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Anisotropic Diffusion for Smoothing: A Comparative Study

机译:平滑的各向异性扩散:比较研究

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Anisotropic diffusion is a powerful image processing technique, which allows simultaneously to remove noise and to enhance sharp features in two and three dimensional images. Anisotropic diffusion filtering concentrates on preservation of important surface features, such as sharp edges and corners, by applying direction dependent smoothing. This feature is very important in image smoothing, edge detection, image segmentation and image enhancement. For instance, in the image segmentation case, it is necessary to smooth images as accurately as possible in order to use gradient-based segmentation methods. If image edges are seriously polluted by noise, these methods would not be able to detect them, so edge features cannot be retained. The aim of this paper is to present a comparative study of three methods that have been used for smoothing using anisotropic diffusion techniques. These methods have been compared using the root mean square error (RMSE) and the Nash-Sutcliffe error. Numerical results are presented for both artificial data and real data.
机译:各向异性扩散是一个功能强大的图像处理技术,其同时允许噪声除去,并提高在二维和三维图像尖锐特征。各向异性扩散的上重要的表面特征,诸如尖锐棱角,通过施加方向依赖性平滑滤波保存浓缩物。此功能在图像平滑,边缘检测,图像分割和图像增强非常重要的。例如,在图像分割的情况下,有必要以基于梯度使用的分割方法尽可能准确地平滑图像。如果图像边缘被严重污染的噪音,这些方法将无法探测到它们,所以边缘功能无法保留。本文的目的是介绍已用于使用各向异性扩散技术的平滑的三种方法的比较研究。这些方法已经使用根均方误差(RMSE)与纳什萨克利夫误差进行比较。数值结果两个人工数据和真实数据。

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