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Efficient image denoising method based on mathematical morphology reconstruction and the Non-Local Means filter for the MRI of the head

机译:基于数学形态学重构的高效图像去噪方法与头部MRI的非局部意味着滤波器

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The efficient Non-Local Means denoising algorithm modifies the intensity of each pixel by the weighted average of all similar pixels in the noisy image. It stems from the assumption that there are many similar structures in natural images. Many adaptations of the NLM filter has been widely used for MRI image denoising. The Unbiased NLM is a popular one of these methods which subtracts the rician noise bias from the NLM filtered image. The bias can be estimated from the MRI image background. Prior to that, the background needs to be extracted from the image. However, the estimated rician noise bias depends strongly on the segmentation process which affects the algorithm performance. In this work, we propose an accurate segmentation based on morphological reconstruction to separate the image into two regions-foreground and background. Initially, we propose a dynamic structuring element which the shape adapt according to the input image to avoid the problem of choosing an appropriate structuring element. The obtained background is used to estimate the noise bias while the Unbiased NLM filter is applied topically on the obtained foreground using the estimated bias. Experimental results show that the proposed method perform better than the NLM filter and the UNLM under all tested noise levels.
机译:有效的非局部意味着去噪算法通过噪声图像中所有类似像素的加权平均来修改每个像素的强度。它源于假设自然图像中存在许多类似的结构。 NLM过滤器的许多改编已广泛用于MRI图像去噪。无偏的NLM是从NLM滤波图像中减去瑞典噪声偏压的这些方法之一。可以从MRI图像背景估计偏差。在此之前,需要从图像中提取背景。但是,估计的瑞典噪声偏差在影响算法性能的分割过程中强烈取决于。在这项工作中,我们提出了一种基于形态重建的准确分割,将图像分成两个地区 - 前景和背景。首先,我们提出了一种动态结构元件,该元素根据输入图像来适应,以避免选择合适的结构化元件的问题。所获得的背景用于估计噪声偏置,而使用估计的偏压在所获得的前景上局部施加不偏的NLM滤波器。实验结果表明,该方法比所有测试噪声水平下的NLM过滤器和UNLM更好。

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