Raden Budiarto Hadiprakoso, I. Buana
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引用次数: 1

摘要

基于面部识别的生物特征认证越来越多地被采用。然而,面部识别系统不仅应该识别个人的脸,还应该能够检测使用打印的脸或数码照片进行欺骗的企图。现在有各种检测欺骗的方法,包括眨眼、嘴唇运动和头部倾斜检测。然而,这种方法在处理动态视频欺骗攻击时有局限性。另一方面,这些类型的运动检测系统会降低用户的舒适度。因此,本文提出了一种通过卷积神经网络识别面部欺骗攻击的方法。反欺骗技术旨在与深度学习模型结合使用,而无需使用额外的工具或设备。我们的CNN分类数据集来源于NUAA照片冒名顶替者和CASIA v2。该系列包含了许多面部恶搞的例子,包括用海报、面具和智能手机制作的面部恶搞。在预处理阶段,通过亮度调整和其他滤波器对图像进行增强,使模型能够适应各种环境条件。我们在测试过程中评估epoch的数量、优化器类型和学习率。测试结果表明,该模型的准确率为91.23%,F1分数为92.01%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deteksi Serangan Spoofing Wajah Menggunakan Convolutional Neural Network
Facial recognition-based biometric authentication is increasingly frequently employed. However, a facial recognition system should not only recognize an individual's face, but it should also be capable of detecting spoofing attempts using printed faces or digital photographs. There are now various methods for detecting spoofing, including blinking, lip movement, and head tilt detection. However, this approach has limitations when dealing with dynamic video spoofing assaults. On the other hand, these types of motion detection systems can diminish user comfort. As a result, this article presents a method for identifying facial spoofing attacks through Convolutional Neural Networks. The anti-spoofing technique is intended to be used in conjunction with deep learning models without using extra tools or equipment. Our CNN classification dataset can be derived from the NUAA photo imposter and CASIA v2. The collection contains numerous examples of facial spoofing, including those created with posters, masks, and smartphones. In the pre-processing stage, image augmentation is carried out with brightness adjustments and other filters so that the model to adapt to various environmental conditions. We evaluate the number of epochs, optimizer types, and the learning rate during the testing process. The test results show that the proposed model achieves an accuracy value of 91.23% and an F1 score of 92.01%.
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