This study presents a chronological overview of the single image super-resolution problem. We first define the problem thoroughly and mention some of the serious challenges. Then the problem formulation and the performance metrics are defined. We give an overview of the previous methods relying on reconstruction based solutions and then continue with the deep learning approaches. We pick 3 landmark architectures and present their results quantitatively. We see that the latest proposed network gives favorable output compared to the previous methods.
翻译:本研究报告按时间顺序概述了单一图像超分辨率问题。我们首先透彻地界定了问题,并提到了一些严峻的挑战。然后界定了问题拟订和绩效衡量标准。我们概述了以前依靠重建解决方案的方法,然后继续深思熟虑的方法。我们选择了三个里程碑式的结构,并量化地展示了它们的结果。我们看到最新的拟议网络提供了比以往方法更好的产出。