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Local descriptor for retinal fundus image registration

机译:视网膜眼底图像登记的本地描述符

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摘要

A feature-based retinal image registration (RIR) technique aligns multiple fundus images and composed of pre-processing, feature point extraction, feature descriptor, matching and geometrical transformation. Challenges in RIR include difference in scaling, intensity and rotation between images. The scale and intensity differences can be minimised with consistent imaging setup and image enhancement during the pre-processing, respectively. The rotation can be addressed with feature descriptor method that robust to varying rotation. Therefore, a feature descriptor method is proposed based on statistical properties (FiSP) to describe the circular region surrounding the feature point. From the experiments on public Fundus Image Registration dataset, FiSP established 99.227% average correct matches for rotations between 0 degrees and 180 degrees. Then, FiSP is paired with Harris corner, scale-invariant feature transform (SIFT), speeded-up robust feature (SURF), Ghassabi's and D-Saddle feature point extraction methods to assess its registration performance and compare with the existing feature-based RIR techniques, namely generalised dual-bootstrap iterative closet point (GDB-ICP), Harris-partial intensity invariant feature descriptor (PIIFD), Ghassabi's-SIFT, H-M 16, H-M 17 and D-Saddle-histogram of oriented gradients (HOG). The combination of SIFT-FiSP registered 64.179% of the image pairs and significantly outperformed other techniques with mean difference between 25.373 and 60.448% (p=<0.001*).
机译:基于特征的视网膜图像登记(RIR)技术对准多个眼底图像并由预处理,特征点提取,特征描述符,匹配和几何变换组成。 RIR中的挑战包括图像之间的缩放,强度和旋转的差异。在预处理期间,可以使用一致的成像设置和图像增强来最小化比例和强度差异。可以通过强大地旋转的特征描述符方法来解决旋转。因此,基于统计特性(FISP)提出了一种特征描述符方法,以描述特征点的围绕圆形区域。从公共眼底图像登记数据集的实验,FISP在0度和180度之间的旋转建立了99.227%的平均正确匹配。然后,FISP与Harris Corner,Scale-Funiant Feature Transform(Sift),加速强大的功能(冲浪),Ghassabi和D-Saddle特征点提取方法配对,以评估其注册性能并与基于特征的RIR进行比较技术,即广义双引导迭代壁橱点(GDB-ICP),哈里斯 - 部分强度不变特征描述符(PIIFD),Ghassabi's-Sift,HM 16,HM 17和D-Saddle-Tearmina的定向梯度(HOG)。 SIFT-FISP的组合注册了64.179%的图像对,并且显着优于25.373和60.448%(P = <0.001 *)的平均差异。

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