Tianyu GengXiao-Yang LiuXiaodong WangGuiling Sun
Recently, the residual learning strategy has been integrated into the convolutional neural network (CNN) for single image super-resolution (SISR), where the CNN is trained to estimate the residual images. Recognizing that a residual image usually consists of high-frequency details and exhibits cartoon-like characteristics, in this paper, we propose a deep shearlet residual learning network (DSRLN) to estimate the residual images based on the shearlet transform. The proposed network is trained in the shearlet transform-domain which provides an optimal sparse approximation of the cartoon-like image. Specifically, to address the large statistical variation among the shearlet coefficients, a dual-path training strategy and a data weighting technique are proposed. Extensive evaluations on general natural image datasets as well as remote sensing image datasets show that the proposed DSRLN scheme achieves close results in PSNR to the state-of-the-art deep learning methods, using much less network parameters.
Haimin WangKai LiaoBin YanRun Ye
Moiz HassanKandasamy IllankoXavier Fernando
Chunpeng WangSimiao WangZhiqiu XiaQi LiBin MaJian LiMeihong YangYun-Qing Shi
Yogendra Rao MusunuriOh‐Seol Kwon