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首页> 外文期刊>Journal of visual communication & image representation >Dual learning based compression noise reduction in the texture domain
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Dual learning based compression noise reduction in the texture domain

机译:基于双重学习的纹理域压缩降噪

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Compression noise reduction is similar to the super-resolution problem in terms of the restoration of lost high-frequency information. Because learning-based approaches have proven successful in the past in terms of addressing the super-resolution problem, we focus on a learning-based technique for compressed image denoising. In this process, it is important to search for the exact prior in a training set. The proposed method utilizes two different databases (i.e., a noisy and a denoised database), which work together in a complementary way. The denoised images from the dual databases are combined into a final denoised one. Additionally, the input noisy image is decomposed into structure and texture components, and only the latter is denoised because most noise tends to exist within the texture component. Experimental results show that the proposed method can reduce compression noise while reconstructing the original information that was lost in the compression process, especially for texture regions. (C) 2016 Elsevier Inc. All rights reserved.
机译:就恢复丢失的高频信息而言,压缩噪声的减少与超分辨率问题类似。因为在解决超分辨率问题方面,过去基于学习的方法已被证明是成功的,所以我们将重点放在基于学习的压缩图像降噪技术上。在此过程中,重要的是要在训练集中搜索确切的先验。所提出的方法利用了两个不同的数据库(即,噪声数据库和去噪数据库),它们以互补的方式一起工作。来自双重数据库的去噪图像被组合成最终去噪的图像。另外,将输入的噪声图像分解为结构和纹理成分,并且仅对后者进行去噪,因为大多数噪声倾向于存在于纹理成分内。实验结果表明,该方法在重建压缩过程中丢失的原始信息的同时,可以减少压缩噪声,特别是对于纹理区域。 (C)2016 Elsevier Inc.保留所有权利。

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