Computed Tomography Image Enhancement Using Cuckoo Search: A Log Transform Based Approach

Q3 Computer Science
A. Ashour, Sourav Samanta, N. Dey, N. Kausar, Wahiba Ben Abdessalemkaraa, A. Hassanien
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引用次数: 83

Abstract

Medical image enhancement is an essential process for superior disease diagnosis as well as for detection of pathological lesion accurately. Computed Tomography (CT) is considered a vital medical imaging modality to evaluate numerous diseases such as tumors and vascular lesions. However, speckle noise corrupts the CT images and makes the clinical data analysis ambiguous. Therefore, for accurate diagnosis, medical image enhancement is a must for noise removal and sharp/clear images. In this work, a medical image enhancement algorithm has been proposed using log transform in an optimization framework. In order to achieve optimization, a well-known meta-heuristic algorithm, namely: Cuckoo search (CS) algorithm is used to determine the optimal parameter settings for log transform. The performance of the proposed technique is studied on a low contrast CT image dataset. Besides this, the results clearly show that the CS based approach has superior convergence and fitness values compared to PSO as the CS converge faster that proves the efficacy of the CS based technique. Finally, Image Quality Analysis (IQA) justifies the robustness of the proposed enhancement technique.
利用杜鹃搜索增强计算机断层图像:一种基于对数变换的方法
医学图像增强是提高疾病诊断水平和准确发现病理病灶的必要步骤。计算机断层扫描(CT)被认为是一种重要的医学成像方式来评估许多疾病,如肿瘤和血管病变。然而,斑点噪声会破坏CT图像,使临床数据分析变得模糊。因此,为了准确诊断,必须对医学图像进行增强,以去除噪声并使图像清晰。本文提出了一种基于对数变换的医学图像增强算法。为了实现优化,采用了一种著名的元启发式算法,即布谷鸟搜索(Cuckoo search, CS)算法来确定对数变换的最优参数设置。在低对比度CT图像数据集上研究了该方法的性能。此外,结果清楚地表明,基于CS的方法具有优于PSO的收敛性和适应度值,CS收敛速度更快,证明了基于CS的技术的有效性。最后,图像质量分析(IQA)验证了所提增强技术的鲁棒性。
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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CiteScore
3.20
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0.00%
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