Existing convolutional neural networks (CNN) based image super-resolution (SR) methods have achieved impressive performance on bicubic kernel, which is not valid to handle unknown degradations in real-world applications. Recent blind SR methods suggest to reconstruct SR images relying on blur kernel estimation. However, their results still remain visible artifacts and detail distortion due to the estimation errors. To alleviate these problems, in this paper, we propose an effective and kernel-free network, namely DSSR, which enables recurrent detail-structure alternative optimization without blur kernel prior incorporation for blind SR. Specifically, in our DSSR, a detail-structure modulation module (DSMM) is built to exploit the interaction and collaboration of image details and structures. The DSMM consists of two components: a detail restoration unit (DRU) and a structure modulation unit (SMU). The former aims at regressing the intermediate HR detail reconstruction from LR structural contexts, and the latter performs structural contexts modulation conditioned on the learned detail maps at both HR and LR spaces. Besides, we use the output of DSMM as the hidden state and design our DSSR architecture from a recurrent convolutional neural network (RCNN) view. In this way, the network can alternatively optimize the image details and structural contexts, achieving co-optimization across time. Moreover, equipped with the recurrent connection, our DSSR allows low- and high-level feature representations complementary by observing previous HR details and contexts at every unrolling time. Extensive experiments on synthetic datasets and real-world images demonstrate that our method achieves the state-of-the-art against existing methods. The source code can be found at https://github.com/Arcananana/DSSR.
翻译:以图像超分辨率(SR)为基础的现有共生神经网络(CNN)基于图像超分辨率(SSR)在双立方内核上取得了令人印象深刻的性能,这对于处理现实应用中未知的退化是站不住脚的。最近的盲人SR(DSMM)方法表明要利用模糊的内核估计来重建SR(SR)图象。然而,由于估算错误,其结果仍然是可见的文物和细节扭曲。为了缓解这些问题,我们在本文件中提议一个有效和无内核的网络,即DSSR(DSSR),它使得经常性的细节结构优化,而无需为盲人SR(DSSR)事先安装模糊的内核内核部分。此外,我们使用详细修复单位(DRU)和结构调节单位(SMM(S)的内核数据调节模型(DRMR)的内核结构结构图解,通过我们内部的内核流和内核资源系统(DSR)的内核内核内核结构图解,我们使用内核流的内核结构(DMSR)的内核结构结构结构的输出。