有效的颜色校正管道的噪声图像

Kenta Takahashi, Yusuke Monno, Masayuki Tanaka, M. Okutomi
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引用次数: 8

摘要

色彩校正是一项基本的图像处理操作,它将依赖于相机的RGB色彩空间转换为标准色彩空间,例如XYZ或sRGB色彩空间。色彩校正通常通过将相机RGB值乘以色彩校正矩阵来执行,这通常会放大图像噪声。本文提出了一种有效的噪声图像色彩校正管道。拟议的管道由两部分组成;色彩校正和去噪。在色彩校正部分,我们利用空间变化色彩校正(SVCC),考虑噪声影响自适应计算每个局部图像块的色彩校正矩阵。虽然SVCC可以有效地抑制噪声放大,但噪声仍然包含在颜色校正后的图像中,其中每个局部块的噪声水平在空间上是不同的。在去噪部分,我们提出了一种有效的去噪框架,用于具有空间变化噪声水平的彩色校正图像。实验结果表明,所提出的颜色校正管道在各种噪声水平下都优于现有算法。
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Effective color correction pipeline for a noisy image
Color correction is an essential image processing operation that transforms a camera-dependent RGB color space to a standard color space, e.g., the XYZ or the sRGB color space. The color correction is typically performed by multiplying the camera RGB values by a color correction matrix, which often amplifies image noise. In this paper, we propose an effective color correction pipeline for a noisy image. The proposed pipeline consists of two parts; the color correction and denoising. In the color correction part, we utilize spatially varying color correction (SVCC) that adaptively calculates the color correction matrices for each local image block considering the noise effect. Although the SVCC can effectively suppress the noise amplification, the noise is still included in the color corrected image, where the noise levels spatially vary for each local block. In the denoising part, we propose an effective denoising framework for the color corrected image with spatially varying noise levels. Experimental results demonstrate that the proposed color correction pipeline outperforms existing algorithms for various noise levels.
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