基于RGB模态和深度模态的Inception-v3人脸欺骗检测

Yuni Arti, A. M. Arymurthy
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引用次数: 1

摘要

人脸欺骗可以在人脸识别系统中提供不准确的人脸验证结果。深度学习已被广泛用于解决人脸欺骗问题。在人脸欺骗检测中,不需要使用整个网络层来表示真实特征和欺骗特征的区别。本研究通过切断Inception-v3网络并利用RGB模态、深度和融合方法检测人脸欺骗。结果表明,在RGB模型和融合模型下,人脸欺骗检测具有良好的性能。两种模型都比深度模型性能更好,因为RGB模态可以表示真实特征和欺骗特征的差异,并且RGB模态在融合模型中占主导地位。RGB模型的准确率、精密度、召回率、f1得分和AUC值分别为98.78%、99.22%、99.31.2%、99.27%和0.9997,融合模型的准确率为98.5%、99.31%、98.88%。分别为99.09%和0.9995。使用MSU MFSD基准数据集,我们提出的将Inception-v3网络切割为mixed6的方法成功地优于先前的研究,准确率高达100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Spoofing Detection using Inception-v3 on RGB Modal and Depth Modal
Face spoofing can provide inaccurate face verification results in the face recognition system. Deep learning has been widely used to solve face spoofing problems. In face spoofing detection, it is unnecessary to use the entire network layer to represent the difference between real and spoof features. This study detects face spoofing by cutting the Inception-v3 network and utilizing RGB modal, depth, and fusion approaches. The results showed that face spoofing detection has a good performance on the RGB and fusion models. Both models have better performance than the depth model because RGB modal can represent the difference between real and spoof features, and RGB modal dominate the fusion model. The RGB model has accuracy, precision, recall, F1-score, and AUC values obtained respectively 98.78%, 99.22%, 99.31.2%, 99.27%, and 0.9997 while the fusion model is 98.5%, 99.31%, 98.88%. 99.09%, and 0.9995, respectively. Our proposed method with cutting the Inception-v3 network to mixed6 successfully outperforms the previous study with accuracy up to 100% using the MSU MFSD benchmark dataset.
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