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Developing Iris Recognition System for Smartphone Security

机译:开发用于智能手机安全的虹膜识别系统

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ABSTRACT Smartphones have become an important way to store sensitive information; therefore, users’ privacy needs to be highly protected. This can be done by using the most reliable and accurate biometric identification system available today: iris recognition. This paper develops and tests an iris recognition system for smartphones. The system uses eye images that rely on visible wavelength; these images are acquired by the smartphone built-in camera. The development of the system passes through four main phases: the first phase is the iris segmentation phase, which is done in three steps to detect the iris region from the captured image, which contains the eye and part of the face using Haar Cascade Classifier training, pupil localization, and iris localization using a Circular Hough Transform. In the second phase, the system applies normalization using a Rubber Sheet model, which converts the iris image to a fixed size pattern. In the third phase, unique features are extracted from that pattern using a Deep Sparse Filtering algorithm. Finally, in the matching phase, seven different matching techniques are investigated to decide the most appropriate one the system will use to verify the user. Two types of testing are conducted: Offline and Online tests. The BIPLab database and a collected dataset are used to measure the accuracy of the system phases and to calculate the Equal Error Rate (EER) for the whole system. The average EER is 0.18 for the BIPLab database and 0.26 for the collected dataset.
机译:摘要智能手机已成为存储敏感信息的重要方法。因此,必须高度保护用户的隐私。这可以通过使用当今可用的最可靠,最准确的生物特征识别系统来完成:虹膜识别。本文开发并测试了用于智能手机的虹膜识别系统。该系统使用依赖于可见波长的眼图。这些图像是通过智能手机的内置相机获取的。系统的开发经历了四个主要阶段:第一阶段是虹膜分割阶段,该过程分三步完成,以使用Haar Cascade分类器训练从捕获的图像中检测出虹膜区域,该图像包含眼睛和脸部,使用圆霍夫变换进行瞳孔定位,瞳孔定位和虹膜定位。在第二阶段,系统使用“橡胶板”模型应用归一化,该模型将虹膜图像转换为固定大小的图案。在第三阶段,使用深度稀疏过滤算法从该模式中提取出独特特征。最后,在匹配阶段,研究了七种不同的匹配技术,以确定系统将用来验证用户的最合适的一种。进行两种类型的测试:离线测试和在线测试。 BIPLab数据库和收集的数据集用于测量系统阶段的准确性,并计算整个系统的均等错误率(EER)。 BIPLab数据库的平均EER为0.18,收集的数据集的平均EER为0.26。

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