基于黄鞍山羊鱼优化算法的超声图像降噪增强模型

Anamika Goel, Jawed Wasim, P. Srivastava, Aditi Sharma
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引用次数: 0

摘要

在现代诊断学中,超声在血管、妇科、心脏、产科等不同领域的诊断中发挥着重要作用。超声波的主要优点是它是非侵入性的,而且价格低廉。然而,在实际场景中,超声图像中存在散斑噪声,会对图像的边缘、纹理信息和边界产生负面影响。为了消除噪声,研究人员在文献中部署了各种滤波器。该方法的局限性是,使用常规滤波器去除固定水平的噪声,其中滤波器的参数值是固定的。然而,在实时情况下,噪声是随机的,需要自适应滤波器来消除任何程度的噪声。为了实现这一目标,本文提出了一种基于黄鞍山羊鱼优化(YSGO)算法的消斑噪声自适应滤波模型。YSGO算法基于鱼类的狩猎行为。该模型考虑了双边滤波和减少散斑的各向异性扩散滤波方法以及增强幂律方法。此外,采用自然启发的YSGO算法确定滤波方法和增强方法的参数值。YSGO算法在目标函数的基础上最小化噪声,增强图像亮度和边缘信息。该模型以均方误差(MSE)和熵作为目标函数。进一步,将该模型应用于标准超声图像。图像的视觉分析是在主观分析的基础上完成的,而在客观分析中,通过测量各种性能指标来衡量图像质量。结果表明,该模型在PSNR方面优于现有模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ultrasound Image Noise Reduction and Enhancement Model based on Yellow Saddle Goatfish Optimization Algorithm
In the modern-day diagnostics, ultrasound play an important role in different applications such as vascular, gynecological, cardiac, and obstetrical for diagnosis the various diseases. The main benefit of the ultrasound is that it is non-invasive method and inexpensive. However, in the real-scenario, ultrasound images contain speckle noise which negatively impact the image quality in terms of edges, texture information, and boundaries. In order to eliminate noise, various filters are deployed by researchers in the literature. The limitations of their method are that a fixed level of noise is removed using conventional filters in which parameter values of the filters are fixed. However, in the real-time situation, the noise is random and adaptive filters are required which eliminate any level of noise. To achieve this goal, this paper proposes an adaptive filtering model for eliminate speckle noise based on yellow saddle goatfish optimization (YSGO) algorithm. The YSGO algorithm is based on the hunting behaviour of the fishes. In the proposed model, bilateral filter and speckle-reducing anisotropic diffusion filtering methods and enhancement power law method are taken under consideration. Further, the parameter values of the filtering method and enhancement methods are determined using the nature-inspired YSGO algorithm. The YSGO algorithm minimize the noise and enhances the image brightness and edge information based on the objective function. In our model, mean square error (MSE) and entropy is taken as the objective function. Further, the proposed model is applied on the standard ultrasound images. The visual analysis of the images is done based on the subjective analysis whereas various performance metrics are measured for measure the image quality in the objective analysis. The results reveals that the proposed model outperforms over the existing models in terms of PSNR.
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