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A Novel Gaussian in Denoising Medical Images with Different Wavelets for Internet of Things Devices

机译:一种新的高斯在以不同小波用于设备互联网的医学图像

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Over recent years the focus on the comprehensive health-care system in IoT has become increasingly important, which considers in many ways a significant concept to promote health-care. It plays a positive role in increasing the highlight of the issue of medical disadvantage that threatens the medical diagnosis. Medical image constitutes a crucial carrier of the patient's diagnosis information. It nonetheless is exposed to several kinds of noise through transmission, and storage, which leads to impeding the full diagnosis for the patient and a loss of its quality as a medical digital image. Noise is a key factor in decreasing the image quality of different sorts of medical images (X ray, CAT scan, and MRI). Many techniques have been applied for image de-noising. The Discrete wavelet transform which is regarded as the most recent and optimum technique. This paper has been presented four levels of a discrete wavelet transform for the removal of Gaussian noise from several medical images based on diverse wavelet family transforms and median filtering. The proposed method submitted admissible results with regard to removing noise from medical images. The performance evaluation of the proposed algorithm is done by measuring the values PSNR, MSD, and NC.
机译:近年来,对IOT综合保健制度的关注变得越来越重要,这在许多方面都考虑了促进医疗保健的重要概念。它在增加威胁医疗诊断的医学劣势问题的突出方面发挥了积极作用。医学图像构成患者诊断信息的关键载体。尽管如此,它通过传输和储存暴露于几种类型的噪声,这导致阻碍患者的完全诊断和作为医学数字图像的质量的损失。噪声是降低不同类型的医学图像的图像质量的关键因素(X射线,猫扫描和MRI)。许多技术已被应用于图像去噪。被认为是最近和最佳技术的离散小波变换。本文已经介绍了四个离散小波变换,用于除去基于各种小波家族变换和中值滤波的几个医学图像的高斯噪声。建议的方法在从医学图像中去除噪声方面提交了可接受的结果。所提出的算法的性能评估是通过测量值PSNR,MSD和NC来完成的。

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