基于高效网的U-Net瞳孔定位虹膜生物识别方法

Cheng-Shun Hsiao, Chih-Peng Fan
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引用次数: 4

摘要

本文研究了基于深度学习瞳孔定位的虹膜识别方法。首先,利用U-Net技术,利用语义分割方案定位和提取瞳孔区域的感兴趣区域(ROI);基于人眼图像中瞳孔区域的ROI定位,可以有效地提取虹膜区域,并将输入的人眼图像切割成具有刚刚调整过的虹膜ROI的小眼睛图像。然后通过自适应直方图均衡化或Gabor滤波处理选择性地增强裁剪后眼睛图像的虹膜特征。最后,利用effentnet对具有重要虹膜区域的人眼图像进行分类。利用CASIA v3数据库,提出的基于深度学习的虹膜识别方案的识别准确率高达98.2%,设计的等错误率(EER)接近于0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EfficientNet Based Iris Biometric Recognition Methods with Pupil Positioning by U-Net
In this work, the deep-learning pupil location based iris recognition methods are studied for biometric authentication. First, by using U-Net, the developed design utilizes the semantic segmentation scheme to locate and extract the region of interest (ROI) of the pupil zone. Based on the located ROI of the pupil zone in the eye image, the iris region can be extracted effectively, and the entered eye image is cut to the small eye image with the ROI of the iris that has just been adjusted. Then the iris features of the cropped eye image are optionally enhanced by adaptive histogram equalization or the Gabor filter process. Finally, the cropped eye image with important iris region is classified by EfficientNet. By using the CASIA v3 database, the proposed deep learning based iris recognition scheme achieves recognition accuracies of up to 98.2%, and the Equal Error Rate (EER) of the proposed design can be close to near 0%.
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