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IRIS RECOGNITION UNDER UNCONSTRAINED CONDITIONS

机译:不受约束条件下的虹膜识别

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摘要

This paper studies the iris recognition under unconstrained conditions. In these circumstances iris recognition becomes challenging because of noisy factors such as the off-axis imaging, pose variation, image blurring, illumination change, occlusion, specular highlights and noise. A robust algorithm for localization of non-circular iris boundaries is proposed. It can localize the iris boundaries more accurately than the methods based on the Daugman algorithm. Operating on the filtered iris images, this method determines the outer iris boundaries. First we implemented Canny algorithm for edge detection in the segmented image. Then we ran the edge link algorithm on the edge map, achieving edge lists of connected edge points and selecting the longest one that has maximum number of points for outer iris boundary localization. Finally, we investigated how to extract highly distinctive features in the degraded iris images. We present a sequential forward selection method for seeking a sub-optimal subset of filters from a family of Gabor filters. The recognition performance is greatly improved with a very small number of filters selected. Experiments were conducted on the UBIRIS.v2 iris database and promising results were obtained.
机译:本文研究了无约束条件下的虹膜识别。在这些情况下,由于诸如离轴成像,姿势变化,图像模糊,照明变化,遮挡,镜面高光和噪声之类的嘈杂因素,虹膜识别变得具有挑战性。提出了一种鲁棒的非圆形虹膜边界定位算法。与基于Daugman算法的方法相比,它可以更准确地定位虹膜边界。通过对过滤后的虹膜图像进行操作,此方法可以确定外部虹膜边界。首先,我们实现了Canny算法,用于分割图像的边缘检测。然后我们在边缘图上运行边缘链接算法,获得连接的边缘点的边缘列表,并选择最长的,具有最大点数的边缘点用于外部虹膜边界定位。最后,我们研究了如何在退化的虹膜图像中提取高度鲜明的特征。我们提出了一种顺序前向选择方法,用于从Gabor滤波器族中寻找滤波器的次优子集。只需选择很少的过滤器,识别性能就会大大提高。在UBIRIS.v2虹膜数据库上进行了实验,并获得了可喜的结果。

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