计算机辅助设计与图形学学报
計算機輔助設計與圖形學學報
계산궤보조설계여도형학학보
JOURNAL OF COMPUTER-AIDED DESIGN & COMPUTER GRAPHICS
2015年
6期
1032-1038
,共7页
潘宗序%禹晶%肖创柏%孙卫东
潘宗序%禹晶%肖創柏%孫衛東
반종서%우정%초창백%손위동
超分辨率%码本映射%字典学习%结构自相似性
超分辨率%碼本映射%字典學習%結構自相似性
초분변솔%마본영사%자전학습%결구자상사성
super resolution%codebook mapping%dictionary learning%structural self-similarity
图像的空间分辨率受成像环境、硬件制造水平和成本等多方面因素的影响,存在一定的局限性。为了提高图像的空间分辨率,提出一种基于字典学习与结构自相似性的码本映射超分辨率算法。首先利用训练集构建与图像高低频分量对应的高低频码本,将高低频码本作为训练样本获取高低频字典;然后在初始重建图像中搜索目标图像块的相似图像块,利用相似图像块构建非局部约束项;最后通过求解含有非局部约束项的 l0范数最小化问题获取目标图像块的稀疏表示系数,并利用高低频字典重建高分辨率图像块。该算法利用高低频字典表示目标图像块,而不是直接采用高低频码本,提高了算法的运算效率;利用相似图像块构建正则化约束项,提高了重建图像的质量。实验结果表明,与LLE, ScSR和NARM等算法相比,文中算法取得的超分辨率重建效果更好。
圖像的空間分辨率受成像環境、硬件製造水平和成本等多方麵因素的影響,存在一定的跼限性。為瞭提高圖像的空間分辨率,提齣一種基于字典學習與結構自相似性的碼本映射超分辨率算法。首先利用訓練集構建與圖像高低頻分量對應的高低頻碼本,將高低頻碼本作為訓練樣本穫取高低頻字典;然後在初始重建圖像中搜索目標圖像塊的相似圖像塊,利用相似圖像塊構建非跼部約束項;最後通過求解含有非跼部約束項的 l0範數最小化問題穫取目標圖像塊的稀疏錶示繫數,併利用高低頻字典重建高分辨率圖像塊。該算法利用高低頻字典錶示目標圖像塊,而不是直接採用高低頻碼本,提高瞭算法的運算效率;利用相似圖像塊構建正則化約束項,提高瞭重建圖像的質量。實驗結果錶明,與LLE, ScSR和NARM等算法相比,文中算法取得的超分辨率重建效果更好。
도상적공간분변솔수성상배경、경건제조수평화성본등다방면인소적영향,존재일정적국한성。위료제고도상적공간분변솔,제출일충기우자전학습여결구자상사성적마본영사초분변솔산법。수선이용훈련집구건여도상고저빈분량대응적고저빈마본,장고저빈마본작위훈련양본획취고저빈자전;연후재초시중건도상중수색목표도상괴적상사도상괴,이용상사도상괴구건비국부약속항;최후통과구해함유비국부약속항적 l0범수최소화문제획취목표도상괴적희소표시계수,병이용고저빈자전중건고분변솔도상괴。해산법이용고저빈자전표시목표도상괴,이불시직접채용고저빈마본,제고료산법적운산효솔;이용상사도상괴구건정칙화약속항,제고료중건도상적질량。실험결과표명,여LLE, ScSR화NARM등산법상비,문중산법취득적초분변솔중건효과경호。
The spatial resolution of the image is limited by many factors including the environment of the imaging, the manufacturing technology of the hardware and the cost. A codebook mapping based single im-age super resolution (SR) method via dictionary learning and structural self-similarity is proposed to pro-mote the spatial resolution of the image. Firstly, the images in the training set are used to construct two codebooks corresponding to the low and the high frequency components of image patches, and the two codebooks are taken as the training samples to learn two dictionaries respectively. Then, the similar image patches of each input image patch in the initial reconstructed image are used to construct the nonlocal con-straint. Finally, the sparse representation coefficient of the input image patch is obtained by solving anl0 norm minimization problem with the nonlocal constraint, and the high resolution image patch is then recon-structed by using the low and the high dictionaries. The input image patch is represented by the dictionaries, rather than the codebooks, therefore the computational efficiency is increasing. Similar image patches are used to construct the regularization constraint, consequently the quality of the reconstructed image is im-proved. Experimental results demonstrate that the proposed method achieves better reconstructed results compared with LLE, ScSR and NARM methods.