Robust Deep Learning Technique: U-Net Architecture for Pupil Segmentation

Swathi Gowroju, Aarti, Sandeep Kumar
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引用次数: 8

Abstract

In many of the iris biometric applications plays a major role in tracking the gaze, detecting fatigue, and predicting the age of a person, etc. that were built for human-computer interaction and security applications such as border control applications or criminal tracking applications. In this paper, we proposed a novel CNN U-Net based model to perform the accurate segmentation of pupil. We experimented on the CASIA database and generated an accuracy of 90% in segmentation. We considered various parameters such as Accuracy, Loss, and Mean Square Error (MSE) to predict the efficiency of the model. The proposed system performed the segmentation of pupil from $512\times 512$ images with MSE of 1.24.
鲁棒深度学习技术:用于瞳孔分割的U-Net架构
在许多虹膜生物识别应用中,在跟踪注视、检测疲劳和预测人的年龄等方面起着重要作用,这些应用是为人机交互和安全应用(如边境控制应用或犯罪跟踪应用)而构建的。本文提出了一种新颖的基于CNN U-Net的瞳孔精确分割模型。我们在CASIA数据库上进行了实验,得到了90%的分割准确率。我们考虑了各种参数,如精度、损失和均方误差(MSE)来预测模型的效率。该系统对$512 × 512$的图像进行瞳孔分割,MSE为1.24。
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