Segmentation of Breast Masses in Local Dense Background Using Adaptive Clip Limit-CLAHE

Shelda Sajeev, M. Bajger, Gobert N. Lee
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引用次数: 11

Abstract

Mass segmentation in mammograms is a challenging task if the mass is located in a local dense background. It can be due to the similarity of intensities between the overlapped normal dense breast tissue and mass. In this paper, a self- adjusted mammogram contrast enhancement solution called Adaptive Clip Limit CLAHE (ACL-CLAHE) is developed, aiming to improve mass segmentation in dense regions of mammograms. An optimization algorithm based on entropy is used to optimize the clip limit and window size of standard CLAHE. The proposed method is tested on 89 mammogram images with 41 masses localized in dense background and 48 masses in non-dense background. The results are compared with other standard enhancement techniques such as Adjustable Histogram Equalization, Unsharp Masking, Neutrosophy based enhancement, standard CLAHE and an Adaptive Clip Limit CLAHE based on standard deviation. The experimental results show that our method significantly improves the mass segmentation in local dense background without compromising the performance in local non-dense background.
基于自适应Clip Limit-CLAHE的局部密集背景下乳腺肿块分割
如果肿块位于局部致密背景中,乳房x光片中的肿块分割是一项具有挑战性的任务。这可能是由于重叠的正常致密乳腺组织和肿块之间的强度相似。本文提出了一种自调节的乳房x线图像对比度增强方案——自适应Clip Limit CLAHE (ACL-CLAHE),旨在改善乳房x线图像密集区域的质量分割。采用基于熵的优化算法对标准CLAHE的剪辑限制和窗口大小进行了优化。对89张乳腺x线图像进行了测试,其中41个肿块定位在密集背景下,48个肿块定位在非密集背景下。结果与其他标准增强技术进行了比较,如可调直方图均衡化、非锐化掩蔽、基于中性的增强、标准CLAHE和基于标准差的自适应Clip Limit CLAHE。实验结果表明,该方法在不影响局部非密集背景下的分割性能的前提下,显著提高了局部密集背景下的质量分割效果。
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