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自适应非张量积小波紧框架图像去噪
黄素莹,羿旭明
作者单位
黄素莹 武汉大学数学与统计学院, 湖北 武汉 430072 
羿旭明 武汉大学数学与统计学院, 湖北 武汉 430072 
摘要:
本文研究了图像去噪的问题.利用光滑余因子协调法,构造了样条空间S64(△mn(2))中的二元六次样条函数,以此作为尺度函数,并基于酉延拓定理,构造了非张量积小波紧框架.利用构造的非张量积小波紧框架,提出了基于香农熵自适应确定最优小波紧框架分解层数以及改进的NormalShrink自适应阈值算法,并给出了图像去噪实例和结果分析,获得了理想的数值结果,显示了本文方法的有效性.
关键词:  非张量积小波紧框架  最优分解层数  自适应阈值  图像去噪
DOI:
分类号:O29
基金项目:国家自然科学基金面上项目(11671307).
SELF-ADAPTIVE NON-TENSOR PRODUCT TIGHT WAVELET FRAME IMAGE DENOISING
HUANG Su-ying,YI Xu-ming
Abstract:
In this paper, we research the problem of image denoising. Via the use of the smoothing cofactor-conformality method, it constructs the bivariate and sextic spline function in spline space S64(△mn(2)), and while do it as scaling function, the non-tensor product tight wavelet frame is constructed based on the unitary extension principe. Then we propose the algorithm of the optimal decomposition levels of tight wavelet frame is self-adaptive determined based on the shannon entropy and the modified NormalShrink self-adaptive threshold algo-rithm by using the non-tensor product tight wavelet frame above, and offer the cases of image denoising and result analysis. The ideal numerical results are obtained, which verify the validity of this algorithm.
Key words:  non-tensor product tight wavelet frame  optimal decomposition levels  NormalShrink self-adaptive threshold  image denoising