Improving Diagnostic Viewing of Region of Interest in Lung Computed Tomography Image Using Unsharp Masking and Singular Value Decomposition

Chi-Kien Tran, Chin-Dar Tseng, Tsair-Fwu Lee
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Abstract

Computed Tomography (CT) technology has been widely used for detecting and diagnosing lung disease. To improve the visibility of essential features in a CT image, reducing noise and blur, sharpening features, and increasing contrast are necessary. In this study, we propose a method to improve these features and gain better characteristics of region of interest in lung CT images for a right diagnosis. Processing of the proposed method consists of non-local means filter for removing noise, unsharp masking for deblurring and sharpening image, and finally singular value decomposition for enhancing contrast of the region of interest. The method was evaluated in terms of improvement in contrast based on contrast improvement ratio in lung CT images. The results clearly demonstrated that our method reached a higher contrast improvement ratio compared to histogram equalization, unsharp masking, contrast-limited adaptive histogram equalization, and singular value equalization methods and helped to increase the clarity of relevant details without distorting the images.
利用非锐化掩蔽和奇异值分解改进肺部ct图像感兴趣区域的诊断观察
计算机断层扫描(CT)技术已广泛应用于肺部疾病的检测和诊断。为了提高CT图像中基本特征的可见性,必须降低噪声和模糊,锐化特征,提高对比度。在本研究中,我们提出了一种改进这些特征的方法,以获得肺部CT图像中更好的感兴趣区域特征,以便正确诊断。该方法的处理包括非局部均值滤波去除噪声,非锐利掩蔽去除模糊和锐化图像,最后奇异值分解增强感兴趣区域的对比度。根据肺部CT图像的对比度改善率,对该方法进行对比度改善评估。结果清楚地表明,与直方图均衡化、不锐利掩蔽、对比度有限的自适应直方图均衡化和奇异值均衡化方法相比,我们的方法达到了更高的对比度提升率,并有助于在不扭曲图像的情况下提高相关细节的清晰度。
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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