Chen Min, Cooper Robert F, Han Grace K, Gee James, Brainard David H, Morgan Jessica I W
Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA;
Scheie Eye Institute, Department of Ophthalmology, University of Pennsylvania, Philadelphia, PA 19104, USA.
Biomed Opt Express. 2016 Nov 3;7(12):4899-4918. doi: 10.1364/BOE.7.004899. eCollection 2016 Dec 1.
We present a fully automated adaptive optics (AO) retinal image montaging algorithm using classic scale invariant feature transform with random sample consensus for outlier removal. Our approach is capable of using information from multiple AO modalities (confocal, split detection, and dark field) and can accurately detect discontinuities in the montage. The algorithm output is compared to manual montaging by evaluating the similarity of the overlapping regions after montaging, and calculating the detection rate of discontinuities in the montage. Our results show that the proposed algorithm has high alignment accuracy and a discontinuity detection rate that is comparable (and often superior) to manual montaging. In addition, we analyze and show the benefits of using multiple modalities in the montaging process. We provide the algorithm presented in this paper as open-source and freely available to download.
我们提出了一种全自动自适应光学(AO)视网膜图像拼接算法,该算法使用经典的尺度不变特征变换和随机抽样一致性来去除异常值。我们的方法能够利用来自多种AO模式(共焦、分裂检测和暗场)的信息,并能准确检测拼接中的不连续性。通过评估拼接后重叠区域的相似度以及计算拼接中不连续性的检测率,将算法输出与手动拼接进行比较。我们的结果表明,所提出的算法具有较高的对齐精度,其不连续性检测率与手动拼接相当(且通常更优)。此外,我们分析并展示了在拼接过程中使用多种模式的好处。我们将本文提出的算法作为开源软件提供,可免费下载。