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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Optic disc segmentation by U-net and probability bubble in abnormal fundus images
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Optic disc segmentation by U-net and probability bubble in abnormal fundus images

机译:U-NET和异常眼底图像中U-NET和概率泡沫的光盘分割

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摘要

Segmenting optic disc (OD) in abnormal fundus images is a challenge task because of many distractions such as illumination variations, blurry boundary, occlusion of retinal vessels and big bright lesions. Data driven deep learning is effective and robust to illumination variations, blurry boundary and occlusion in the normal fundus images but sensitive to big bright lesions in abnormal images. In this paper, an automatic OD segmentation method fusing U-net with model-driven probability bubble approach is proposed in abnormal fundus images. The probability bubble is conceived according to the position relationship between retinal vessels and OD, and the localization result is fused into the output layer of U-net through calculating the joint probability. The proposed method takes the advantage of the deep learning architecture and improves the architecture's performance by including the model-driven position constraint when lack of sufficient training data. Experiments show that the proposed method successfully removes the distraction of bright lesions in abnormal fundus images and obtains a satisfying OD segmentation on three public databases: Kaggle, MESSIDOR and NIVE, and it outperforms existing methods with a very high accuracy.
机译:在异常眼底图像中分割视盘是一项挑战性的任务,因为存在许多干扰因素,如光照变化、边界模糊、视网膜血管阻塞和大的明亮病变。数据驱动的深度学习对正常眼底图像中的光照变化、边界模糊和遮挡有效且鲁棒,但对异常图像中的大亮病变敏感。本文提出了一种融合U网络和模型驱动的概率气泡法的眼底异常图像OD自动分割方法。根据视网膜血管与OD的位置关系,构造概率泡泡,通过计算联合概率,将定位结果融合到U-net的输出层。该方法充分利用了深度学习体系结构的优点,在缺乏足够训练数据的情况下,通过引入模型驱动的位置约束,提高了体系结构的性能。实验表明,该方法在Kaggle、MESSIDOR和NIVE三个公共数据库上成功地消除了眼底异常图像中明亮病变的干扰,并获得了满意的OD分割结果,其精度优于现有方法。

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