Arbitrary Back-Projection Networks for Image Super-Resolution

Tingsong Ma, Wenhong Tian
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引用次数: 1

Abstract

Recently, a method called Meta-SR has solved the problem of super-resolution of arbitrary scale factor with only one single model. However, it has a limited reconstruction accuracy compared with RDN[Formula: see text] and EDSR[Formula: see text]. Inspired by Meta-SR, we noticed that by combining the core idea of Meta-SR and D-DBPN, we might construct a network that has as good image reconstruction accuracy as D-DBPN’s, at the same time, keeps arbitrary scaling function. According to Meta-SR’s Meta-Upscale Module, we designed a different structure called Meta-Downscale Module. By using these two different modules and back-projection structure, we construct an arbitrary back-projection network, which has the ability to enlarge images with arbitrary scale factor by using only one single model, meanwhile, obtains state-of-the-art reconstruction results. Through extensive experiments, our proposed method performs better reconstruction effect than Meta-SR and more efficient than D-DBPN. Besides that, we also evaluated the proposed method on widely used benchmark dataset on single image super-resolution. The experimental results show the superiority of our model compared to RDN+ and EDSR+.
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用于图像超分辨率的任意反投影网络
最近,一种叫做Meta-SR的方法解决了单模型任意尺度因子的超分辨率问题。但与RDN[公式:见文]和EDSR[公式:见文]相比,其重建精度有限。受Meta-SR的启发,我们注意到将Meta-SR的核心思想与D-DBPN相结合,可以构建出与D-DBPN一样具有良好图像重建精度的网络,同时保持任意尺度函数。根据Meta-SR的meta -高档模块,我们设计了一个不同的结构,称为Meta-Downscale模块。通过使用这两种不同的模块和背投影结构,我们构建了一个任意背投影网络,该网络仅使用一个模型就可以放大任意比例因子的图像,同时获得了最先进的重建结果。通过大量的实验,我们提出的方法具有比Meta-SR更好的重建效果,比D-DBPN更高效。此外,我们还在广泛使用的单幅图像超分辨率基准数据集上对所提出的方法进行了评估。实验结果表明,与RDN+和EDSR+相比,我们的模型具有优越性。
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