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首页> 外文期刊>International journal of medical engineering and informatics >Cuckoo search-based modified bi-histogram equalisation method to enhance the cancerous tissues in mammography images
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Cuckoo search-based modified bi-histogram equalisation method to enhance the cancerous tissues in mammography images

机译:基于Cuckoo搜索的修饰的双直方图均衡方法,以增强乳房X线摄影图像中的癌组织

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In this study, novel variants of histogram equalisation (HE) have been proposed by using proper histogram segmentation techniques and then incorporating weighting constraints to each sub histogram independently to maintain the proper contrast. To segment the histogram properly; Otsu method, Kapur's entropy and grey level co-occurrence matrix (GLCM)-based entropy methods have been applied. Optimal weighting constraints have been computed by applying one existing modified cuckoo search (CS) algorithm. All variants are successfully applied to enhance the cancerous tissues of the mammogram images. Fractal dimension (FD), entropy and quality index based on local variance (QILV) have been employed to measure the efficiency of all proposed methods. Experimental results prove the supremacy of the proposed methods over existing methods.
机译:在本研究中,通过使用适当的直方图分割技术提出了直方图均衡(HE)的新型变体,然后独立地将加权约束合并到每个子直方图以维持适当的对比度。 正确分割直方图; OTSU方法,Kapur的熵和灰度级共发生矩阵(GLCM)基于基于熵的熵方法。 通过应用一个现有的修改的Cuckoo搜索(CS)算法来计算最佳加权约束。 成功地应用所有变体以增强乳房X光图像的癌组织。 基于局部方差(Qilv)的分形尺寸(FD),熵和质量指数已经采用了衡量所有提出方法的效率。 实验结果证明了所提出的方法对现有方法的至高无上。

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