TL;DR
This paper introduces a novel, efficient method for real-time photo enhancement using learned, image-adaptive 3D lookup tables (LUTs) that outperform existing techniques in quality and speed.
Contribution
It proposes the first learning-based approach to generate content-adaptive 3D LUTs for high-resolution photo enhancement, combining multiple basis LUTs with a CNN for fast, high-quality results.
Findings
Achieves less than 2 ms processing time for 4K images.
Outperforms state-of-the-art methods in PSNR, SSIM, and color difference metrics.
Uses fewer than 600K parameters, demonstrating high efficiency.
Abstract
Recent years have witnessed the increasing popularity of learning based methods to enhance the color and tone of photos. However, many existing photo enhancement methods either deliver unsatisfactory results or consume too much computational and memory resources, hindering their application to high-resolution images (usually with more than 12 megapixels) in practice. In this paper, we learn image-adaptive 3-dimensional lookup tables (3D LUTs) to achieve fast and robust photo enhancement. 3D LUTs are widely used for manipulating color and tone of photos, but they are usually manually tuned and fixed in camera imaging pipeline or photo editing tools. We, for the first time to our best knowledge, propose to learn 3D LUTs from annotated data using pairwise or unpaired learning. More importantly, our learned 3D LUT is image-adaptive for flexible photo enhancement. We learn multiple basis 3D…
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