Abstract
Addressing optical corruptions presents a significant challenge due to the inherent variability introduced during both manufacturing and imaging processes. Existing approaches often struggle to handle hybrid corruptions that appear in real-world situations. To address this issue, we propose a versatile computational imaging system aimed at approximating and correcting real-world corruptions. Our method meticulously considers external camera perturbations and internal optical deviations, improving the realism of our system and post-processing pipeline. We generate synthetic data pairs through a well-crafted pipeline, creating a dedicated training dataset without the need for extensive real paired data. For optical correction, we introduce Opticformer, a Transformer-based model adept at adaptively focusing on critical regions and addressing spatially varying corruptions. To enhance its capabilities, we incorporate a novel contrastive-based representation learning method, enabling Opticformer to generate multi-scale refined representations without prior knowledge. Extensive experiments validate our pipeline’s ability to simulate corruptions, closely approximating real-world images. Our proposed correction method successfully mitigates spatially variant corruptions, surpassing peer restoration methods and achieving state-of-the-art performance.
Original language | English |
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Article number | 252 |
Journal | Multimedia Systems |
Volume | 31 |
Issue number | 3 |
DOIs | |
State | Published - Jun 2025 |
Keywords
- Computational imaging
- Contrastive learning
- Degradation representation
- Feature fusion
- Optical correction