A Holistic Approach to Cross-Channel Image Noise Modeling and Its Application to Image Denoising

Seonghyeon Nam, Youngbae Hwang, Y. Matsushita, Seon Joo Kim
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引用次数: 184

Abstract

Modelling and analyzing noise in images is a fundamental task in many computer vision systems. Traditionally, noise has been modelled per color channel assuming that the color channels are independent. Although the color channels can be considered as mutually independent in camera RAW images, signals from different color channels get mixed during the imaging process inside the camera due to gamut mapping, tone-mapping, and compression. We show the influence of the in-camera imaging pipeline on noise and propose a new noise model in the 3D RGB space to accounts for the color channel mix-ups. A data-driven approach for determining the parameters of the new noise model is introduced as well as its application to image denoising. The experiments show that our noise model represents the noise in regular JPEG images more accurately compared to the previous models and is advantageous in image denoising.
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跨通道图像噪声建模的整体方法及其在图像去噪中的应用
对图像中的噪声进行建模和分析是许多计算机视觉系统的基本任务。传统上,假设每个颜色通道是独立的,噪声被建模为每个颜色通道。虽然在相机RAW图像中,颜色通道可以看作是相互独立的,但是在相机内部的成像过程中,由于色域映射、色调映射和压缩,不同颜色通道的信号会混合在一起。我们展示了相机内成像管道对噪声的影响,并在3D RGB空间中提出了一个新的噪声模型来解释颜色通道混淆。介绍了一种确定新噪声模型参数的数据驱动方法及其在图像去噪中的应用。实验表明,我们的噪声模型比以往的模型更准确地反映了常规JPEG图像中的噪声,在图像去噪方面具有优势。
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