ChebyLighter:低光图像增强的最佳曲线估计

Jinwang Pan, Deming Zhai, Yuanchao Bai, Junjun Jiang, Debin Zhao, Xianming Liu
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引用次数: 3

摘要

弱光增强的目的是从曝光不良、对比度低的弱光图像中恢复高对比度的正常光图像。本文受照片编辑软件中的曲线调整和切比雪夫近似的启发,提出了一种新的弱光图像增亮模型。所提出的ChebyLighter模型,学习对低光照图像的逐像素调整曲线进行周期性估计,以重建增强的输出。在ChebyLighter中,首先生成Chebyshev图像序列。然后利用三系数估计(Triple coefficient Estimation, TCE)模块估计逐像素的系数矩阵,再利用切比雪夫注意加权和(Chebyshev Attention Weighted sum, CAWS)迭代重构最终增强图像。TCE模块是专门基于双重注意机制设计的,有三个必要的输入。由于所建立的模型可以通过数值逼近得到调节曲线,因此可以达到理想的效果。通过对不同测试图像进行大量的定量和定性实验,我们证明了所提出的方法优于最先进的低光图像增强算法。
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ChebyLighter: Optimal Curve Estimation for Low-light Image Enhancement
Low-light enhancement aims to recover a high contrast normal light image from a low-light image with bad exposure and low contrast. Inspired by curve adjustment in photo editing software and Chebyshev approximation, this paper presents a novel model for brightening low-light images. The proposed model, ChebyLighter, learns to estimate pixel-wise adjustment curves for a low-light image recurrently to reconstruct an enhanced output. In ChebyLighter, Chebyshev image series are first generated. Then pixel-wise coefficient matrices are estimated with Triple Coefficient Estimation (TCE) modules and the final enhanced image is recurrently reconstructed by Chebyshev Attention Weighted Summation (CAWS). The TCE module is specifically designed based on dual attention mechanism with three necessary inputs. Our method can achieve ideal performance because adjustment curves can be obtained with numerical approximation by our model. With extensive quantitative and qualitative experiments on diverse test images, we demonstrate that the proposed method performs favorably against state-of-the-art low-light image enhancement algorithms.
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