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Demosaicing Based on Directional Difference Regression and Efficient Regression Priors

机译:基于方向差回归和有效回归先验的去马赛克

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摘要

Color demosaicing is a key image processing step aiming to reconstruct the missing pixels from a recorded raw image. On the one hand, numerous interpolation methods focusing on spatial-spectral correlations have been proved very efficient, whereas they yield a poor image quality and strong visible artifacts. On the other hand, optimization strategies, such as learned simultaneous sparse coding and sparsity and adaptive principal component analysis-based algorithms, were shown to greatly improve image quality compared with that delivered by interpolation methods, but unfortunately are computationally heavy. In this paper, we propose efficient regression priors as a novel, fast post-processing algorithm that learns the regression priors offline from training data. We also propose an independent efficient demosaicing algorithm based on directional difference regression, and introduce its enhanced version based on fused regression. We achieve an image quality comparable to that of the state-of-the-art methods for three benchmarks, while being order(s) of magnitude faster.
机译:彩色去马赛克是关键图像处理步骤,旨在从记录的原始图像中重建丢失的像素。一方面,已证明许多专注于空间光谱相关性的插值方法非常有效,而它们却产生了较差的图像质量和较强的可见伪像。另一方面,与插值方法相比,优化策略(例如,学习的同时稀疏编码和稀疏性以及基于自适应主成分分析的算法)可显着提高图像质量,但不幸的是计算量很大。在本文中,我们提出了有效的回归先验作为一种新颖的快速后处理算法,该算法可从训练数据中离线学习回归先验。我们还提出了一种基于方向差回归的独立高效去马赛克算法,并介绍了基于融合回归的增强版本。对于三个基准,我们获得的图像质量可与最新方法媲美,同时数量级更快。

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