Iris segmentation using deep neural networks

Nirmitee Sinha, Akanksha Joshi, A. Gangwar, A. Bhise, Zia U H. Saquib
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引用次数: 5

Abstract

Iris recognition is very difficult to perform as it requires an environment that is highly controlled for better image acquisition. As compared to other biometric technologies, iris recognition is prone to poor image quality. Specially, images captured from a distance introduce noises such as blur, off axis, specular reflections and occlusions. For proper recognition good quality of captured image is mandatory and hence sometimes denoising is required. The approach discussed in the paper uses deep neural network for eliminating the unwanted patches affecting the performance of iris recognition systems. The proposed model uses upsampled indices at the decoder stage which is memory efficient. The experimental analysis is performed using Ubiris V.2 database.
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基于深度神经网络的虹膜分割
虹膜识别是非常困难的,因为它需要一个高度控制的环境来更好地获取图像。与其他生物识别技术相比,虹膜识别容易出现图像质量差的问题。特别是,从远处拍摄的图像会引入诸如模糊、离轴、镜面反射和遮挡等噪声。为了进行正确的识别,捕获的图像必须具有良好的质量,因此有时需要去噪。本文讨论的方法使用深度神经网络来消除影响虹膜识别系统性能的无用补丁。该模型在解码器阶段使用上采样索引,提高了存储效率。实验分析使用Ubiris V.2数据库进行。
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