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A novel eyelid detection method for iris segmentation

机译:一种虹膜分割的新型眼睑检测方法

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The proper segmentation of the iris image determines the iris recognition accurate to a great extent. Most of the iris images are covered by upper or lower eyelids, thus it is essential to detect the eyelid boundary for improving the iris recognition accuracy furthermore. An eyelid detection method based on maximal connection path is presented in this paper. After the preprocessing of the iris image, the horizontal segmentation operator and image binarization are used to extract the eyelid edge information. The eyelids span the whole image in horizontal direction and the average of vertical gradients is larger in the area with eyelid boundary, therefore, the horizontal distance of the connection area with eyelid boundary should be the longest one in the edge image. In use of this feature, the candidate edge points of eyelid boundary are detected. Eventually, the eyelid boundaries are modeled with the parabola curves. The algorithm performance is tested in CASIA Iris Database, and experiment results show that about 0.117 second at speed and 88.9% at precision are reached for the upper eyelid detection, and about 0.078 second at speed and 98.5% at precision for the lower eyelid detection. In comparison with Daugman's method, this algorithm enhances the detection speed largely and shows good accuracy.
机译:虹膜图像的正确分割在很大程度上决定了虹膜识别的准确性。虹膜图像大部分被上下眼睑覆盖,因此检测眼睑边界对于进一步提高虹膜识别精度至关重要。提出了一种基于最大连接路径的眼睑检测方法。在虹膜图像的预处理之后,使用水平分割算子和图像二值化来提取眼睑边缘信息。眼睑在水平方向上跨越整个图像,并且在具有眼睑边界的区域中垂直梯度的平均值较大,因此,具有眼睑边界的连接区域的水平距离应该是边缘图像中最长的。在使用此功能时,将检测眼睑边界的候选边缘点。最终,用抛物线曲线对眼睑边界进行建模。算法性能在CASIA Iris数据库中进行了测试,实验结果表明,上眼睑检测的速度约为0.117秒,精度为88.9%,下眼睑检测的速度约为0.078秒,精度为98.5%。与Daugman方法相比,该算法大大提高了检测速度,并显示出良好的准确性。

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