文章摘要
李治贤,谌贵辉,李忠兵.基于自相似性与稀疏表示的超分辨率算法[J].包装工程,2019,40(9):231-237.
LI Zhi-xian,CHEN Gui-hui,LI Zhong-bing.Super-Resolution Algorithm Based on Self-similarity and Sparse Representation[J].Packaging Engineering,2019,40(9):231-237.
基于自相似性与稀疏表示的超分辨率算法
Super-Resolution Algorithm Based on Self-similarity and Sparse Representation
投稿时间:2019-01-16  修订日期:2019-05-10
DOI:10.19554/j.cnki.1001-3563.2019.09.036
中文关键词: 自相似性  图像金字塔  字典训练  稀疏表示
英文关键词: self-similarity  image pyramid  dictionary training  sparse representation
基金项目:南充市科技战略合作项目(18SXHZ0041);南充市科技战略合作项目(NC17SY4001);西南石油大学科研“启航计划”(2015QHZ027)
作者单位
李治贤 西南石油大学成都 610500 
谌贵辉 西南石油大学成都 610500 
李忠兵 西南石油大学成都 610500 
摘要点击次数:
全文下载次数:
中文摘要:
      目的 为了解决当前稀疏表示的超分辨率算法效果依赖参与训练的数据的问题,结合图像的自相似性,提出一种基于自相似性与稀疏表示相结合的超分辨率算法。方法 算法利用图像的多维自相似性,构建多维图像金字塔,采用改进的相似块搜索策略,得到对应的高低分辨率图像块作为训练样本,然后对样本进行字典训练,最后根据稀疏表示得到超分辨率图像。结果 实验结果显示,文中算法在峰值信噪比(PSNR)和结构相似度(SSIM)上优于其他算法,对于实验图像而言,PSNR平均提升了0.5 dB。结论 提出的超分辨率算法未引入外部数据库,具有较好的效果,能够用于超分辨率重建。
英文摘要:
      The paper aims to propose a super-resolution algorithm based on the self-similarity and sparse representation in combination with the self-similarity of images to solve the problem that the effect of the current sparse representation super-resolution algorithm depends on the training data. In the algorithm, the multi-dimensional self-similarity of images was used to construct amulti-dimensional image pyramid, and the improved similarity block search strategy was used to obtain the high and low resolution image blocks as training samples. The dictionary training was carried out to the samples. Finally, the super-resolution image was obtained according to sparse representation. The experimental results showed that the proposed algorithm was superior to other algorithms in peak signal to noise ratio (PSNR) and structural similarity (SSIM). For the experimental images, the average PSNR was increased by 0.5 dB. The proposed super-resolution algorithm does not need external database and has a good effect. It can be used for super-resolution reconstruction.
查看全文   查看/发表评论  下载PDF阅读器
关闭

关于我们 | 联系我们 | 投诉建议 | 隐私保护 | 用户协议

您是第20794745位访问者    渝ICP备15012534号-2

版权所有:《包装工程》编辑部 2014 All Rights Reserved

邮编:400039 电话:023-68795652 Email: designartj@126.com

    

渝公网安备 50010702501716号