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Efficient iris recognition using Haralick features based extraction and fuzzy particle swarm optimization

机译:基于Haralick的提取和模糊粒子群优化的高效虹膜识别

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摘要

Iris identification technology is the most versatile non-contact scanning technique, based on mathematical pattern matching. This outstanding authentication method proves its merit exceedingly well in terms of high verification speed, capability of handling large database, reliability for both 1:1 and 1:n verification mode. Iris recognition technology evaluates the unique features of iris for efficient identification or verification of identity of human beings. This biometric technique can be successfully deployed for time and attendance, surveillance, ATM, E-commerce and banking kiosks, border control mechanism, criminal identification, citizen identification, PC/network access, and so on. The distinctive and complex iris pattern has the capability for remarkably high rate of accuracy in recognition. This deployment is composed of image acquisition, image preprocessing, feature extraction, template generation, template matching and classification. Our research work applies improved techniques for optimal iris recognition.Weight sampled geodesic active contours technique efficiently segments the edges of iris. Besides Haralick feature extraction method extracts the key features of iris. Optimized feature selection is carried out by fuzzy controlled particle swarm optimization, inspired by biological evolution and swarming intelligence. Relevance vector machine, a machine learning technique superior than traditional support vector machines performs much better probabilistic supervised classification. The experiments with CASIA version 3 dataset of iris images proves the proposed methods overweigh the existing methods in terms of accuracy, processing time, specificity and sensitivity.
机译:虹膜识别技术是基于数学模式匹配的最通用的非接触扫描技术。这种出色的认证方法在高验证速度,处理大数据库的能力,1:1和1:N验证模式的高验证速度,能够可靠性方面非常好,证明其优点。虹膜识别技术评估IRIS的独特功能,以便有效识别或验证人类的身份。该生物识别技术可成功部署时间和考勤,监控,ATM,电子商务和银行亭,边界控制机制,刑事识别,公民身份证明,PC /网络访问等。独特和复杂的虹膜图案具有显着高度的识别率显着高的能力。此部署由图像采集,图像预处理,特征提取,模板生成,模板匹配和分类组成。我们的研究工作适用于最佳IRIS识别的改进技术。重量采样的测量测量型活性轮廓技术有效地分段虹膜边缘。除了Haralick特征提取方法外,提取虹膜的关键特征。优化的特征选择是通过模糊控制的粒子群优化进行,受生物演化和蜂拥智慧的启发。相关矢量机,机器学习技术优于传统的支持向量机表现出更好的概率监督分类。与CASIA版本3的虹膜图像数据集的实验证明了所提出的方法在准确性,处理时间,特异性和敏感度方面超过现有方法。

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