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End-to-End Iris Segmentation Using U-Net

机译:使用U-Net进行端到端虹膜分割

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摘要

Iris segmentation is an important research topic that received significant attention from the research community over the years. Traditional iris segmentation techniques have typically been focused on hand-crafted procedures that, nonetheless, achieved remarkable segmentation performance even with images captured in difficult settings. With the success of deep-learning models, researchers are increasingly looking towards convolutional neural networks (CNNs) to further improve on the accuracy of existing iris segmentation techniques and several CNN-based techniques have already been presented recently in the literature. In this paper we also consider deep-learning models for iris segmentation and present an iris segmentation approach based on the popular U-Net architecture. Our model is trainable end-to-end and, hence, avoids the need for hand designing the segmentation procedure. We evaluate the model on the CASIA dataset and report encouraging results in comparison to existing techniques used in this area.
机译:虹膜分割是一个重要的研究课题,多年来受到研究界的广泛关注。传统的虹膜分割技术通常集中于手工制作的程序,尽管如此,即使在困难的环境下拍摄的图像,该程序仍可实现出色的分割性能。随着深度学习模型的成功,研究人员越来越期待卷积神经网络(CNN)来进一步提高现有虹膜分割技术的准确性,并且最近在文献中已经提出了几种基于CNN的技术。在本文中,我们还考虑了用于虹膜分割的深度学习模型,并提出了基于流行的U-Net架构的虹膜分割方法。我们的模型是端到端可训练的,因此避免了手动设计细分过程的需要。我们在CASIA数据集上评估了该模型,并报告了与该领域中使用的现有技术相比令人鼓舞的结果。

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