稀疏性启发虹膜图像的选择和识别

Jaishanker K. Pillai, Vishal M. Patel, R. Chellappa
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引用次数: 39

摘要

虹膜图像从一个部分合作的主体往往遭受模糊,遮挡由于眼睑,和镜面反射。现有的虹膜识别系统在这些图像上的性能明显下降。因此,在将虹膜视频流输入识别算法之前,必须从传入的虹膜视频流中选择好的图像。本文提出了一种基于稀疏度的虹膜图像选择及其后续识别算法。与大多数现有的虹膜图像选择算法不同,我们的方法可以处理虹膜图像捕获中常见的分割错误和更广泛的采集伪影。我们在一个步骤中执行选择和识别,这比为两者设计单独的专门算法更有效。部分合作用户的识别是在各种应用中部署虹膜系统的重要一步。
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Sparsity inspired selection and recognition of iris images
Iris images acquired from a partially cooperating subject often suffer from blur, occlusion due to eyelids, and specular reflections. The performance of existing iris recognition systems degrade significantly on these images. Hence it is essential to select good images from the incoming iris video stream, before they are input to the recognition algorithm. In this paper, we propose a sparsity based algorithm for selection of good iris images and their subsequent recognition. Unlike most existing algorithms for iris image selection, our method can handle segmentation errors and a wider range of acquisition artifacts common in iris image capture. We perform selection and recognition in a single step which is more efficient than devising separate specialized algorithms for the two. Recognition from partially cooperating users is a significant step towards deploying iris systems in a wide variety of applications.
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