In this paper, we present a new approach for periocular recognition based on the Symmetry Assessment by Feature Expansion (SAFE) descriptor, which encodes the presence of various symmetric curve families around image key points. We use the sclera center as single key point for feature extraction, highlighting the object-like identity properties that concentrates to this unique point of the eye. As it is demonstrated, such discriminative properties can be encoded with a reduced set of symmetric curves. Experiments are done with a database of periocular images captured with a digital camera. We test our system against reference periocular features, achieving top performance with a considerably smaller feature vector (given by the use of a single key point). All the systems tested also show a nearly steady correlation between acquisition distance and performance, and they are also able to cope well when enrolment and test images are not captured at the same distance. Fusion experiments among the available systems are also provided.
翻译:在本文中,我们根据地貌扩展描述仪的对称评估,提出了一种新的眼界识别方法,该方法将图象关键点周围各种对称曲线系的存在进行编码。我们使用星际中心作为地貌提取的单一关键点,突出集中到这个独特眼睛点的物体相似特性特性。正如所显示的,这种歧视特性可以用一套较少的对称曲线编码。实验用一个数字相机捕获的透视图像数据库进行。我们用参考透视特征测试我们的系统,用一个小得多的特性矢量实现顶级性(以使用一个单一关键点为基础 ) 。所有测试的系统还显示获得距离和性能之间的近乎稳定的关联性,而且当无法在同一距离捕获录入和测试图像时,它们也能很好地应对。还提供现有系统之间的混集实验。