In recent years, there has been an unprecedented upsurge in applying deep learning approaches, specifically convolutional neural networks (CNNs), to solve image denoising problems, owing to their superior performance. However, CNNs mostly rely on Gaussian noise, and there is a conspicuous lack of exploiting CNNs for salt-and-pepper (SAP) noise reduction. In this paper, we proposed a deep CNN model, namely SeConvNet, to suppress SAP noise in gray-scale and color images. To meet this objective, we introduce a new selective convolutional (SeConv) block. SeConvNet is compared to state-of-the-art SAP denoising methods using extensive experiments on various common datasets. The results illustrate that the proposed SeConvNet model effectively restores images corrupted by SAP noise and surpasses all its counterparts at both quantitative criteria and visual effects, especially at high and very high noise densities.
翻译:近年来,在应用深层学习方法,特别是革命神经网络(CNNs)解决图像去除问题方面出现了前所未有的激增,因为其表现优异。然而,有线电视新闻网主要依赖高山噪音,明显缺乏利用有线电视新闻网来减少盐和椒(SAP)噪音。在本文中,我们提出了一个有深度有线电视新闻网模式,即SeConvNet,以在灰色和彩色图像中压制SAP噪音。为了实现这一目标,我们引入了一个新的有选择的有选择的共生(SeConv)块。SEConvNet与使用各种共同数据集的广泛实验的最新SAP除尘方法进行了比较。结果表明,拟议的SeconNet模型有效地恢复了被SAP噪音损坏的图像,在数量标准和视觉效果上超过了所有对应的图像,特别是在高和非常高的噪声密度下。