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Color Kernel Regression for Robust Direct Upsampling from Raw Data of General Color Filter Array

机译:从通用滤色器阵列的原始数据中进行可靠的直接向上采样的彩色核回归

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Upsampling with preserving image details is highly demanded image operation. There are various upsampling algorithms. Many up-sampling algorithms focus on the gray image. For color images, those algorithms are usually applied to a luminance component only, or independently applied channel by channel. However, we can not observe the full-color image by a single image sensor equipped in a common digital camera. The data observed by the single image sensor is called raw data. The raw data is converted into the full-color image by demo-saicing. Upsampling from the raw data requires sequential processes of demosaicing and upsampling. In this paper, we propose direct upsampling from the raw data based on a kernel regression. Although the kernel regression is known as powerful denoising and interpolation algorithm, the kernel regression has been also proposed for the gray image. We extend to the color kernel regression which can generate the full-color image from any kind of raw data. Second key point of the proposed color kernel regression is a local density parameter optimization, or kernel size optimization, based on the stability of the linear system associated to the kernel regression. We also propose a novel iteration framework for the upsampling. The experimental results demonstrate that the proposed color kernel regression outperforms existing sequential approaches, reconstruction approaches, and existing kernel regression.
机译:保留图像细节的向上采样是对图像操作的高度要求。有多种上采样算法。许多上采样算法专注于灰度图像。对于彩色图像,这些算法通常仅应用于亮度分量,或者逐个通道独立应用。但是,我们无法通过普通数码相机中配备的单个图像传感器来观察全彩色图像。由单个图像传感器观察到的数据称为原始数据。通过演示文稿将原始数据转换为全彩色图像。从原始数据上采样需要去马赛克和上采样的顺序过程。在本文中,我们建议基于核回归从原始数据直接进行上采样。尽管内核回归被称为强大的降噪和插值算法,但也已经针对灰色图像提出了内核回归。我们扩展到颜色核回归,它可以从任何种类的原始数据生成全彩色图像。提出的颜色核回归的第二个关键点是基于与核回归相关联的线性系统的稳定性的局部密度参数优化或核尺寸优化。我们还为上采样提出了一种新颖的迭代框架。实验结果表明,提出的彩色核回归优于现有的顺序方法,重构方法和现有的核回归。

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