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Wavelet Coefficients Thresholding Techniques for Denoising MRI Images

机译:MRI图像降噪的小波系数阈值技术

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Background: Image denoising is one of the primary challenges in the field of image processing. The objective is to derive the original image by suppressing noise from a noisy the image. The need of image denoising techniques is still in high demand. De-noising of medical images is degraded by various noises. Multiresolution techniques are very efficient for medical image denoising. Methodology: In this work, it is proposed to examine the efficiency of different wavelet shrinkage thresholding techniques and to determine the best one. Findings: The metric used for analysis are PSNR, VSNR and WSNR. The experimental results show that third level decomposition of Symlet in association with Neigh Shrink threshold outperforms all other approaches. Applications/Improvements: In this paper, denoising is applied to MRI images. Gaussian Noise, Salt and Pepper Noise, and Speckle Noise can be removed using the methods mentioned. The methods can also be extended to denoising other medical images like CT scan, X-RAY, and Ultra Sound etc.
机译:背景:图像去噪是图像处理领域的主要挑战之一。目的是通过抑制噪声图像中的噪声来获得原始图像。仍然需要图像去噪技术。医学图像的去噪因各种噪声而降低。多分辨率技术对于医学图像降噪非常有效。方法:在这项工作中,建议检查不同的小波收缩阈值技术的效率并确定最佳方法。结果:用于分析的度量标准是PSNR,VSNR和WSNR。实验结果表明,与Neigh Shrink阈值相关的Symlet的第三级分解优于所有其他方法。应用/改进:本文将去噪应用于MRI图像。高斯噪声,盐和胡椒噪声以及斑点噪声可以使用上述方法消除。该方法还可以扩展为对其他医学图像进行降噪,例如CT扫描,X射线和Ultra Sound等。

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