In this paper, we tackle the problem of blind image super-resolution(SR) with a reformulated degradation model and two novel modules. Following the common practices of blind SR, our method proposes to improve both the kernel estimation as well as the kernel based high resolution image restoration. To be more specific, we first reformulate the degradation model such that the deblurring kernel estimation can be transferred into the low resolution space. On top of this, we introduce a dynamic deep linear filter module. Instead of learning a fixed kernel for all images, it can adaptively generate deblurring kernel weights conditional on the input and yields more robust kernel estimation. Subsequently, a deep constrained least square filtering module is applied to generate clean features based on the reformulation and estimated kernel. The deblurred feature and the low input image feature are then fed into a dual-path structured SR network and restore the final high resolution result. To evaluate our method, we further conduct evaluations on several benchmarks, including Gaussian8 and DIV2KRK. Our experiments demonstrate that the proposed method achieves better accuracy and visual improvements against state-of-the-art methods.
翻译:在本文中,我们用重塑的降解模型和两个新模块来解决失明图像超分辨率(SR)问题。根据失明SR的常见做法,我们的方法建议改进内核估计以及以内核为基础的高分辨率图像恢复。更具体地说,我们首先修改降解模型,以便分流内核估计可以转移到低分辨率空间。此外,我们引入了一个动态的深线过滤模块。它不学习所有图像的固定内核,而是在适应上生成以输入为条件的分解内核重量,并产生更强的内核估计。随后,我们采用了一个深度限制的最小平方过滤模块,以产生基于重新设计和估计内核的清洁特征。分流特性和低输入图像特征随后被注入一个双向结构的SR网络,并恢复最后的高分辨率结果。为了评估我们的方法,我们进一步评估了几个基准,包括Gaussian8和DIV2KRK。我们的实验表明,拟议的方法在州一级方法上实现了更好的准确性和视觉改进。