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Smartphone based robust iris recognition in visible spectrum using clustered K-means features

机译:使用聚类K均值功能在可见光谱中基于智能手机的强大虹膜识别

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Smartphones and tablet computers are being actively studied for the performance of biometric recognition in visible spectrum. Owing to robust performance of iris recognition, many works have investigated the performance in visible spectrum. Increasing popularity of iris recognition in the visible spectrum has further resulted in using smartphones for the same. The extraction of robust features for visible spectrum iris recognition is vital to meet the expected accuracy of recognition. In this work, we explore K - means clustering based feature extraction to obtain robust features. K-means clustering is a fast alternative training method that is not computationally expensive and can easily be extended to large scale systems. The robust features extracted serves best for the unconstrained iris recognition on smartphones in visible spectrum. The proposed feature extraction technique has been extensively evaluated on publicly available smartphone iris database from BIPLab. The best Equal Error Rate of 0.31% is achieved using the proposed technique on images captured using iPhone in indoor scenario.
机译:正在积极研究智能手机和平板电脑在可见光谱中的生物识别性能。由于虹膜识别的强大性能,许多作品已经研究了可见光谱的性能。虹膜识别在可见光谱中的日益普及进一步导致了将智能手机用于虹膜识别。提取可见光谱虹膜识别的鲁棒特征对于满足预期的识别精度至关重要。在这项工作中,我们探索K-基于均值聚类的特征提取以获得鲁棒的特征。 K-均值聚类是一种快速的替代训练方法,在计算上并不昂贵,并且可以轻松地扩展到大型系统。提取的强大功能最适合可见光谱中智能手机的无限制虹膜识别。拟议中的特征提取技术已在BIPLab的可公开获得的智能手机虹膜数据库中进行了广泛评估。使用建议的技术,在室内场景下使用iPhone拍摄的图像可以达到0.31%的最佳均等错误率。

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