Nonlinear Diffusion Driven by Local Features for Image Denoising

Liu Peng, Zhang Yan, M. Zhigang
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引用次数: 2

Abstract

We propose a nonlinear diffusion algorithm that takes into account the local features in an extended neighborhood for the image denoising. In the conventional linear or nonlinear diffusion algorithms, the change of intensity value of a pixel is considered only in a small neighborhood, and the relationship between pixels in larger region is neglected. Our proposed algorithm overcomes this limitation. Moreover, it is not simply generalization of the conventional diffusion algorithms. In order to remove the noise, simultaneously, preserve edges in an image, the local central moment in an extended neighborhood is extracted, and the appropriate diffusion coefficient is established, such that the diffusion speed is properly controlled according to the characteristic of each image local region. The divergence of the new flow function is derived, and it has a compact expression format. The relationship between the size of the extended neighborhood and the performance of this proposed method is discussed. The experimental results show the effectiveness of the proposed method for image denoising
局部特征驱动的非线性扩散图像去噪
提出了一种考虑扩展邻域局部特征的非线性扩散算法来进行图像去噪。在传统的线性或非线性扩散算法中,只考虑小邻域内像素强度值的变化,而忽略了大区域内像素之间的关系。我们提出的算法克服了这一限制。此外,它不是传统扩散算法的简单推广。为了在去除噪声的同时保持图像的边缘,提取扩展邻域的局部中心矩,建立合适的扩散系数,根据图像各局部区域的特点,合理控制扩散速度。导出了新流函数的散度,其表达式格式紧凑。讨论了扩展邻域大小与该方法性能之间的关系。实验结果表明了该方法对图像去噪的有效性
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