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首页> 外文期刊>International Journal of Image and Graphics >Image Restoration Using Adaptive Region-Wise p-Norm Filter with Local Constraints
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Image Restoration Using Adaptive Region-Wise p-Norm Filter with Local Constraints

机译:使用具有局部约束的自适应区域智能p范数滤波器进行图像恢复

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In this work, we introduce a feature adaptive second-order p-norm filter with local constraints for image restoration and texture preservation. The p-norm value of the filter is chosen adaptively between 1 and 2 in a local region based on the regional image characteristics. The filter behaves like a mean curvature motion (MCM) [A. Marquina and S. Osher, SIAM Journal of Scientific Computing 22, 387-405 (2000)] in the regions where the p-norm value is 1 and switches to a Laplacian filter in the rest of the regions (where the p-norm value is 2). The proposed study considerably reduces stair-case effect and effectively removes noise from images while deblurring them. The noise is assumed as Gaussian distributed (with zero mean and variance σ~2) and blur is linearly shift invariant (out-of-focus). The filter converges at a faster rate with semi-implicit Crank- Nicholson scheme. The regularization parameter is initialized and updated based on the local image features and therefore this filter preserves edges, structures, textures and fine details present in images very well. The method is applied on different kinds of images with different image characteristics. We show the response of the filter to various kinds of images and numerically quantify the performance in terms of standard statistical measures.
机译:在这项工作中,我们介绍了具有局部约束的特征自适应二阶p范数滤波器,用于图像恢复和纹理保留。基于局部图像特征,在局部区域中在1和2之间自适应地选择滤波器的p范数值。滤波器的行为类似于平均曲率运动(MCM)[A。 Marquina和S. Osher,《 SIAM科学计算杂志》,第22卷,第387-405页(2000年)],在p范数为1的区域中,并切换到其余区域(其中p范数的值为Laplacian滤波器)是2)。拟议的研究大大降低了楼梯效果,并有效消除了图像中的噪声,同时消除了图像的模糊。假定噪声为高斯分布(均值为零且方差σ〜2为零),并且模糊线性不变(离焦)。滤波器通过半隐式Crank-Nicholson方案以更快的速度收敛。正则化参数是根据本地图像特征进行初始化和更新的,因此此滤镜可以很好地保留图像中出现的边缘,结构,纹理和精细细节。该方法应用于具有不同图像特征的不同种类的图像。我们展示了滤镜对各种图像的响应,并根据标准统计量对性能进行了数值量化。

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