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CNN-based gender classification in near-infrared periocular images

机译:近红外眼周图像中基于CNN的性别分类

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摘要

Periocular region has emerged as a key biometric trait with potential applications in the forensics domain. In this paper, we explore two convolutional neural network (CNN)-based approaches for gender classification using near-infrared images of the periocular region. In the first stage, our approaches automatically detect and extract left and right periocular regions. The first approach utilizes a domain-specific pre-trained CNN to extract deep features from the periocular images. A trained support vector machine (SVM) then utilizes these features to predict the gender information. The second approach employs an end-to-end classifier obtained by fine-tuning a pre-trained CNN on the periocular images. Performance evaluations have been carried out on three databases, which includes an in-house and two public databases. Local binary pattern and histogram of oriented gradient-based methods have been used as baseline methods to ascertain the effectiveness of the proposed approaches. Our results indicate that the proposed approaches achieve higher classification accuracy than the baseline methods, particularly on one of the public databases that contains a large number of non-ideal images. In addition, accuracy of the proposed approaches is consistently higher than the existing eyebrow feature-based method.
机译:眼周区域已成为一种重要的生物特征,在法医学领域具有潜在的应用前景。在本文中,我们使用眼周区域的近红外图像探索了两种基于卷积神经网络(CNN)的性别分类方法。在第一阶段,我们的方法会自动检测并提取左右眼周区域。第一种方法利用特定于域的预训练CNN从眼周图像提取深层特征。然后,训练有素的支持向量机(SVM)利用这些功能来预测性别信息。第二种方法采用了通过对眼周图像上的预训练CNN进行微调而获得的端到端分类器。对三个数据库进行了绩效评估,其中包括一个内部数据库和两个公共数据库。基于定向梯度的方​​法的局部二进制模式和直方图已用作基线方法,以确定所提出方法的有效性。我们的结果表明,所提出的方法比基线方法具有更高的分类精度,尤其是在包含大量非理想图像的公共数据库之一上。另外,所提出的方法的准确性始终高于现有的基于眉毛特征的方法。

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