Recent research on super-resolution (SR) has achieved great success with the aid of deep learning technologies, but, many of them are limited to dealing with arbitrary scaling factors and can only handle fixed scaling factors (e.g., x2, x4). To alleviate this problem, we introduce a new formulation for image super-resolution using an ordinary differential equation parameterized by a convolutional neural network to solve arbitrary scale image superresolution methods. Based on the proposed new SR formulation, we can not only super-resolve images with an arbitrary scale, but also find a new way to analyze the performance of super-resolving process. We demonstrate that the proposed method can generate high-quality images with arbitrary scaling factors, unlike conventional SR methods.
翻译:最近对超分辨率(SR)的研究在深层学习技术的帮助下取得了巨大成功,但其中许多研究仅限于处理任意的缩放因子,只能处理固定的缩放因子(如x2,x4)。为了缓解这一问题,我们采用了一种新的图像超分辨率配方,采用由进化神经网络参数设定的普通差异方程式,以解决任意的缩放图像超分辨率方法。根据拟议的新的SR配方法,我们不仅可以任意地使用超分辨率图像,还可以找到分析超分辨率因子的新的方法。我们证明,拟议方法可以产生与常规的缩放因子不同的高质量图像。