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Multi-Instance Iris Recognition: Using an Augmented Webber Local Descriptor based Feature Vector

机译:多实例虹膜识别:使用基于增强的Webber本地描述符的特征向量

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Human irises are very rich in texture and have a high degree of uniqueness. This texture information can be used for identification of a human being. Information extracted from the human irises can be used to build a multi-instance biometric identification system. In this paper, a new method of feature vector extraction based on the Webber Local Descriptor algorithm is proposed for creating an iris-based multi-instance biometric system. The performance of an individual channel and a multi-instance system are evaluated, and the effectiveness of the Webber Local Descriptor for biometric recognition is investigated. Evaluations using the Webber Local Descriptor as a feature vector resulted in 88.39% Equal Error Rate (EER) for TAR-TRR when a multi-instance approach was adopted, which is a 6.44% improvement compared to the single instance approach.
机译:人类的鸢尾花的质地非常丰富,具有高度的唯一性。这种纹理信息可用于识别人类。从人类虹膜中提取的信息可用于构建多实例的生物识别系统。在本文中,提出了一种基于Webber本地描述符算法的特征向量提取方法,用于创建基于IRIS的多实例生物识别系统。评估单个频道和多实例系统的性能,并研究了用于生物识别识别的Webber本地描述符的有效性。当采用多实例方法时,使用Webber本地描述符作为特征向量的评估为特征向量产生了88.39%的错误率(eer),而是与单实例方法相比的6.44%的改进。

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