The deep learning technique was used to increase the performance of single image super-resolution (SISR). However, most existing CNN-based SISR approaches primarily focus on establishing deeper or larger networks to extract more significant high-level features. Usually, the pixel-level loss between the target high-resolution image and the estimated image is used, but the neighbor relations between pixels in the image are seldom used. On the other hand, according to observations, a pixel's neighbor relationship contains rich information about the spatial structure, local context, and structural knowledge. Based on this fact, in this paper, we utilize pixel's neighbor relationships in a different perspective, and we propose the differences of neighboring pixels to regularize the CNN by constructing a graph from the estimated image and the ground-truth image. The proposed method outperforms the state-of-the-art methods in terms of quantitative and qualitative evaluation of the benchmark datasets. Keywords: Super-resolution, Convolutional Neural Networks, Deep Learning
翻译:深层学习技术被用于提高单一图像超分辨率的性能。然而,大多数现有的有线电视新闻网的SISSR方法主要侧重于建立更深或更大的网络,以提取更显著的高层次特征。通常使用目标高分辨率图像与估计图像之间的像素水平损失,但很少使用图像中像素之间的相邻关系。另一方面,根据观察,像素的近邻关系包含关于空间结构、地方背景和结构知识的丰富信息。基于这一事实,我们从不同角度利用像素的邻居关系,我们提出相邻像素的差异,以便通过根据估计图像和地面真相图像绘制图表来规范CNN。拟议方法在基准数据集的定量和定性评价方面优于最新技术。关键词:超分辨率、进化神经网络、深层学习。