利用白光LED进行可见光谱虹膜成像

K. Raja, Ramachandra Raghavendra, C. Busch
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引用次数: 9

摘要

虹膜识别在可见光谱中具有许多挑战性。特别是对于虹膜颜色较深的受试者,这是由于黑色素色素沉着和胶原原纤维较高造成的,在可见光下不能清楚地观察到这种模式。因此,由于捕获的虹膜样本中纹理可见性有限,通常会降低验证性能。在这项工作中,我们提出了一种利用白光发光二极管(LED)获得具有详细纹理的高质量虹膜图像的新方法。为了评估使用LED灯的建议设置,我们获得了一个新的暗虹膜图像数据库,其中包括62个独特的虹膜实例,每个实例有10个样本,这些样本是在不同的会话中捕获的。该数据库是通过三种不同的智能手机——iPhone 5S、诺基亚Lumia 1020和三星Active S4获得的。我们还提供了常规到近红外(NIR)图像的基准测试,这些图像可用于数据库的一个子集。使用五种不同的成熟虹膜识别算法和一种商用货架算法进行了广泛的实验。他们证明了所提出的图像捕获设置的可靠性能,在FMR = 0.01%时GMR为91.01%,表明在现实生活中的认证场景中的适用性。
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Iris imaging in visible spectrum using white LED
Iris recognition in the visible spectrum has many challenging aspects. Especially, for subjects with dark iris color, which is caused by higher melanin pigmentation and collagen fibrils, the pattern is not clearly observable under visible light. Thus, the verification performance is generally lowered due to limited texture visibility in the captured iris samples. In this work, we propose a novel method of employing a white light-emitting-diode (LED) to obtain high-quality iris images with detailed texture. To evaluate the proposed set-up with LED light, we have acquired a new database of dark iris images comprising of 62 unique iris instances with ten samples each that were captured in different sessions. The database is acquired using three different smartphones - iPhone 5S, Nokia Lumia 1020 and Samsung Active S4. We also provide a benchmark of the proposed method with conventional to Near-Infra-Red (NIR) images, which are available for a subset of the database. Extensive experiments were carried out using five different well-established iris recognition algorithms and one commercial-of-the-shelf algorithm. They demonstrate the reliable performance of the proposed image capturing setup with GMR of 91.01% at FMR = 0.01% indicating the applicability in real-life authentication scenarios.
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Towards fitting a 3D dense facial model to a 2D image: A landmark-free approach Combining 3D and 2D for less constrained periocular recognition Pace independent mobile gait biometrics Iris imaging in visible spectrum using white LED On smartphone camera based fingerphoto authentication
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