Noise reduction is one the most important and still active research topic in low-level image processing due to its high impact on object detection and scene understanding for computer vision systems. Recently, we can observe a substantial increase of interest in the application of deep learning algorithms in many computer vision problems due to its impressive capability of automatic feature extraction and classification. These methods have been also successfully applied in image denoising, significantly improving the performance, but most of the proposed approaches were designed for Gaussian noise suppression. In this paper, we present a switching filtering design intended for impulsive noise removal using deep learning. In the proposed method, the impulses are identified using a novel deep neural network architecture and noisy pixels are restored using 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 digital color images.
翻译:降低噪音是低水平图像处理中最重要的、仍然活跃的研究课题之一,因为它对物体探测和对计算机视觉系统的现场了解影响很大。最近,我们可以观察到,由于计算机视觉问题具有令人印象深刻的自动特征提取和分类能力,许多计算机视觉问题对应用深学习算法的兴趣大大增加。这些方法还成功地应用于图像拆卸,大大改进了性能,但大多数拟议方法是为高斯噪音抑制设计的。在本文中,我们提出了一个开关过滤设计,目的是利用深层学习来消除脉冲噪音。在拟议方法中,用新的深线网络结构确定脉冲,使用快速适应平均值过滤器恢复噪音像素。进行的实验显示,拟议方法优于设计用于数字彩色图像中无脉动噪音清除的最先进的过滤器。