论文标题
联合演示和剥夺两阶段培训策略的好处
Joint Demosaicking and Denoising Benefits from a Two-stage Training Strategy
论文作者
论文摘要
图像Demosaicking和DeNoising是彩色图像生产管道的前两个关键步骤。经典处理序列长期存在,包括首先应用deNoing,然后进行演示。按照此顺序应用操作会导致过度厚度和棋盘板效果。然而,很难改变此顺序,因为一旦图像进行了演示,传统的denoising模型就会发生巨大变化,并且很难处理噪声的统计属性。在本文中,我们通过混合机器学习方法解决了这个问题。我们通过首次进行演示然后进行降解,将传统的颜色过滤器阵列(CFA)处理管道倒置。我们的演示算法接受了无噪声图像的训练,结合了传统方法和残留的卷积神经网络(CNN)。第一阶段保留所有已知信息,这是获得忠实最终结果的关键点。然后,嘈杂的演示图像将通过第二个CNN恢复无噪声的全彩色图像。该管道顺序完全避免了棋盘效果并恢复精细的图像细节。尽管可以对CNN进行培训以解决端到端的共同策略,但我们发现这种两阶段的训练表现更好,并且不容易失败。在实验上进行了实验表明,以改进最终的最终视觉质量。
Image demosaicking and denoising are the first two key steps of the color image production pipeline. The classical processing sequence has for a long time consisted of applying denoising first, and then demosaicking. Applying the operations in this order leads to oversmoothing and checkerboard effects. Yet, it was difficult to change this order, because once the image is demosaicked, the statistical properties of the noise are dramatically changed and hard to handle by traditional denoising models. In this paper, we address this problem by a hybrid machine learning method. We invert the traditional color filter array (CFA) processing pipeline by first demosaicking and then denoising. Our demosaicking algorithm, trained on noiseless images, combines a traditional method and a residual convolutional neural network (CNN). This first stage retains all known information, which is the key point to obtain faithful final results. The noisy demosaicked image is then passed through a second CNN restoring a noiseless full-color image. This pipeline order completely avoids checkerboard effects and restores fine image detail. Although CNNs can be trained to solve jointly demosaicking-denoising end-to-end, we find that this two-stage training performs better and is less prone to failure. It is shown experimentally to improve on the state of the art, both quantitatively and in terms of visual quality.