计算机研究与发展
計算機研究與髮展
계산궤연구여발전
JOURNAL OF COMPUTER RESEARCH AND DEVELOPMENT
2010年
1期
33-42
,共10页
陈强%郑钰辉%孙权森%夏德深
陳彊%鄭鈺輝%孫權森%夏德深
진강%정옥휘%손권삼%하덕심
图像去噪%各项异性扩散%片相似性%非局部均值方法%医学图像去噪
圖像去譟%各項異性擴散%片相似性%非跼部均值方法%醫學圖像去譟
도상거조%각항이성확산%편상사성%비국부균치방법%의학도상거조
image denoising%anisotropic diffusion%patch similarity%non-local means method%medical image denoising
提出了一种基于片相似性的各项异性扩散图像去噪方法.传统的各项异性图像去噪方法都是基于单个像素点的灰度相似性(或梯度信息),不能很好地保持弱梯度边缘和纹理等细节信息.基于片相似性的非局部图像去噪方法由于利用了邻域像素的灰度相似性,而能够很好地保持纹理等细节信息.将片相似性思想引入到各项异性扩散中,利用片相似性构造扩散函数,同时将片相似性各项异性扩散模型扩展到彩色图像的去噪.实验结果表明,提出的改进方法能很好地保持纹理等细节信息,不存在各项异性扩散普遍存在的明显的阶梯效应,同时比非局部图像去噪方法速度快.医学图像去噪实例也表明所提出方法具有很好的应用前景.
提齣瞭一種基于片相似性的各項異性擴散圖像去譟方法.傳統的各項異性圖像去譟方法都是基于單箇像素點的灰度相似性(或梯度信息),不能很好地保持弱梯度邊緣和紋理等細節信息.基于片相似性的非跼部圖像去譟方法由于利用瞭鄰域像素的灰度相似性,而能夠很好地保持紋理等細節信息.將片相似性思想引入到各項異性擴散中,利用片相似性構造擴散函數,同時將片相似性各項異性擴散模型擴展到綵色圖像的去譟.實驗結果錶明,提齣的改進方法能很好地保持紋理等細節信息,不存在各項異性擴散普遍存在的明顯的階梯效應,同時比非跼部圖像去譟方法速度快.醫學圖像去譟實例也錶明所提齣方法具有很好的應用前景.
제출료일충기우편상사성적각항이성확산도상거조방법.전통적각항이성도상거조방법도시기우단개상소점적회도상사성(혹제도신식),불능흔호지보지약제도변연화문리등세절신식.기우편상사성적비국부도상거조방법유우이용료린역상소적회도상사성,이능구흔호지보지문리등세절신식.장편상사성사상인입도각항이성확산중,이용편상사성구조확산함수,동시장편상사성각항이성확산모형확전도채색도상적거조.실험결과표명,제출적개진방법능흔호지보지문리등세절신식,불존재각항이성확산보편존재적명현적계제효응,동시비비국부도상거조방법속도쾌.의학도상거조실례야표명소제출방법구유흔호적응용전경.
A patch-similarity-based anisotropic diffusion is presented for image denoising. The traditionally anisotropic diffusion based on the intensity similarity of each single pixel (or gradient information) cannot effectively preserve weak edges and details, such as texture. The non-local means algorithm based on patch similarity can preserve texture details well, since the non-local means utilizes the intensity similarity of neighbor pixels. In the proposed method, the patch similarity is adopted to construct the diffusion function of the anisotropic diffusion for gray and color image denoising, namely the diffusion coefficient of the anisotropic diffusion depends on the patch similarity, not image gradient. Therefore, the diffusion of this method is more effective and accurate than the traditional method, because image patches can represent structure information, such as edge and texture etc, while single pixel cannot represent structure information. Experimental results of gray and color images demonstrate that the proposed method can preserve details better than the traditional anisotropic diffusion, and has not noticeable staircase effect that appears in the traditional anisotropic diffusion. In addition, the time complexity is lower than that of the non-local means algorithm. Brain and cardiac magnetic resonance (MR) images and brain Chinese visible human image denoising experiments also indicate that the proposed method has a promising application.