Blind super-resolution (SR) methods aim to generate a high quality high resolution image from a low resolution image containing unknown degradations. However, natural images contain various types and amounts of blur: some may be due to the inherent degradation characteristics of the camera, but some may even be intentional, for aesthetic purposes (eg. Bokeh effect). In the case of the latter, it becomes highly difficult for SR methods to disentangle the blur to remove, and that to leave as is. In this paper, we propose a novel blind SR framework based on kernel-oriented adaptive local adjustment (KOALA) of SR features, called KOALAnet, which jointly learns spatially-variant degradation and restoration kernels in order to adapt to the spatially-variant blur characteristics in real images. Our KOALAnet outperforms recent blind SR methods for synthesized LR images obtained with randomized degradations, and we further show that the proposed KOALAnet produces the most natural results for artistic photographs with intentional blur, which are not over-sharpened, by effectively handling images mixed with in-focus and out-of-focus areas.
翻译:然而,自然图像含有各种类型和数量模糊不清的模糊性:有些可能是由于相机固有的降解性特征,但有些甚至可能是有意的(如Bokeh效应)。对于后者来说,SR方法极难解开模糊性去掉,并按原样离开。在本文中,我们提议了一个新的盲人SR框架,其基础是斯洛伐克特征的内核导向适应性地方调整(KOALA),称为KOALAnet,它共同学习空间-变异性降解和修复内核,以便适应真实图像中的空间-变异性模糊性特征。我们的KOALAnet超越了最近以随机降解方式获得的合成LEM图像的盲性SR方法。我们进一步表明,拟议的KOALAnet为艺术照片带来了最自然的结果,其故意模糊性不会过度,而是通过有效地处理与地平面和地平面混合的图像。