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Combining Deep and Handcrafted Image Features for Presentation Attack Detection in Face Recognition Systems Using Visible-Light Camera Sensors

机译:结合深度图像和手工图像特征以使用可见光摄像头传感器检测人脸识别系统中的演示攻击

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摘要

Although face recognition systems have wide application, they are vulnerable to presentation attack samples (fake samples). Therefore, a presentation attack detection (PAD) method is required to enhance the security level of face recognition systems. Most of the previously proposed PAD methods for face recognition systems have focused on using handcrafted image features, which are designed by expert knowledge of designers, such as Gabor filter, local binary pattern (LBP), local ternary pattern (LTP), and histogram of oriented gradients (HOG). As a result, the extracted features reflect limited aspects of the problem, yielding a detection accuracy that is low and varies with the characteristics of presentation attack face images. The deep learning method has been developed in the computer vision research community, which is proven to be suitable for automatically training a feature extractor that can be used to enhance the ability of handcrafted features. To overcome the limitations of previously proposed PAD methods, we propose a new PAD method that uses a combination of deep and handcrafted features extracted from the images by visible-light camera sensor. Our proposed method uses the convolutional neural network (CNN) method to extract deep image features and the multi-level local binary pattern (MLBP) method to extract skin detail features from face images to discriminate the real and presentation attack face images. By combining the two types of image features, we form a new type of image features, called hybrid features, which has stronger discrimination ability than single image features. Finally, we use the support vector machine (SVM) method to classify the image features into real or presentation attack class. Our experimental results indicate that our proposed method outperforms previous PAD methods by yielding the smallest error rates on the same image databases.
机译:尽管人脸识别系统具有广泛的应用,但它们很容易受到演示攻击样本(假样本)的攻击。因此,需要一种呈现攻击检测(PAD)方法来提高人脸识别系统的安全性。先前提出的用于面部识别系统的大多数PAD方法都集中在使用手工图像特征上,这些特征是由设计师的专业知识设计的,例如Gabor滤波器,局部二值模式(LBP),局部三元模式(LTP)和直方图。定向梯度(HOG)。结果,所提取的特征反映了问题的有限方面,产生了低的检测精度,并且随着呈现攻击面部图像的特性而变化。深度学习方法已在计算机视觉研究社区中开发出来,被证明适合于自动训练特征提取器,该提取器可用于增强手工特征的功能。为了克服以前提出的PAD方法的局限性,我们提出了一种新的PAD方法,该方法结合了可见光相机传感器从图像中提取的深度特征和手工特征。我们提出的方法使用卷积神经网络(CNN)方法提取深层图像特征,并使用多级局部二进制模式(MLBP)方法从面部图像中提取皮肤细节特征,以区分真实的和呈现的攻击面部图像。通过组合两种类型的图像特征,我们形成了一种新型的图像特征,称为混合特征,它比单个图像特征具有更强的辨别能力。最后,我们使用支持向量机(SVM)方法将图像特征分类为真实或表现攻击类。我们的实验结果表明,我们提出的方法在相同的图像数据库上产生最小的错误率,优于以前的PAD方法。

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