Retinal vessel landmark detection using deep learning and hessian matrix

TingBing Fang, R. Su, L. Xie, Qiwei Gu, Qiaoliang Li, Ping Liang, Tianfu Wang
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引用次数: 10

Abstract

The purpose of retinal image registration is to establish the coherent correspondences between the multi-model retinal image for applying into the ophthalmological surgery. Vessel landmarks detection in retinal image is the vital step in the retinal image registration. In this paper, a novel approach is proposed, firstly, a deep learning technology is used to vessel segmentation to generate the probability map of the retinal image, which is more reliable for optimizing the feature detection in retinal image. Secondly, we detect the landmarks using the multi-scale Hessian response on the probability map of the retinal image. Compared to the traditional methods, the results show that our method enable a majority of the bifurcation points, crossover points and curvature extreme points to be detected out simultaneously. Moreover, the impact of image noise and pathology can be reduced significantly.
基于深度学习和hessian矩阵的视网膜血管标记检测
视网膜图像配准的目的是建立多模型视网膜图像之间的一致对应关系,以便应用于眼科手术。视网膜图像中的血管标志检测是视网膜图像配准的关键步骤。本文提出了一种新颖的方法,首先利用深度学习技术对视网膜图像进行血管分割,生成视网膜图像的概率图,该概率图对于优化视网膜图像的特征检测更为可靠;其次,在视网膜图像的概率图上利用多尺度Hessian响应进行地标检测。结果表明,与传统方法相比,该方法能够同时检测出大部分的分岔点、交叉点和曲率极值点。此外,图像噪声和病理的影响可以显著降低。
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