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A robust preprocessing algorithm for iris segmentation from low contrast eye images

机译:低对比度眼图像的虹膜分割鲁棒预处理算法

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Iris recognition systems offer highly accurate personal identification both on small and very-large scale systems needed in government, forensic and commercial applications. The automatic segmentation of a noise-free iris region is imperative for optimal performance of the system. However, image characteristics such as brightness and contrast, the differing levels of pigmentation, occlusion by eyelashes and/or eyelids, coupled with varying sensor and environmental conditions, makes iris segmentation a huge and difficult task. This paper proposes an image pre-processing algorithm for robust iris segmentation of low contrast images, aimed at reducing mis-localization errors of basic curve-fitting algorithms. Similar to face detection, the algorithm performs iris detection with a k-NN classifier trained with features extracted by a rotation-invariant texture descriptor based on the co-occurrence of local binary patterns. The integration of the proposed algorithm into an existing open-source iris segmentation module offered a 40% improvement in execution time; a segmentation accuracy of 92% was also recorded over 1,898 low contrast eye images acquired from African subjects. The low contrast eye images were acquired to support diversity in iris recognition.
机译:虹膜识别系统在政府,法医和商业应用中所需的小型和非常大规模的系统上提供高度准确的个人识别。无噪声虹膜区域的自动分割对于系统的最佳性能是必不可少的。然而,诸如亮度和对比度的图像特征,颜色沉着的不同水平,睫毛和/或眼睑闭塞,与不同的传感器和环境条件相结合,使虹膜分割成为一个巨大和艰巨的任务。本文提出了一种用于低对比度图像的鲁棒虹膜分割的图像预处理算法,旨在减少基本曲线拟合算法的错误定位误差。类似于面部检测,该算法利用由旋转不变纹理描述符提取的特征来执行虹膜检测,其基于局部二进制模式的共同发生。所提出的算法集成到现有的开源IRIS分段模块中的执行时间提高了40%;分割精度为92%,还记录了非洲受试者获得的1,898个低对比度眼图像。获取低对比度眼图像以支持虹膜识别的多样性。

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