基于Starburst模型的瞳孔中心快速定位算法

Yufeng Zhao, Zhiyi Qu, Huiyi Han, Liping Yuan
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引用次数: 5

摘要

星爆算法结合了基于特征和基于模型的方法,能够很好地平衡暗瞳红外照明的运行时性能和精度。在此基础上,利用AdaBoost分类器对人眼图像进行预处理,提取出包含瞳孔的感兴趣区域。这样可以保证Starburst模型的起始点位于瞳孔区域内,减少了算法的迭代次数。同时,有效地检测和填充反射点,消除了干扰点。最后,对非连续边缘特征点采用高密度连通区域聚类,并对椭圆拟合参数进行优化,提高瞳孔中心定位精度。最后,通过实验验证了本文算法的有效性和快速性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An effective and rapid localization algorithm of pupil center based on Starburst model
Starburst algorithm that combines feature-based and model-based approaches, can achieve a good tradeoff between run-time performance and accuracy for dark-pupil infrared illumination. On this basis, eye images are preprocessed using AdaBoost classifier to extract region of interest which contains pupil in this paper. Thus, we can ensure that the start point of Starburst model is located within pupil region, reducing the number of iterations of the algorithm. Meanwhile, reflection points are detected and filled effectively, eliminating interference points. At last, high density connected region clustering is used for the non-continuous edge feature points, and the ellipse fitting parameters are optimized to improve the accuracy of the pupil center localization. Finally, the effectiveness and rapidity of the algorithm proposed in this paper is validated through experiments.
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