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Deep Residual CNN-Based Ocular Recognition Based on Rough Pupil Detection in the Images by NIR Camera Sensor

机译:基于粗糙瞳孔检测的近红外CNN视觉识别的近红外相机传感器

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摘要

Accurate segmentation of the iris area in input images has a significant effect on the accuracy of iris recognition and is a very important preprocessing step in the overall iris recognition process. In previous studies on iris recognition, however, the accuracy of iris segmentation was reduced when the images of captured irises were of low quality due to problems such as optical and motion blurring, thick eyelashes, and light reflected from eyeglasses. Deep learning-based iris segmentation has been proposed to improve accuracy, but its disadvantage is that it requires a long processing time. To resolve this problem, this study proposes a new method that quickly finds a rough iris box area without accurately segmenting the iris region in the input images and performs ocular recognition based on this. To address this problem of reduced accuracy, the recognition is performed using the ocular area, which is a little larger than the iris area, and a deep residual network (ResNet) is used to resolve the problem of reduced recognition rates due to misalignment between the enrolled and recognition iris images. Experiments were performed using three databases: Institute of Automation Chinese Academy of Sciences (CASIA)-Iris-Distance, CASIA-Iris-Lamp, and CASIA-Iris-Thousand. They confirmed that the method proposed in this study had a higher recognition accuracy than existing methods.
机译:输入图像中虹膜区域的正确分割对虹膜识别的准确性有重要影响,并且是整个虹膜识别过程中非常重要的预处理步骤。然而,在先前的虹膜识别研究中,由于诸如光学和运动模糊,浓密的睫毛和眼镜反射的光之类的问题,当捕获的虹膜图像质量较低时,虹膜分割的准确性会降低。已经提出了基于深度学习的虹膜分割以提高准确性,但是其缺点是需要较长的处理时间。为了解决这个问题,本研究提出了一种新方法,该方法可以快速找到粗糙的虹膜盒区域,而无需准确地分割输入图像中的虹膜区域,并以此为基础进行眼部识别。为了解决精度降低的问题,使用比虹膜区域稍大的眼区域进行识别,并使用深残留网络(ResNet)解决由于眼球之间的未对准而导致识别率降低的问题。注册并识别虹膜图像。使用三个数据库进行了实验:中国科学院自动化研究所(CASIA)-虹膜距离,CASIA-虹膜灯和CASIA-虹膜-千。他们证实,本研究中提出的方法比现有方法具有更高的识别准确性。

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