Contrast Enhancement of Medical Images Using Statistical Methods with Image Processing Concepts

Z. Al-Ameen
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引用次数: 7

Abstract

The process of generating pictorial representations of the inner human body for medical analysis and intervention is called medical imaging (MI). MI strives for revealing inner structures concealed by the existence of bones and skin to identify diseases in order to be treated properly. MI can be achieved through the use of various imaging systems, where each has different technology necessities. The output of these imaging systems is digital images that have meaningful medical information. Such images, however, do not own a high perceived quality due to the existence of image degradations. Despite modern technology advancement, various medical systems are still producing images with poor contrast owing to incorrect settings and device limitations. Such images must be processed efficiently to become clearer for better analysis, understanding and interpretation. In this study, a simple algorithm is developed, where it utilizes a combination of image processing concepts and statistical methods. The developed algorithm is appraised with a dataset of real-degraded low-contrast images only, assessed with one specialized no-reference metric and compared with four known contrast enhancement methods. From the conducted experiments, the proposed algorithm showed promising performances, since it produced acceptable-quality results rapidly and outperformed the comparison methods in different important aspects.
基于图像处理概念的统计方法增强医学图像的对比度
生成人体内部图像以供医学分析和干预的过程称为医学成像(MI)。MI致力于揭示被骨骼和皮肤的存在所隐藏的内部结构,以识别疾病,以便得到适当的治疗。MI可以通过使用各种成像系统来实现,每种成像系统都有不同的技术要求。这些成像系统的输出是具有有意义的医学信息的数字图像。然而,由于图像退化的存在,这样的图像不具有高感知质量。尽管现代技术进步,但由于不正确的设置和设备限制,各种医疗系统仍然产生对比度较差的图像。必须对这些图像进行有效处理,使其变得更加清晰,以便更好地分析、理解和解释。在本研究中,开发了一种简单的算法,该算法结合了图像处理概念和统计方法。所开发的算法仅使用真实退化的低对比度图像数据集进行评估,使用一个专门的无参考度量进行评估,并与四种已知的对比度增强方法进行比较。从实验中可以看出,该算法能够快速生成质量可接受的结果,并且在许多重要方面都优于比较方法,表现出了良好的性能。
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