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A Robust Outliers’ Elimination Scheme for Multimodal Retina Image Registration Using Constrained Affine Transformation

机译:基于约束仿射变换的多峰视网膜图像配准的鲁棒异常值消除方案

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This paper proposes a robust outliers' elimination scheme for the registration of multimodal retina images. Our proposed constrained affine transformation Least Trimmed Squares (CAT-LTS) method has been designed to deal with image registration problems where the putatively matched feature points has a very large fraction of wrong matches. The constrained affine transformation allows all combinations of transformations such as scaling, rotation, translation and shear but disallows reflection. We use the Scale-Invariant Feature Transform (SIFT) feature points and Partial Intensity Invariant Feature Descriptors (PIIFD) to obtain the putatively matched feature points. We show that our proposed scheme when applied to the application of registering color fundus to enface optical coherence tomography (OCT) images significantly outperforms other outliers' elimination methods, namely the m-estimator sample and concensus (MSAC) and Random sample consensus (RANSAC) methods.
机译:本文提出了一种鲁棒的离群值消除方案,用于多模态视网膜图像的配准。我们提出的约束仿射变换最小修剪平方(CAT-LTS)方法旨在处理图像配准问题,其中假定的匹配特征点具有很大比例的错误匹配。受约束的仿射变换允许变换的所有组合,例如缩放,旋转,平移和剪切,但不允许反射。我们使用尺度不变特征变换(SIFT)特征点和部分强度不变特征描述符(PIIFD)获得推定匹配的特征点。我们表明,我们提出的方案在套准彩色眼底以应用光学相干断层扫描(OCT)图像时,明显优于其他异常值的消除方法,即m估计量样本和共识(MSAC)和随机样本共识(RANSAC)方法。

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