光电技术应用
光電技術應用
광전기술응용
ELECTRO-OPTIC WARFARE & RADAR PASSIVE COUNTERMEASURES
2015年
4期
24-26,50
,共4页
超分辨率重建%图像局部纹理特征%正则化参数%灰度共生矩阵%双边总变分
超分辨率重建%圖像跼部紋理特徵%正則化參數%灰度共生矩陣%雙邊總變分
초분변솔중건%도상국부문리특정%정칙화삼수%회도공생구진%쌍변총변분
super resolution reconstruction%image local texture feature%regularization parameter%gray level co-occurrence matrix%bilateral total variation
在双边总变分(BTV)正则化方法中,由于同时考虑了周围像素与中心像素的几何距离和灰度相似性,获得了比Tik?honov正则化方法和总变分(TV)正则化方法更好的重建质量。然而,在BTV方法中,由于正则化参数λ为一个定值,使得该方法不能同时保持图像的边缘纹理信息和抑制图像噪声。针对这个问题,提出一种图像局部纹理特征自适应的正则化重建方法,基于灰度共生矩阵提取图像局部纹理特征,建立正则化参数与图像局部纹理特征的函数关系,使正则化参数λ随图像局部纹理特征自适应调整。实验结果显示,与BTV方法相比,该方法能使图像的边缘和纹理细节重建效果更好,并有效抑制噪声。
在雙邊總變分(BTV)正則化方法中,由于同時攷慮瞭週圍像素與中心像素的幾何距離和灰度相似性,穫得瞭比Tik?honov正則化方法和總變分(TV)正則化方法更好的重建質量。然而,在BTV方法中,由于正則化參數λ為一箇定值,使得該方法不能同時保持圖像的邊緣紋理信息和抑製圖像譟聲。針對這箇問題,提齣一種圖像跼部紋理特徵自適應的正則化重建方法,基于灰度共生矩陣提取圖像跼部紋理特徵,建立正則化參數與圖像跼部紋理特徵的函數關繫,使正則化參數λ隨圖像跼部紋理特徵自適應調整。實驗結果顯示,與BTV方法相比,該方法能使圖像的邊緣和紋理細節重建效果更好,併有效抑製譟聲。
재쌍변총변분(BTV)정칙화방법중,유우동시고필료주위상소여중심상소적궤하거리화회도상사성,획득료비Tik?honov정칙화방법화총변분(TV)정칙화방법경호적중건질량。연이,재BTV방법중,유우정칙화삼수λ위일개정치,사득해방법불능동시보지도상적변연문리신식화억제도상조성。침대저개문제,제출일충도상국부문리특정자괄응적정칙화중건방법,기우회도공생구진제취도상국부문리특정,건립정칙화삼수여도상국부문리특정적함수관계,사정칙화삼수λ수도상국부문리특정자괄응조정。실험결과현시,여BTV방법상비,해방법능사도상적변연화문리세절중건효과경호,병유효억제조성。
In bilateral total variation regularization method(BTV), considering geometric distance and gray level similarity of the center pixel and the surrounding pixels, the method to get better reconstruction quality than Tikhonov regularization method and total variation regularization method (TV) is obtained. However, in BTV meth?od, the regularization parameterλis a fixed value, so the method cannot maintain the image edge texture informa?tion and suppress image noise at the same time. In order to solve this problem, an adaptive regularization reconstruc?tion algorithm for image local texture feature is proposed, and based on gray level co-occurrence matrix(GLCM), the image local texture feature is extracted, the function relationship of regularization parameters and image local texture feature is established, so regularization parameterλis adjusted adaptively according to image local texture feature. The experimental results show that compared with BTV, this algorithm can better reconstruct the image edge texture details and suppress the noise effectively.