压缩demosaicing

A. A. Moghadam, M. Aghagolzadeh, Mrityunjay Kumar, H. Radha
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引用次数: 22

摘要

典型的消费类数码相机使用彩色滤光片阵列(CFA)来感知每个图像像素的一种颜色成分。通过插值缺失的颜色分量重建原始三色图像。这种插值过程(称为反马赛克)对应于求解一个欠定的线性方程组。在本文中,我们证明了用随机全色CFA取代传统的CFA,可以利用压缩感知(CS)新兴领域的最新成果以一种新的方式解决去马赛克问题。具体来说,在图像重建过程中,我们利用了每个像素的多维颜色在(可能是过完整的)颜色系统中具有可压缩表示的事实。在传感阶段坚持“每像素感知单一颜色”的约束的同时,在重建过程中,我们通过利用整体图像在一些稀疏化基中的可压缩表示来利用像素间的相关性。根据CFA,稀疏化基和颜色系统,我们形成了一个待定的线性方程组,并利用CS求解器找到彩色图像的最稀疏解。我们证明,对于自然图像,所提出的压缩去马赛克(CD)框架在视觉上优于领先的去马赛克方法在一致的方式;在许多情况下,它以一种重要的方式实现了清晰可见的改进。
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Compressive demosaicing
A typical consumer digital camera uses a Color Filter Array (CFA) to sense only one color component per image pixel. The original three-color image is reconstructed by interpolating the missing color components. This interpolation process (known as demosaicing) corresponds to solving an under-determined system of linear equations. In this paper, we show that by replacing the traditional CFA with a random panchromatic CFA, recent results in the emerging field of Compressed Sensing (CS) can be used to solve the demosaicing problem in a novel way. Specifically, during the image reconstruction process, we exploit the fact that the multi-dimensional color of each pixel has a compressible representation in a (possibly overcomplete) color system. While adhering to the “single color per pixel sensing” constraint at the sensing stage, during the reconstruction process we utilize the inter-pixel correlation by exploiting the compressible representation of the overall image in some sparsifying bases. Depending on the CFA, sparsifying bases and the color system, we form an underdetermined system of linear equations and find the sparsest solution for the color image by utilizing a CS solver. We illustrate that, for natural images, the proposed Compressive Demosaicing (CD) framework visually outperforms leading demosaicing methods in a consistent manner; in many cases it achieves clear visible improvements in a significant way.
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