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The classification and denoising of image noise based on deep neural networks

机译:基于深神经网络的图像噪声分类与去噪

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摘要

Currently, image denoising is a challenge in many applications of computer vision. The existing denoising methods depend on the information of noise types or levels, which are generally classified by experts. These methods have not applied computational methods to pre-classify the image noise types. Furthermore, some methods assume that the noise type of the image is a certain one like Gaussian noise, which limits the ability of the denoising in real applications. Different from the existing methods, this paper introduces a new method that can classify and denoise not only a certain type noise but also mixed types of noises for real demand. Our method utilizes two types of deep learning networks. One is used to classify the noise type of the images and the other one performs denoising based on the classification result of the first one. Our framework can automatically denoise single or mixed types of noises with these efforts. Our experimental results show that our classification network achieves higher accuracy, and our denoising network can ensure higher PSNR and SSIM values than the existing methods.
机译:目前,图像去噪是计算机愿景许多应用中的挑战。现有的去噪方法取决于噪声类型或水平的信息,这些信息通常由专家分类。这些方法没有应用计算方法来预先分类图像噪声类型。此外,一些方法假设图像的噪声类型是像高斯噪声那样的一定的一种,这限制了现实应用中的去噪能力。与现有方法不同,本文介绍了一种新方法,不仅可以对某种类型的噪声进行分类和去噪,还可以对真实需求进行混合类型的噪音。我们的方法利用两种类型的深度学习网络。一种用于对图像的噪声类型进行分类,另一个用于基于第一个的分类结果执行去噪。我们的框架可以通过这些努力自动欺骗单一或混合类型的噪音。我们的实验结果表明,我们的分类网络实现了更高的准确性,我们的去噪网络可以确保比现有方法更高的PSNR和SSIM值。

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