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Retrospective Illumination Correction of Retinal Images

机译:视网膜图像的回顾性照明校正

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摘要

A method for correction of nonhomogenous illumination based on optimization of parameters of B-spline shading model with respect to Shannon's entropy is presented. The evaluation of Shannon's entropy is based on Parzen windowing method (Mangin, 2000) with the spline-based shading model. This allows us to express the derivatives of the entropy criterion analytically, which enables efficient use of gradient-based optimization algorithms. Seven different gradient- and nongradient-based optimization algorithms were initially tested on a set of 40 simulated retinal images, generated by a model of the respective image acquisition system. Among the tested optimizers, the gradient-based optimizer with varying step has shown to have the fastest convergence while providing the best precision. The final algorithm proved to be able of suppressing approximately 70% of the artificially introduced non-homogenous illumination. To assess the practical utility of the method, it was qualitatively tested on a set of 336 real retinal images; it proved the ability of eliminating the illumination inhomogeneity substantially in most of cases. The application field of this method is especially in preprocessing of retinal images, as preparation for reliable segmentation or registration.
机译:提出了一种针对香农熵的B样条阴影模型参数优化的非均匀光照校正方法。 Shannon熵的评估是基于Parzen窗方法(Mangin,2000年)和基于样条的阴影模型。这使我们能够解析地表达熵准则的导数,从而可以有效地使用基于梯度的优化算法。最初在一组40张模拟的视网膜图像上测试了七种不同的基于梯度和基于非梯度的优化算法,这些图像是由各个图像采集系统的模型生成的。在经过测试的优化器中,具有变化步长的基于梯度的优化器已显示出最快的收敛速度,同时提供了最佳的精度。最终算法被证明能够抑制大约70%的人工引入的非均匀照明。为了评估该方法的实用性,在一组336个真实视网膜图像上进行了定性测试。它证明了在大多数情况下基本上消除了照明不均匀的能力。该方法的应用领域尤其是在视网膜图像的预处理中,作为可靠分割或配准的准备。

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