The super-resolution of a single image of unknown point spread-function (PSF) is addressed by extending a learning framework using blind deconvolution with an uncertainty around the resulting PSF. Results indicate success in refining the estimate of the PSF as well as to restoring the image. A novel disparity measure is also proposed to quantify the results.
Asfand YaarHasan F. AteşBahadır K. Güntürk
Zhixiong YangJingyuan XiaShengxi LiWende LiuShuaifeng ZhiShuanghui ZhangLi LiuYaowen FuDenız Gündüz
Zhixiong YangHuaizhang LiaoHan ZhangJingyuan Xia
Kazuhiro YamawakiYongqing SunXian‐Hua Han