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A Robust Outlier Elimination Approach for Multimodal Retina Image Registration

机译:一种用于多模态视网膜图像配准的鲁棒离群值消除方法

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This paper presents a robust outlier elimination approach for multi-modal retina image registration application. Our proposed scheme is based on the Scale-Invariant Feature Transform (SIFT) feature extraction and Partial Intensity Invariant Feature Descriptors (PIIFD), and we combined with a novel outlier elimination approach to robustly eliminate incorrect putative matches to achieve better registration results. Our proposed approach, which we will henceforth refer to as the residual-scaled-weighted Least Trimmed Squares (RSW-LTS) method, has been designed to enforce an affine transformation geometric constraint to solve the problem of image registration when there is very high percentage of incorrect matches in putatively matched feature points. Our experiments on registration of fundus-fluorescein angiographic image pairs show that our proposed scheme significantly outperforms the Harris-PIIFD scheme. We also show that our proposed RSW-LTS approach outperforms other outlier elimination approaches such as RANSAC (RANdom SAmple Consensus) and MSAC (M-estimator SAmple and Consensus).
机译:本文为多模式视网膜图像配准应用提出了一种鲁棒的离群值消除方法。我们提出的方案基于尺度不变特征变换(SIFT)特征提取和部分强度不变特征描述符(PIIFD),并且我们结合了新颖的离群值消除方法来可靠地消除不正确的推定匹配,从而获得更好的配准结果。我们提出的方法(此后称为残差缩放加权最小修剪平方(RSW-LTS)方法)经过精心设计,可强制执行仿射变换几何约束,以解决百分比很高的图像配准问题。推定匹配的特征点中的不正确匹配。我们对眼底荧光素血管造影图像对进行配准的实验表明,我们提出的方案明显优于Harris-PIIFD方案。我们还表明,我们提出的RSW-LTS方法优于其他离群值消除方法,例如RANSAC(随机抽样共识)和MSAC(M估计抽样和共识)。

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