Light Field Image Super-Resolution with State Space Model
By: Zeqiang Wei , Kai Jin , Zeyi Hou and more
Potential Business Impact:
Makes blurry pictures sharp with less computer power.
Transformers bring significantly improved performance to the light field image super-resolution task due to their long-range dependency modeling capability. However, the inherently high computational complexity of their core self-attention mechanism has increasingly hindered their advancement in this task. To address this issue, we first introduce the LF-VSSM block, a novel module inspired by progressive feature extraction, to efficiently capture critical long-range spatial-angular dependencies in light field images. LF-VSSM successively extracts spatial features within sub-aperture images, spatial-angular features between sub-aperture images, and spatial-angular features between light field image pixels. On this basis, we propose a lightweight network, $L^2$FMamba (Lightweight Light Field Mamba), which integrates the LF-VSSM block to leverage light field features for super-resolution tasks while overcoming the computational challenges of Transformer-based approaches. Extensive experiments on multiple light field datasets demonstrate that our method reduces the number of parameters and complexity while achieving superior super-resolution performance with faster inference speed.
Similar Papers
Exploring Non-Local Spatial-Angular Correlations with a Hybrid Mamba-Transformer Framework for Light Field Super-Resolution
CV and Pattern Recognition
Makes blurry pictures sharper using smart computer tricks.
First-order State Space Model for Lightweight Image Super-resolution
CV and Pattern Recognition
Makes pictures clearer with smarter computer math.
Transformer-Progressive Mamba Network for Lightweight Image Super-Resolution
CV and Pattern Recognition
Makes pictures clearer with less computer power.