OCT卷中视网膜层的超像素引导活动轮廓分割

Fangliang Bai, S. Gibson, M. Marques, A. Podoleanu
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引用次数: 2

摘要

视网膜OCT图像分割是临床医生或机器学习算法进行后续医学诊断的前兆。在过去的十年中,人们提出了许多算法来检测视网膜层边界并简化图像表示。受最近超像素方法预处理自然图像成功的启发,我们提出了一种新的框架,用于分割OCT体数据中的视网膜层。在我们的框架中,使用自适应曲线方法定位感兴趣的区域(例如中央凹)。然后,首先使用1D超像素健壮地检测细胞层边界,应用于a扫描,然后拟合b扫描图像中的活动轮廓。然后有效地从体数据中分割出三维单元层表面。该框架在健康的眼睛数据上进行了测试,我们表明它能够分割多达12层。实验结果表明了该方法的有效性,并表明了该方法对低分辨率图像和固有散斑噪声的鲁棒性。
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Superpixel guided active contour segmentation of retinal layers in OCT volumes
Retinal OCT image segmentation is a precursor to subsequent medical diagnosis by a clinician or machine learning algorithm. In the last decade, many algorithms have been proposed to detect retinal layer boundaries and simplify the image representation. Inspired by the recent success of superpixel methods for pre-processing natural images, we present a novel framework for segmentation of retinal layers in OCT volume data. In our framework, the region of interest (e.g. the fovea) is located using an adaptive-curve method. The cell layer boundaries are then robustly detected firstly using 1D superpixels, applied to A-scans, and then fitting active contours in B-scan images. Thereafter the 3D cell layer surfaces are efficiently segmented from the volume data. The framework was tested on healthy eye data and we show that it is capable of segmenting up to 12 layers. The experimental results imply the effectiveness of proposed method and indicate its robustness to low image resolution and intrinsic speckle noise.
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