论文标题
无伪影的无伪影残留网络,用于单图超分辨率
Deep Artifact-Free Residual Network for Single Image Super-Resolution
论文作者
论文摘要
最近,卷积神经网络已显示出有希望的单像超级分辨率的表现。在本文中,我们提出了无伪影残留(DAFR)网络,该网络使用残差学习和使用地面图像作为目标的优点。我们的框架使用深层模型来提取高质量图像重建所需的高频信息。在图像重建之前,我们使用跳过连接将低分辨率图像馈送到网络。通过这种方式,我们能够将地面真实图像用作目标,并避免由于差异图像中的伪影而误导网络。为了提取清洁高频信息,我们分两个步骤训练网络。第一步是传统的残差学习,该学习使用差异图像作为目标。然后,在第二步中将训练有素的参数转移到主要训练中。我们的实验结果表明,与现有方法相比,所提出的方法可实现更好的定量和定性图像质量。
Recently, convolutional neural networks have shown promising performance for single-image super-resolution. In this paper, we propose Deep Artifact-Free Residual (DAFR) network which uses the merits of both residual learning and usage of ground-truth image as target. Our framework uses a deep model to extract the high-frequency information which is necessary for high-quality image reconstruction. We use a skip-connection to feed the low-resolution image to the network before the image reconstruction. In this way, we are able to use the ground-truth images as target and avoid misleading the network due to artifacts in difference image. In order to extract clean high-frequency information, we train the network in two steps. The first step is a traditional residual learning which uses the difference image as target. Then, the trained parameters of this step are transferred to the main training in the second step. Our experimental results show that the proposed method achieves better quantitative and qualitative image quality compared to the existing methods.