Transforming traditional iris recognition systems to work on non-ideal situations

Zhi Zhou, Yingzi Du, C. Belcher
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引用次数: 85

Abstract

Non-ideal iris images can significantly affect the accuracy of iris recognition systems for two reasons: 1) they cannot be properly preprocessed by the system; and/or 2) they have poor image quality. However, many traditional iris recognition systems have been deployed in law enforcement, military, or many other important locations. It will be expensive to replace all these systems. It will be desirable if the traditional systems can be transformed to perform in non-ideal situations without an expensive update. In this paper, we propose a method that can help traditional iris recognition systems to work on the non-ideal situation using a video image approach. The proposed method will quickly identify and eliminate the bad quality images from iris videos for further processing. The segmentation accuracy is critical in recognition and would be challenging for traditional systems. The segmentation evaluation is designed to evaluate if the segmentation is valid. The information distance based quality measure is used to evaluate if the image has enough quality for recognition. The segmentation evaluation score and quality score are combined to predict the recognition performance. The research results show that the proposed methods can work effectively and objectively. The combination of segmentation and quality scores is highly correlated with the recognition accuracy and can be used to improve the performance of iris recognition systems in a non-ideal situation. The deployment of such a system would not cost much since the core parts of the traditional systems are not changed and we only need to add software modules. It will be very practical to transform the traditional system using the proposed method.
改造传统的虹膜识别系统,使其在非理想情况下工作
不理想的虹膜图像会显著影响虹膜识别系统的准确性,主要有两个原因:1)系统无法对其进行适当的预处理;和/或2)图像质量差。然而,许多传统的虹膜识别系统已经部署在执法、军事或许多其他重要场所。更换所有这些系统将是昂贵的。如果可以将传统系统转换为在非理想情况下运行,而无需进行昂贵的更新,这将是可取的。在本文中,我们提出了一种方法,可以帮助传统的虹膜识别系统在非理想情况下使用视频图像的方法。该方法可以快速识别和消除虹膜视频中的不良图像,以便进行进一步的处理。分割的准确性是识别的关键,对传统系统来说是一个挑战。分割评估的目的是评估分割是否有效。使用基于信息距离的质量度量来评价图像是否具有足够的识别质量。结合分割评价分数和质量分数来预测识别性能。研究结果表明,所提出的方法是有效、客观的。分割和质量分数的结合与识别精度高度相关,可用于提高虹膜识别系统在非理想情况下的性能。这种系统的部署成本并不高,因为传统系统的核心部分没有改变,我们只需要增加软件模块。采用该方法对传统系统进行改造,具有很强的实用性。
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