Convolutional neural network (CNN)-based image denoising methods have been widely studied recently, because of their high-speed processing capability and good visual quality. However, most of the existing CNN-based denoisers learn the image prior from the spatial domain, and suffer from the problem of spatially variant noise, which limits their performance in real-world image denoising tasks. In this paper, we propose a discrete wavelet denoising CNN (WDnCNN), which restores images corrupted by various noise with a single model. Since most of the content or energy of natural images resides in the low-frequency spectrum, their transformed coefficients in the frequency domain are highly imbalanced. To address this issue, we present a band normalization module (BNM) to normalize the coefficients from different parts of the frequency spectrum. Moreover, we employ a band discriminative training (BDT) criterion to enhance the model regression. We evaluate the proposed WDnCNN, and compare it with other state-of-the-art denoisers. Experimental results show that WDnCNN achieves promising performance in both synthetic and real noise reduction, making it a potential solution to many practical image denoising applications.
翻译:最近,由于高速处理能力和良好的视觉质量,对以传动神经网络(CNN)为基础的图像脱色方法进行了广泛研究;然而,大多数现有CNN的低视频网基底栖生物先从空间领域学习图像,并受到空间变异噪音问题的影响,这限制了其在现实世界图像脱色任务中的性能。在本文中,我们建议使用一个独立的波浪脱色CNN(WDnCNN)来恢复被各种噪音以单一模型腐蚀的图像。由于自然图像的大部分内容或能量都存在于低频频频谱中,因此其频率域的变异系数高度失衡。为了解决这一问题,我们提出了一个带正常化模块(BNM),以便实现频率频谱不同部分的系数的正常化。此外,我们采用一个带式歧视性培训标准来强化模型回归。我们评估了拟议的WDNCNN,并将其与其他最先进的低频谱模型进行比较。实验结果表明,WDCNN在合成和真实的减少噪音应用中都取得了良好的性能。