U-Net convolutional neural network for multisource heterogeneous iris segmentation

V. D'Alessandro, Luisa De Palma, F. Attivissimo, A. Nisio, A. Lanzolla
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引用次数: 1

Abstract

Accurate iris segmentation is a critical step in various applications, from biometric identification systems to ophthalmic disease diagnosis. Despite the large number of works that address this problem, iris segmentation of heterogeneous iris images acquired in different conditions is still a huge challenge. This work employed a modified U-net convolutional neural network architecture to segment iris region from heterogeneous eye images. The network was trained using the TEyeD dataset, the world’s largest heterogeneous publicly available dataset of eye images.The proposed method utilizes the U-Net architecture, known for its effectiveness in handling complex image segmentation tasks. The architecture is modified to accomplish the specific task. The experimental results show that the proposed approach achieves an IOU score of 95%, demonstrating promising results in terms of segmentation accuracy and computational efficiency. This performance is competitive or even better than the existing state-of-the-art techniques in iris segmentation, considering that in most cases the dataset used to train the network is not heterogeneous as the TEyeD dataset.Indeed, the study highlights the potential of deep learning techniques in improving the accuracy of iris segmentation, and the TEyeD dataset, which is a heterogeneous dataset in terms of acquisition devices employed and image quality, provides an excellent opportunity for researchers to further explore this topic. The findings of this research could have significant implications for various fields, including biometric identification systems, driver safety, and ophthalmology.
基于U-Net卷积神经网络的多源异构虹膜分割
准确的虹膜分割是各种应用的关键步骤,从生物识别系统到眼科疾病诊断。尽管有大量的工作解决了这个问题,但在不同条件下获取的异质虹膜图像的虹膜分割仍然是一个巨大的挑战。本文采用一种改进的U-net卷积神经网络架构从异构眼图像中分割虹膜区域。该网络使用TEyeD数据集进行训练,该数据集是世界上最大的异构公开眼睛图像数据集。该方法利用U-Net架构,以其处理复杂图像分割任务的有效性而闻名。架构被修改以完成特定的任务。实验结果表明,该方法的IOU分数达到95%,在分割精度和计算效率方面取得了良好的效果。考虑到在大多数情况下用于训练网络的数据集不像TEyeD数据集那样异构,这种性能与现有的最先进的虹膜分割技术具有竞争力,甚至更好。事实上,该研究强调了深度学习技术在提高虹膜分割准确性方面的潜力,而TEyeD数据集在使用的采集设备和图像质量方面是一个异构数据集,为研究人员进一步探索这一主题提供了一个极好的机会。这项研究的发现可能会对包括生物识别系统、驾驶安全、眼科在内的各个领域产生重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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