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A new feature-preserving nonlinear anisotropic diffusion for denoising images containing blobs and ridges

机译:一种新的保留特征的非线性各向异性扩散,用于对包含斑点和山脊的图像进行降噪

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摘要

Blobs and ridges underlie many important features in biological, biometric and remote sensing images. These images are likely to be corrupted by noise, such as live cells in fluorescent biological images, ridges and valleys in fingerprints and moving targets in synthetic aperture radar and infrared images. In this paper we present a diffusion method for denoising low-signal-to-ratio images containing blob and ridge features. A commonly used denoising method makes use of edge information in an image to achieve a good balance between noise removal and feature preserving. However, if edges are partly lost to a certain extent or contaminated severely by noise, such an approach may not be able to preserve these features, leading to loss of important information. To overcome this problem, we propose a novel second-order nonlocal derivative as a robust blob and ridge detector and incorporate it into a diffusion process to form a novel feature-preserving nonlinear anisotropic diffusion model. Experiments show that the new diffusion filter outperforms many popular filters for preserving blobs and ridges, reducing noise and minimizing artifacts.
机译:斑点和山脊是生物,生物识别和遥感影像中许多重要特征的基础。这些图像可能会被噪声破坏,例如荧光生物图像中的活细胞,指纹中的脊和谷以及合成孔径雷达和红外图像中的移动目标。在本文中,我们提出了一种用于对包含斑点和山脊特征的低信号比图像进行消噪的扩散方法。常用的去噪方法利用图像中的边缘信息来实现噪声去除和特征保留之间的良好平衡。但是,如果边缘在某种程度上部分丢失或被噪声严重污染,则这种方法可能无法保留这些特征,从而导致重要信息的丢失。为了克服这个问题,我们提出了一种新颖的二阶非局部导数作为鲁棒的斑点和脊检测器,并将其结合到一个扩散过程中,从而形成了一个新颖的保留特征的非线性各向异性扩散模型。实验表明,新的扩散滤波器在保留斑点和隆起,减少噪声和最小化伪影方面优于许多流行的滤波器。

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