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Performance Evaluation of State-of-the-Art Local Feature Detectors and Descriptors in the Context of Longitudinal Registration of Retinal Images

机译:在视网膜图像的纵向登记的背景下,最先进的本地特征探测器和描述符的性能评估

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In this paper we systematically evaluate the performance of several state-of-the-art local feature detectors and descriptors in the context of longitudinal registration of retinal images. Longitudinal (temporal) registration facilitates to track the changes in the retina that has happened over time. A wide number of local feature detectors and descriptors exist and many of them have already applied for retinal image registration, however, no comparative evaluation has been made so far to analyse their respective performance. In this manuscript we evaluate the performance of the widely known and commonly used detectors such as Harris, SIFT, SURF, BRISK, and bifurcation and cross-over points. As of descriptors SIFT, SURF, ALOHA, BRIEF, BRISK and PIIFD are used. Longitudinal retinal image datasets containing a total of 244 images are used for the experiment. The evaluation reveals some potential findings including more robustness of SURF and SIFT keypoints than the commonly used bifurcation and cross-over points, when detected on the vessels. SIFT keypoints can be detected with a reliability of 59% for without pathology images and 45% for with pathology images. For SURF keypoints these values are respectively 58% and 47%. ALOHA descriptor is best suited to describe SURF keypoints, which ensures an overall matching accuracy, distinguishability of 83%, 93% and 78%, 83% for without pathology and with pathology images respectively.
机译:在本文中,我们在视网膜图像的纵向登记的背景下系统地评估了几种最先进的本地特征探测器和描述符的性能。纵向(时间)注册有助于跟踪随着时间的推移发生的视网膜的变化。存在广泛的本地特征探测器和描述符,并且它们中的许多已经申请了视网膜图像登记,但是,迄今为止没有进行比较评估来分析它们各自的性能。在本手稿中,我们评估了广泛知名和常用的探测器的性能,如哈里斯,筛席,冲浪,短暂和分叉和交叉点。从描述符筛选出来,使用Sift,Surf,Aloha,简介,短发,轻盈和Piifd。实验中使用总共244个图像的纵向视网膜图像数据集用于实验。评估揭示了一些潜在的发现,包括在血管上检测到的常用分叉和交叉点的冲浪和筛选键点的更具稳健性。可以在没有病理图像的情况下以59%的可靠性检测到SIFT键点,并且具有45%的病理图像。对于冲浪关键点,这些值分别为58%和47%。 Aloha描述符最适合描述冲浪关键点,其确保整体匹配的准确性,83%,93%和78%,83%,分别具有病理图像。

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