RASLF: Representation-Aware State Space Model for Light Field Super-Resolution
arXiv cs.CV / 3/18/2026
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Key Points
- RASLF introduces a representation-aware state-space framework for light field super-resolution that leverages cross-representation correlations to improve texture fidelity and view consistency.
- It features a Progressive Geometric Refinement (PGR) block that uses a panoramic epipolar representation to explicitly encode multi-view parallax differences and enable integration across different LF representations.
- It proposes a Representation Aware Asymmetric Scanning (RAAS) mechanism that dynamically adjusts scanning paths based on the properties of each representation space and uses path pruning to balance performance and efficiency.
- It includes a Dual-Anchor Aggregation (DAA) module to improve hierarchical feature flow and reduce redundant deep features, prioritizing key reconstruction information, with experiments showing state-of-the-art accuracy and efficiency.
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