Periocular recognition has gained attention recently due to demands of increased robustness of face or iris in less controlled scenarios. We present a new system for eye detection based on complex symmetry filters, which has the advantage of not needing training. Also, separability of the filters allows faster detection via one-dimensional convolutions. This system is used as input to a periocular algorithm based on retinotopic sampling grids and Gabor spectrum decomposition. The evaluation framework is composed of six databases acquired both with near-infrared and visible sensors. The experimental setup is complemented with four iris matchers, used for fusion experiments. The eye detection system presented shows very high accuracy with near-infrared data, and a reasonable good accuracy with one visible database. Regarding the periocular system, it exhibits great robustness to small errors in locating the eye centre, as well as to scale changes of the input image. The density of the sampling grid can also be reduced without sacrificing accuracy. Lastly, despite the poorer performance of the iris matchers with visible data, fusion with the periocular system can provide an improvement of more than 20%. The six databases used have been manually annotated, with the annotation made publicly available.
翻译:最近,由于在不太受控制的情景下,脸孔或虹膜的坚固度增加,人们对眼部的认知最近受到关注。我们提出了一个基于复杂对称过滤器的新的眼部检测系统,其优点是不需要培训。此外,过滤器的分离使得通过一维相变形可以更快地检测。这个系统被作为基于视离子采样网和加博频谱分解的垂直算法的投入。评价框架由6个数据库组成,这些数据库既有近红外和可见传感器,也有6个。实验装置配有4个用于聚合试验的虹膜匹配器。显示的眼部检测系统显示,近红外数据非常精度高,一个可见数据库的准确度合理性也很高。关于透视系统,它显示在定位眼中心时存在小误差,以及输入图像的变异度也非常强。取样网的密度也可以降低,但又不能牺牲准确性。最后,尽管与可见数据的匹配性较差,但与透视系统相连接的功能,用于聚变形系统,但所提供的视觉系统可以提供超过20%的6个手动数据库的改进。使用。