Faculty of Automatic Control, Electronics and Computer Science, Silesian University of Technology, 44100 Gliwice, Poland.
Faculty of Materials Engineering and Metallurgy, Silesian University of Technology, 40019 Katowice, Poland.
Sensors (Basel). 2020 May 14;20(10):2782. doi: 10.3390/s20102782.
Noise reduction is one of the most important and still active research topics in low-level image processing due to its high impact on object detection and scene understanding for computer vision systems. Recently, we observed a substantially increased interest in the application of deep learning algorithms. Many computer vision systems use them, due to their impressive capability of feature extraction and classification. While these methods have also been successfully applied in image denoising, significantly improving its performance, most of the proposed approaches were designed for Gaussian noise suppression. In this paper, we present a switching filtering technique intended for impulsive noise removal using deep learning. In the proposed method, the distorted pixels are detected using a deep neural network architecture and restored with the fast adaptive mean filter. The performed experiments show that the proposed approach is superior to the state-of-the-art filters designed for impulsive noise removal in color digital images.
降噪是底层图像处理中最重要且仍在活跃研究的课题之一,因为它对计算机视觉系统的目标检测和场景理解有很大的影响。最近,我们观察到深度学习算法的应用有了显著的增加。由于其强大的特征提取和分类能力,许多计算机视觉系统都在使用它们。虽然这些方法也已成功应用于图像去噪,显著提高了其性能,但大多数提出的方法都是针对高斯噪声抑制设计的。在本文中,我们提出了一种基于深度学习的切换滤波技术,用于去除脉冲噪声。在所提出的方法中,使用深度神经网络结构检测失真像素,并使用快速自适应均值滤波器进行恢复。所进行的实验表明,与为彩色数字图像中去除脉冲噪声而设计的最新滤波器相比,所提出的方法具有优越性。