Gijbels Irène, Lambert Alexandre, Qiu Peihua
Department of Mathematics, University Center of Statistics, University of Leuven, de Croylaan 54, B-3001 Heverlee, Belgium.
IEEE Trans Pattern Anal Mach Intell. 2006 Jul;28(7):1075-87. doi: 10.1109/TPAMI.2006.140.
In this paper, we are interested in the problem of estimating a discontinuous surface from noisy data. A novel procedure for this problem is proposed based on local linear kernel smoothing, in which local neighborhoods are adapted to the local smoothness of the surface measured by the observed data. The procedure can therefore remove noise correctly in continuity regions of the surface and preserve discontinuities at the same time. Since an image can be regarded as a surface of the image intensity function and such a surface has discontinuities at the outlines of objects, this procedure can be applied directly to image denoising. Numerical studies show that it works well in applications, compared to some existing procedures.
在本文中,我们关注从噪声数据估计不连续曲面的问题。基于局部线性核平滑提出了一种针对该问题的新方法,其中局部邻域根据由观测数据测量的曲面局部平滑度进行调整。因此,该方法能够在曲面的连续区域正确去除噪声,同时保留不连续性。由于图像可被视为图像强度函数的一个曲面,并且这样的曲面在物体轮廓处存在不连续性,所以该方法可直接应用于图像去噪。数值研究表明,与一些现有方法相比,它在实际应用中效果良好。