A Noise reduction in the medical images using hybrid combination of filters with nature-inspired Black Widow Optimization Algorithm

Anamika Goel, Jawed Wasim, P. Srivastava
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引用次数: 2

Abstract

This paper proposes an image filtering method to remove the noises in medical images in a controlled manner. To achieve this goal, the optimal parameters of the conventional filters are determined using the nature-inspired black widow (BWO) optimization algorithm to remove the noise efficiently. The BWO algorithm is chosen over other optimization algorithms because it quickly explores the optimal parameter values due to its procreate and cannibalism steps. The procreate step explores new solutions, whereas the cannibalism steps remove the inappropriate solutions while exploring the optimal solution. In the proposed method, speckle and sharpening filters are considered. In the proposed method, initially, medical images are read. After that, they are enhanced using the power law method because images are either low or high contrast. In the power law method, the gamma value plays an important role. Therefore, the optimal gamma value is determined using the BWO algorithm as done for the filter values. After that, noise addition is performed on them and removed them using the speckle filter. Further, the edges of the image are filtered using the sharpening filter. The proposed method is validated on the standard dataset images downloaded from Kaggle. It is found that the proposed method enhances the image and removes the noise in a controlled manner. Besides that, it achieves better Mean Square Error (MSE) and Peak Signal to Noise Ratio (PSNR) in the output.
基于黑寡妇优化算法的混合滤波在医学图像中的降噪
本文提出了一种图像滤波方法,以可控地去除医学图像中的噪声。为了实现这一目标,采用自然启发黑寡妇(BWO)优化算法确定传统滤波器的最优参数,以有效地去除噪声。BWO算法之所以优于其他优化算法,是因为它可以通过繁殖和同类相食的步骤快速探索最优参数值。生殖步骤探索新的解决方案,而同类相食步骤在探索最优解决方案的同时删除不合适的解决方案。该方法考虑了散斑滤波和锐化滤波。在该方法中,首先读取医学图像。之后,它们使用幂律方法增强,因为图像要么低对比度,要么高对比度。在幂律法中,伽马值起着重要的作用。因此,使用BWO算法确定最佳伽马值,就像对过滤值所做的那样。之后,对它们进行噪声添加,并使用散斑滤波器去除它们。此外,使用锐化滤镜对图像的边缘进行过滤。在从Kaggle下载的标准数据集图像上验证了该方法。实验结果表明,该方法能有效地增强图像,消除噪声。此外,该方法在输出中获得了较好的均方误差(MSE)和峰值信噪比(PSNR)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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