Automatic denoising parameter estimation using gradient histograms

Tamara Seybold, F. Kuhn, Julian Habigt, Mark Hartenstein, W. Stechele
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Abstract

State-of-the-art denoising methods provide denoising results that can be considered close to optimal. The denoising methods usually have one or more parameters regulating denoising strength that can be adapted for a specific image. To obtain the optimal denoising result, the correct parameter setting is crucial. In this paper, we therefore propose a method that can automatically estimate the optimal parameter of a denoising algorithm. Our approach compares the gradient histogram of a denoised image to an estimated reference gradient histogram. The reference gradient histogram is estimated based on down- and upsampling of the noisy image, thus our method works without a reference and is image-adaptive. We evaluate our propsed down-/upsampling-based gradient histogram method (DUG) based on a subjective test with 20 participants. In the test data, we included images from both the Kodak data set and the more realistic ARRI data set and we used the state-of-the-art denoising method BM3D. Based on the test results we can show that the parameter estimated by our method is very close to the human perception. Despite being very fast and simple to implement, our method shows a lower error than all other suitable no-reference metrics we found.
使用梯度直方图的自动去噪参数估计
最先进的去噪方法可以提供接近最佳的去噪结果。去噪方法通常具有一个或多个调节去噪强度的参数,该参数可适应于特定图像。为了获得最佳的去噪效果,正确的参数设置至关重要。因此,本文提出了一种自动估计去噪算法最优参数的方法。我们的方法将去噪图像的梯度直方图与估计的参考梯度直方图进行比较。参考梯度直方图的估计是基于噪声图像的下采样和上采样,因此我们的方法可以在没有参考的情况下工作,并且是图像自适应的。我们基于20名参与者的主观测试评估了我们提出的基于下/上采样的梯度直方图方法(DUG)。在测试数据中,我们包括来自柯达数据集和更真实的ARRI数据集的图像,我们使用了最先进的去噪方法BM3D。测试结果表明,该方法估计的参数与人类感知非常接近。尽管实现起来非常快速和简单,但我们的方法比我们发现的所有其他合适的无参考指标显示出更低的误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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