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A feature-based technique for joint, linear estimation of high-order image-to-mosaic transformations: application to mosaicing the curved human retina

机译:一种基于特征的联合,线性估计的高阶图像到马赛克变换:应用于菱形弯曲人视网膜的应用

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Methods are presented for increasing the coverage and accuracy of image mosaics constructed from multiple, uncalibrated, weak-perspective views of the human retina. Extending our previous algorithm for registering pairs of image using a non-invertible, 12-parameter, quadratic image transformation model and a hierarchical, robust estimation technique, two important innovations are presented. (1) The first is a linear, non-iterative method for jointly estimating the transformations of all images onto the mosaic. This employs constraints derived from pairwise matching between the non-mosaic image frames. It allows the transformations to be estimated for images that do not overlap the mosaic anchor frame, and results in mutually consistent transformations for all images. This means the mosaics can cover a much broader area of the retinal surface, even though the transformation model is not closed under composition. This capability is particularly valuable for mosaicing the retinal periphery in the context of diseases such as AIDS/CMV. (2) The second innovation is a method to improve the accuracy of the pairwise matches as well as the joint estimation by refining the feature locations and by adding new features based on the transformation estimates themselves. For matching image frames of size 1024×1024, this cuts the registration error from the range of 1 to 3 pixels to about 0.55 pixels. The overall transformation error in final mosaic construction is 0.80 pixels based on experiments over a large set of eyes.
机译:提高了从人视网膜的多重,未校准,透视图构成的图像马赛克的覆盖率和精度提高了方法。使用非可逆性,12个参数,二次图像变换模型和分层,鲁棒估计技术向前延伸我们的先前算法,用于使用不可逆转,12个参数,二次图像变换模型和分层,鲁棒估计技术,这是两个重要的创新。 (1)第一是用于将所有图像的变换联合估计在马赛克上的线性的非迭代方法。这采用从非马赛克图像帧之间的成对匹配导出的约束。它允许估计不与马赛克锚帧重叠的图像的变换,并导致所有图像的相互一致的变换。这意味着马赛克可以覆盖视网膜表面的更广泛的区域,即使变换模型未在成分下闭合。这种能力对于在诸如艾滋病/ CMV等疾病的背景下镶嵌视网膜周边特别有价值。 (2)第二次创新是通过改进特征位置并通过基于转换估计本身添加新功能来提高成对匹配的准确性以及联合估计的方法。对于大小1024×1024的匹配图像帧,这将注册误差从1到3像素的范围切割至约0.55像素。基于大量眼睛的实验,最终马赛克结构中的整体变换误差是0.80像素。

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