IEEE Trans Image Process. 2014 Oct;23(10):4361-71. doi: 10.1109/TIP.2014.2347204. Epub 2014 Aug 12.
The additive white Gaussian noise is widely assumed in many image processing algorithms. However, in the real world, the noise from actual cameras is better modeled as signal-dependent noise (SDN). In this paper, we focus on the SDN model and propose an algorithm to automatically estimate its parameters from a single noisy image. The proposed algorithm identifies the noise level function of signal-dependent noise assuming the generalized signal-dependent noise model and is also applicable to the Poisson-Gaussian noise model. The accuracy is achieved by improved estimation of local mean and local noise variance from the selected low-rank patches. We evaluate the proposed algorithm with both synthetic and real noisy images. Experiments demonstrate that the proposed estimation algorithm outperforms the state-of-the-art methods.
加性白高斯噪声在许多图像处理算法中被广泛假设。然而,在现实世界中,实际相机的噪声更好地建模为信号相关噪声(SDN)。在本文中,我们专注于 SDN 模型,并提出了一种从单个噪声图像自动估计其参数的算法。所提出的算法通过假设广义信号相关噪声模型并对局部均值和局部噪声方差进行改进估计,从而识别信号相关噪声的噪声水平函数,该算法也适用于泊松-高斯噪声模型。我们使用合成和真实噪声图像评估了所提出的算法。实验表明,所提出的估计算法优于最先进的方法。