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Automated segmentation of iris images acquired in an unconstrained environment using HOG-SVM and GrowCut

机译:使用HOG-SVM和CAMCUT在不受约束环境中获取的IRIS图像的自动分割

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Iris recognition systems have demonstrated considerable improvement in recognizing people through their iris patterns. Recent iris recognition systems have focused on images acquired in unconstrained environments. Unconstrained imaging environments allow the capture of iris images at a distance, in motion and under visible wavelength illumination which lead to more noise factors such as off focus, gaze deviation, and obstruction by eyelids, eyeglasses, hair, lighting and specular reflections. Segmenting irises taken in an unconstrained environment remains a challenging task for iris recognition. In this paper, a new iris segmentation method is developed and tested on UBIRIS.v2 and MICHE iris databases that reflect the challenges in recognition by unconstrained images. This method accurately localizes the iris by a model designed on the basis of the Histograms of Oriented Gradients (HOG) descriptor and Support Vector Machine (SVM), namely HOG-SVM. Based on this localization, iris texture is automatically extracted by means of a cellular automata which evolved via the GrowCut technique. Pre and post-processing operations are also introduced to ensure higher segmentation accuracy. Extensive experimental results illustrate the effectiveness of the proposed method on unconstrained iris images. (C) 2017 Elsevier Inc. All rights reserved.
机译:虹膜识别系统表现出通过虹膜模式认识人们的相当大。最近的IRIS识别系统专注于在不受约束环境中获得的图像。不受约束的成像环境允许在距离,运动和可见波长照明下捕获虹膜图像,这导致眼睑,眼镜,毛发,照明和镜面反射等噪声因子,例如关闭焦点,凝视偏差和障碍物。在不受约束环境中采取的分割虹膜仍然是虹膜认可的具有挑战性的任务。在本文中,在Ubiris.v2和Miche Iris数据库上开发和测试了一种新的IRIS分段方法,这些方法反映了通过无约束图像识别的挑战。该方法通过基于面向梯度(HOG)描述符(SVM)的直方图设计的模型来精确定位IRIS,并支持向量机(SVM),即HOG-SVM。基于该本地化,虹膜纹理通过通过凸实技术演变而来的蜂窝自动机自动提取。还引入了预处理操作以确保更高的分割精度。广泛的实验结果说明了所提出的方法对不受约束的虹膜图像的有效性。 (c)2017年Elsevier Inc.保留所有权利。

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