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State-of-art analysis of image denoising methods using convolutional neural networks

机译:使用卷积神经网络对图像去噪方法的最新分析

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Convolutional neural networks (CNNs) are deep neural networks that can be trained on large databases and show outstanding performance on object classification, segmentation, image denoising etc. In the past few years, several image denoising techniques have been developed to improve the quality of an image. The CNN based image denoising models have shown improvement in denoising performance as compared to non-CNN methods like block-matching and three-dimensional (3D) filtering, contemporary wavelet and Markov random field approaches etc. which had remained state-of-the-art for years. This study provides a comprehensive study of state-of-the-art image denoising methods using CNN. The literature associated with different CNNs used for image restoration like residual learning based models (DnCNN-S, DnCNN-B, IDCNN), non-locality reinforced (NN3D), fast and flexible network (FFDNet), deep shrinkage CNN (SCNN), a model for mixed noise reduction, denoising prior driven network (PDNN) are reviewed. DnCNN-S and PDNN remove Gaussian noise of fixed level, whereas DnCNN-B, IDCNN, NN3D and SCNN are used for blind Gaussian denoising. FFDNet is used for spatially variant Gaussian noise. The performance of these CNN models is analysed on BSD-68 and Set-12 datasets. PDNN shows the best result in terms of PSNR for both BSD-68 and Set-12 datasets.
机译:卷积神经网络(CNN)是可以在大型数据库上训练的深层神经网络,在对象分类,分割,图像去噪等方面表现出出色的性能。在过去的几年中,已经开发了多种图像去噪技术来提高图像质量。图片。与非神经网络方法(例如块匹配和三维(3D)滤波,现代小波和马尔可夫随机场方法等)相比,基于CNN的图像去噪模型已显示出在去噪性能方面的改进,这些方法仍保持了最新状态。多年的艺术。这项研究提供了使用CNN的最新图像去噪方法的全面研究。与用于图像恢复的不同CNN相关的文献,例如基于残差学习的模型(DnCNN-S,DnCNN-B,IDCNN),非局部增强(NN3D),快速灵活的网络(FFDNet),深度收缩CNN(SCNN),审查了一种用于混合降噪的模型,该模型降噪了先驱网络(PDNN)。 DnCNN-S和PDNN消除了固定水平的高斯噪声,而DnCNN-B,IDCNN,NN3D和SCNN用于盲高斯去噪。 FFDNet用于空间变化的高斯噪声。在BSD-68和Set-12数据集上分析了这些CNN模型的性能。对于BSD-68和Set-12数据集,PDNN在PSNR方面显示出最佳结果。

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