泊松噪声非局部均值图像去噪

K. Imamura, Naoki Kimura, Fumiaki Satou, S. Sanada, Y. Matsuda
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引用次数: 9

摘要

非局部均值法是一种利用图像结构相似性的高性能降噪方法。非局部均值法通常假设噪声是高斯的,并且噪声强度均匀地分布在图像上。在常规非局部均值中,降噪强度的加权函数由单个固定参数控制。然而,由于泊松噪声的存在,非局部均值法目前的形式并不适合应用于x射线图像。本文提出了一种基于非局部均值的泊松噪声图像去噪方法。该方法中的加权函数根据局部区域像素估计的噪声强度来调整权重参数。结果表明,该方法对泊松噪声具有较好的降噪性能,无需方差稳定变换。我们证明,与标准非局部均值相比,该方法的降噪效果提高了0.1-0.9 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image denoising using non-local means for Poisson noise
The non-local means method is a high-performance noise reduction method that utilizes the structural similarity of an image. The non-local means method generally assumes the noise is Gaussian, and the noise strength is distributed evenly over an image. In the normal non-local means, the weighting function for the noise reduction strength is controlled by a single fixed parameter. However, the non-local means method is not suitable for application to X-ray images, due to the existence of Poisson noise, in its current form. In this paper, we propose an image denoising method using non-local means for an image with Poisson noise. The weighting function in the proposed method adjusts the weight parameter based on the estimated noise strength from the pixels in a local region. As a result, the proposed method provides good noise reduction performance for Poisson noise without recourse to a variance stabilizing transformation. We demonstrate that the noise reduction of the proposed method is an improvement of 0.1–0.9 dB compared to the standard non-local means.
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