Semantic Segmentation of Iris using U-Net in Deep Learning

D. A. Reddy, Deepak Yadav, Nishi Yadav, Devendra Kumar Singh
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Abstract

In the field of medicine, iris segmentation has become a great field of interest from the past few years. Iris segmentation is also largely used in iris recognition systems [3] which are extensively used in security control [1][2]. Here iris segmentation is done using semantic segmentation which is based on the U-Net architecture. The typical U-net architecture contains two pathscontracting path containing convolutional and pooling layers and the expanding path consists of transposed convolutional operations. The UBIRIS dataset is trained on the traditional UNet model with some modifications according to the size of the images present in the UBIRIS dataset. The results obtained were very close to the ground truths and accuracy obtained is also appreciable.
深度学习中基于U-Net的虹膜语义分割
在医学领域,虹膜分割是近年来备受关注的一个领域。虹膜分割也大量应用于虹膜识别系统[3],虹膜识别系统广泛应用于安全控制[1][2]。虹膜分割采用基于U-Net架构的语义分割。典型的U-net架构包含两条路径:收缩路径包含卷积层和池化层,扩展路径包含转置卷积操作。UBIRIS数据集是在传统的UNet模型上进行训练,并根据UBIRIS数据集中图像的大小进行一些修改。所得结果非常接近实际情况,所得精度也相当可观。
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