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Wavelet based Denoising of Medical Images using Sub-band Adaptive Thresholding through Genetic Algorithm

机译:基于小波的遗传算法使用子带自适应阈值的医学图像的去噪

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Generally medical images have poor contrast along with serious types of noises. The suppression of noise in medical images corrupted by Gaussian white noise is a major issue in diverse image processing and computer vision problems. Image denoising using discrete wavelet transform is well established domain in image processing because it can separate the noisy signal from the image signal. This paper proposed a denoising method of medical images through thresholding and optimization using a stochastic and randomized technique of Genetic Algorithm (GA). The noisy image is partitioned into fixed sized blocks and then transforms it into wavelet domain. Some important parameters in the 2-D discrete wavelet transform such as the decomposition level and the threshold value are searched and optimized in a wide range in the proposed technique. The Bayesian shrinkage method has been selected for thresholding based of its sub band dependency property. Proposed algorithm has been validated through ultrasound image corrupted by a variety of noise densities through Gaussian noise in terms of peak signal to noise ratio and visual effects. Simulation results show that the proposed method outperforms the existing denoising methods.
机译:通常,医学图像与严重类型的噪声相比具有差的对比度。高斯白噪声损坏的医学图像中噪声的抑制是不同图像处理和计算机视觉问题的主要问题。使用离散小波变换的图像去噪是在图像处理中建立的域,因为它可以将噪声信号与图像信号分开。本文通过使用随机遗传算法(GA)的随机和随机化技术,通过阈值和优化提出了一种医学图像的去噪方法。嘈杂的图像被划分为固定大小的块,然后将其转换为小波域。在诸如分解级别的2-D离散小波变换中的一些重要参数,并在所提出的技术中在广泛的范围内进行搜索和优化。已经选择了贝叶斯收缩方法,用于基于子频带依赖属性的阈值化。通过在峰值信号与噪声比和视觉效果的峰值信号方面,通过通过高斯噪声损坏的超声图像通过超声图像验证了所提出的算法。仿真结果表明,该方法优于现有的去噪方法。

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