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Iris Recognition Using Multi-Algorithmic Approaches for Cognitive Internet of things (CIoT) Framework

机译:使用多算法方法进行虹膜识别的认知物联网(CIoT)框架

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摘要

The recent widespread development of connected sensors, cloud, big data analytics, and ubiquitous sensing technologies have facilitated cognitive Internet of things (CIoT) and its emerging applications. Although CIoT has a great potential to affect human life, scholars have not explored how biometric technologies (e.g., iris) can contribute toward the success of CIoT-oriented framework, where iris-based biometric recognition is used for verification or authentication. One of the trade-offs of biometric recognition designs is to choose a unimodal- or multimodal-based structure. In this study, an iris-based recognition technology was developed as a unimodal biometric with the aid of multi-biometric scenarios. In the segmentation phase, a new algorithm based on masking technique to localize iris was proposed. Two new algorithms, namely, delta-mean and multi-algorithm-mean, were developed to extract iris feature vectors. The proposed system was evaluated on CASIA v. 1, CASIA v. 4-Interval, UBIRIS v. 1, and SDUMLA-HMT. Results show the satisfactory performance of the proposed solution for authentication issues.
机译:互联传感器,云,大数据分析和无处不在的传感技术的最新广泛发展促进了认知物联网(CIoT)及其新兴应用。尽管CIoT具有巨大的潜力来影响人类生活,但学者们尚未探索生物识别技术(例如虹膜)如何为基于CRIS的框架(基于虹膜的生物识别用于验证或身份验证)的成功做出贡献。生物识别识别设计的权衡之一是选择基于单峰或多峰的结构。在这项研究中,基于虹膜的识别技术被开发为一种多峰生物场景的单峰生物特征识别技术。在分割阶段,提出了一种基于掩模技术的虹膜定位算法。开发了两种新算法,即均值算法和均值算法,以提取虹膜特征向量。在CASIA v.1,CASIA v.4-Interval,UBIRIS v.1和SDUMLA-HMT上评估了建议的系统。结果表明,所提出的身份验证解决方案的性能令人满意。

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