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Optimal segmentation of pupillometric images for estimating pupil shape parameters.

机译:瞳孔测量图像的最佳分割,以估计瞳孔形状参数。

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摘要

The problem of determining the pupil morphological parameters from pupillometric data is considered. These characteristics are of great interest for non-invasive early diagnosis of the central nervous system response to environmental stimuli of different nature, in subjects suffering some typical diseases such as diabetes, Alzheimer disease, schizophrenia, drug and alcohol addiction. Pupil geometrical features such as diameter, area, centroid coordinates, are estimated by a procedure based on an image segmentation algorithm. It exploits the level set formulation of the variational problem related to the segmentation. A discrete set up of this problem that admits a unique optimal solution is proposed: an arbitrary initial curve is evolved towards the optimal segmentation boundary by a difference equation; therefore no numerical approximation schemes are needed, as required in the equivalent continuum formulation usually adopted in the relevant literature.
机译:考虑了从瞳孔测量数据确定瞳孔形态参数的问题。这些特征对于患有某些典型疾病例如糖尿病,阿尔茨海默氏病,精神分裂症,药物和酒精成瘾的受试者的中枢神经系统对不同性质的环境刺激的反应的非侵入性早期诊断非常感兴趣。通过基于图像分割算法的程序来估计瞳孔的几何特征,例如直径,面积,质心坐标。它利用与分割相关的变分问题的水平集公式化。提出了一个解决此问题的离散方法,该方法允许采用唯一的最优解:通过差分方程将任意初始曲线向最优分割边界演化;因此,不需要像相关文献中通常采用的等效连续谱公式那样,需要数值逼近方案。

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