CVIVNov 15, 2025

DCA-LUT: Deep Chromatic Alignment with 5D LUT for Purple Fringing Removal

arXiv:2511.12066v1h-index: 3
Originality Highly original
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This addresses a persistent artifact in digital imaging for photographers and camera users, offering a data-driven alternative to traditional hardware-based solutions.

The paper tackled purple fringing removal in digital imaging by introducing DCA-LUT, a deep learning framework that uses a novel chromatic-aware module and a 5D LUT, achieving state-of-the-art performance on synthetic and real-world datasets.

Purple fringing, a persistent artifact caused by Longitudinal Chromatic Aberration (LCA) in camera lenses, has long degraded the clarity and realism of digital imaging. Traditional solutions rely on complex and expensive apochromatic (APO) lens hardware and the extraction of handcrafted features, ignoring the data-driven approach. To fill this gap, we introduce DCA-LUT, the first deep learning framework for purple fringing removal. Inspired by the physical root of the problem, the spatial misalignment of RGB color channels due to lens dispersion, we introduce a novel Chromatic-Aware Coordinate Transformation (CA-CT) module, learning an image-adaptive color space to decouple and isolate fringing into a dedicated dimension. This targeted separation allows the network to learn a precise ``purple fringe channel", which then guides the accurate restoration of the luminance channel. The final color correction is performed by a learned 5D Look-Up Table (5D LUT), enabling efficient and powerful% non-linear color mapping. To enable robust training and fair evaluation, we constructed a large-scale synthetic purple fringing dataset (PF-Synth). Extensive experiments in synthetic and real-world datasets demonstrate that our method achieves state-of-the-art performance in purple fringing removal.

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