光电子快报(英文版), 2019, 15 (6): 468, Published Online: Jan. 7, 2020  

Multi-frame super-resolution reconstruction based on global motion estimation using a novel CNN descriptor

Author Affiliations
1 School of Automation Science and Engineering, South China University of Technology, Guangzhou 510640, China
2 Guangdong Polytechnic Normal University, Guangzhou 510665, China
Abstract
In this paper, we introduce a novel feature descriptor based on deep learning that trains a model to match the patches of images on scenes captured under different viewpoints and lighting conditions for Multi-frame super-resolution. The patch matching of images capturing the same scene in varied circumstances and diverse manners is challenging. We develop a model which maps the raw image patch to a low dimensional feature vector. As our experiments show, the proposed approach is much better than state-of-the-art descriptors and can be considered as a direct replacement of SURF. The results confirm that these techniques further improve the performance of the proposed descriptor. Then we propose an improved Random Sample Consensus algorithm for removing false matching points. Finally, we show that our neural network based image descriptor for image patch matching outperforms state-of-the-art methods on a number of benchmark datasets and can be used for image registration with high quality in multi-frame super-resolution reconstruction.

GAO Hong-xia, XIE Wang, KANG Hui, LIN Guo-yuan. Multi-frame super-resolution reconstruction based on global motion estimation using a novel CNN descriptor[J]. 光电子快报(英文版), 2019, 15(6): 468.

关于本站 Cookie 的使用提示

中国光学期刊网使用基于 cookie 的技术来更好地为您提供各项服务,点击此处了解我们的隐私策略。 如您需继续使用本网站,请您授权我们使用本地 cookie 来保存部分信息。
全站搜索
您最值得信赖的光电行业旗舰网络服务平台!