Super-Resolution is the process of generating a high-resolution image from a low-resolution image. A picture may be of lower resolution due to smaller spatial resolution, poor camera quality, as a result of blurring, or due to other possible degradations. Super-Resolution is the technique to improve the quality of a low-resolution photo by boosting its plausible resolution. The computer vision community has extensively explored the area of Super-Resolution. However, the previous Super-Resolution methods require vast amounts of data for training. This becomes problematic in domains where very few low-resolution, high-resolution pairs might be available. One of such areas is statistical downscaling, where super-resolution is increasingly being used to obtain high-resolution climate information from low-resolution data. Acquiring high-resolution climate data is extremely expensive and challenging. To reduce the cost of generating high-resolution climate information, Super-Resolution algorithms should be able to train with a limited number of low-resolution, high-resolution pairs. This paper tries to solve the aforementioned problem by introducing a semi-supervised way to perform super-resolution that can generate sharp, high-resolution images with as few as 500 paired examples. The proposed semi-supervised technique can be used as a plug-and-play module with any supervised GAN-based Super-Resolution method to enhance its performance. We quantitatively and qualitatively analyze the performance of the proposed model and compare it with completely supervised methods as well as other unsupervised techniques. Comprehensive evaluations show the superiority of our method over other methods on different metrics. We also offer the applicability of our approach in statistical downscaling to obtain high-resolution climate images.
翻译:超分辨率是用低分辨率图像生成高分辨率图像的过程。 图像的分辨率可能较低, 是因为空间分辨率较小、 相机质量差、 模糊不清或其他可能的退化。 超分辨率是提高低分辨率照片质量的方法, 提高其合理分辨率。 计算机视觉界广泛探索了超分辨率图像领域。 但是, 以前的超分辨率方法需要大量培训数据。 在低分辨率极小、 高分辨率配对可能存在的领域, 这个问题会变得很严重。 其中一个领域是统计降尺度, 超级分辨率越来越多地用于从低分辨率数据获取高分辨率气候信息。 获取高分辨率气候数据非常昂贵且具有挑战性。 为了降低生成高分辨率气候信息的成本, 超分辨率算法应该能够以数量有限的低分辨率高分辨率配对来培训。 本文试图通过采用一种半超高端方法来完成上述问题。 超清晰度评估, 超分辨率图像也越来越多地被使用高分辨率、高分辨率图像, 将我们作为半分辨率分析工具, 以高分辨率方法作为高分辨率分析工具, 将我们作为高分辨率分析工具, 。