Automated Selection of Optimal Frames in NIR Iris Videos

Nitin K. Mahadeo, A. Paplinski, S. Ray
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引用次数: 8

Abstract

A relatively new trend in the iris biometric area is the use of videos as a capturing device. Frame by frame approach is richer in information and gives more flexibility as opposed to the use of traditional still images. However, the quality, shape and size of the iris may vary from one frame to another. In this paper, we propose a new technique for selecting the best frames in an iris video. Taking advantage of the temporal correspondence in iris frames, we classify iris videos into 3 categories, namely Adequate, Motion Constrained and Time Constrained. Frames with blinks and off-angle gaze are eliminated using frame averaging and correlation. Quality factors, namely motion blur, out of focus, translational motion and lighting present in iris videos are detected and their effect on recognition performance is investigated. Experimental results are carried out on both the MBGC NIR Iris Video and the MBGC NIR Iris Still datasets from the National Institute for Standards and Technology (NIST). Firstly, this work demonstrates that the proposed optimal frame selection technique in NIR Iris Videos leads to significant improvement in recognition performance. Secondly, the performance of NIR Iris Still images vs. NIR Iris Videos is compared. Thirdly, we show that interoperability between iris frames and iris images in an iris recognition system affects performance. Finally, the computational time and the elimination of noisy frames at each stage using the proposed method are examined.
在近红外虹膜视频中自动选择最佳帧
虹膜生物识别领域的一个相对较新的趋势是使用视频作为捕获设备。与使用传统的静态图像相比,逐帧方法具有更丰富的信息和更大的灵活性。然而,虹膜的质量、形状和大小可能因帧而异。本文提出了一种选择虹膜视频最佳帧的新技术。利用虹膜帧的时间对应性,我们将虹膜视频分为适当的、运动约束的和时间约束的三类。采用帧平均和相关技术消除闪烁和偏离角度凝视的帧。检测虹膜视频中存在的运动模糊、失焦、平移运动和光照等质量因素,并研究它们对识别性能的影响。实验结果分别在美国国家标准与技术研究院(NIST)的MBGC近红外虹膜视频和MBGC近红外虹膜静止数据集上进行。首先,本工作证明了所提出的最优帧选择技术在近红外虹膜视频中可以显著提高识别性能。其次,比较了近红外虹膜静态图像和近红外虹膜视频图像的性能。第三,我们证明了虹膜识别系统中虹膜帧和虹膜图像之间的互操作性对虹膜识别性能的影响。最后,研究了该方法在每个阶段的计算时间和噪声帧的消除情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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