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Automatic detection of retinal capillary nonperfusion via a new active contour model

机译:新型活性轮廓模型自动检测视网膜毛细管非灌注

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Capillary nonperfusion (CNP), which is one of characteristic features in diabetic retinopathy patients, is an important judgement of the appearance of retinal diseases. This paper presents a novel, fast and hybrid method to detect CNP. This model combines region-based active contour model(ACM), Graph-Cut and Fuzzy Possibilistic C-Means(FPCM). We modify ACM with a new energy function to reduce suspicious pixels, and employ Graph-Cut to replace the level set method to get a faster arithmetic speed, which also make our method insensitive to the initial contour. And FPCM is applied to average grey levels over different clusters instead of the grey levels of the pixel in order to alleviate the influence caused by noise and capillaries. Experimental results demonstrate that the proposed method outperforms other ACM methods in detecting CNP with better accuracy and sensitivity.
机译:毛细管非灌注(CNP),是糖尿病视网膜病变患者的特征之一,是视网膜疾病外观的重要判断。本文介绍了检测CNP的新型,快速和杂种方法。该模型结合了基于区域的有源轮廓模型(ACM),图形切割和模糊可能的C-Meancy(FPCM)。我们用新的能量函数修改ACM以减少可疑像素,并采用图形切割以更换级别的算术速度,这也使我们的方法对初始轮廓不敏感。并且FPCM应用于不同簇的平均灰度水平,而不是像素的灰度级,以减轻噪声和毛细血管造成的影响。实验结果表明,该方法以更好的准确性和灵敏度检测CNP在检测CNP时表现出其他ACM方法。

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