基于图像质量回归的人脸欺骗检测

Haoliang Li, Shiqi Wang, A. Kot
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引用次数: 23

摘要

人脸欺骗检测是当今生物识别认证领域中备受关注的问题。鉴于人脸欺骗检测与图像的固有质量高度相关,而图像的固有质量又强烈依赖于捕获设备和条件的特性,本文采用两阶段学习方法来解决欺骗检测问题。首先,我们基于人脸样本质量(如相机模型)的先验知识对训练样本进行人工聚类,并在每个聚类的基础上利用提取的图像质量评估(IQA)特征训练多个质量引导分类器。然后,将IQA分数映射到相应的分类器参数,学习一个回归函数,进一步用于分类。因此,给定一个新的人脸输入进行验证,我们可以基于预学习回归模型预测其分类器的系数,从而有效地实现欺骗检测。实验结果表明,与直接将IQA特征应用于单个分类器的策略相比,我们取得了明显更好的分类性能。
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 with image quality regression
Face spoofing detection nowadays has attracted attentions regarding the biometrics authentication issue. Inspired by the observation that face spoofing detection is highly relevant with the inherent image quality which also strongly depends on the properties of the capturing devices and conditions, in this paper, we tackle the spoofing detection problem based on a two-stage learning approach. Firstly, we manually cluster the training samples based on the prior knowledge of face sample quality (e.g. camera model), and multiple quality-guided classifiers are trained based on each cluster with extracted image quality assessment (IQA) feature. Subsequently, a regression function is learned by mapping from the IQA scores to the corresponding classifier's parameters, which can be further used for classification. As such, given a new face input for verification, we can predict its classifier's coefficients based on the pre-learned regression model, with which spoofing detection can be effectively achieved. Experimental results show that we achieve significantly better classification performance compared with the strategy that directly applies the IQA features with single classifier.
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