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Structure-Based Low-Rank Retinex Model for Low-Light Image Enhancement

机译:基于结构的低级Retinex模型,用于低光图像增强

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In this paper, we propose a structure-based low-rank Retinex model for simultaneous low-light image enhancement and noise removal. Based on the traditional variational-based Retinex framework, in the proposed model, a smooth prior is forced on the illumination, and a gradient fidelity term and the weighted nuclear norm are used to suppress noise and enhance structural details in the reflectance. By considering that the manifold structure similarity is more effective than intensity similarity in describing the structural features of image patches, we further propose to use the manifold structure similarity in image patch grouping. Then, an alternating direction minimization algorithm is used to solve the reflectance estimating model. The entire process for solving the proposed model uses a sequential optimization. The final enhancement results is obtained by combining the reflectance and the Gamma corrected illumination. Experiment show that, the proposed method can simultaneously enhance and denoise the low-light image, and produce better or comparable results compared with the state-of-the-art methods.
机译:在本文中,我们提出了一种基于结构的低秩Rexinex模型,用于同时低光图像增强和噪声去除。基于传统的基于变分的Retinex框架,在所提出的模型中,强制了光滑的前提,并使用梯度保真度术语和加权核规范来抑制噪声并提高反射率的结构细节。通过考虑歧管结构相似性比在描述图像斑块的结构特征时比强度相似性更有效,我们进一步建议在图像贴片分组中使用歧管结构相似性。然后,使用交替方向最小化算法来解决反射率估计模型。解决所提出的模型的整个过程使用顺序优化。通过组合反射率和伽马校正的照明来获得最终增强结果。实验表明,所提出的方法可以同时增强和去噪低光图像,与最先进的方法相比,产生更好或更好的结果。

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