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GTF: Omnidirectional EPI Transformer for Light Field Super-Resolution

About

Light field (LF) image super-resolution benefits from Epipolar Plane Images (EPIs), whose line slopes explicitly encode disparity. However, existing Transformer-based LF SR methods mainly attend to horizontal and vertical EPIs, leaving diagonal epipolar geometry underexplored. We present GTF, an omnidirectional EPI Transformer that explicitly models horizontal, vertical, 45-degree, and 135-degree EPIs within a unified reconstruction framework. GTF combines directional EPI processing, MacPI-based prior injection, adaptive directional fusion, and a topology-preserving feed-forward network to better exploit LF geometry. For the NTIRE 2026 fidelity tracks, we use GTF as the main model, while a lightweight GTF-Tiny variant targets the efficiency track. On five standard LF SR benchmarks covering both real-captured and synthetic scenes, GTF reaches 32.78 dB without inference-time enhancement, and stronger inference settings with EPSW and test-time augmentation further improve performance. Under the NTIRE 2026 efficiency constraint, GTF-Tiny attains 32.57 dB with only 0.915M parameters and 19.81 GFLOPs. In the NTIRE 2026 Light Field Image Super-Resolution Challenge, our submissions rank 3rd on Track 1 and Track 3 and 4th on Track 2. Architecture-evolution, channel-width, and inference analyses further support the effectiveness of diagonal EPI modeling, directional fusion, and the lightweight design.

Kunyu Li, Fei Wang, Lichao Zhang, Junjie Liu, Bihong Li• 2026

Related benchmarks

TaskDatasetResultRank
Light Field Super-ResolutionEPFL
PSNR30.39
19
Light Field Super-ResolutionHCI new
PSNR31.9
19
Light Field Super-ResolutionHCI old
PSNR38.16
19
Light Field Super-ResolutionINRIA
PSNR32.5
19
Light Field Super-ResolutionSTFgantry
PSNR32.84
19
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