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Face spoofing detection based on color texture Markov feature and support vector machine recursive feature elimination

机译:基于颜色纹理马尔可夫特征和支持向量机递归特征消除的人脸欺骗检测

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摘要

Aiming to counterstrike face spoofing attacks such as photo attacks and video attacks, a face spoofing detection scheme based on color texture Markov feature (CTMF) and support vector machine recursive feature elimination (SVM-RFE) is proposed. In this paper, the adjacent facial pixels discrepancy between the real and the fake face is analyzed, and texture information between the color channels is fully considered. Firstly, the directional difference filter is used to capture the facial texture difference between the real and the fake face, which can be regarded as low-level features of CTMF. Then, the facial texture difference is modeled by the Markov process to form a high-level representation of the low-level features. Meanwhile, the mutual information of facial texture between the color channels, which is ignored in the previous literature, is investigated. In addition, SVM-RFE is utilized to reduce the feature dimension and makes it suitable for real-time detection. Experiments on four public benchmark databases indicate that the proposed scheme can effectively resist photo and video spoofing attacks in face recognition.
机译:针对照片攻击,视频攻击等人脸欺骗攻击,提出了一种基于颜色纹理马尔可夫特征(CTMF)和支持向量机递归特征消除(SVM-RFE)的人脸欺骗检测方案。本文分析了真实面部与假面部之间相邻的面部像素差异,并充分考虑了色彩通道之间的纹理信息。首先,使用方向差过滤器捕获真实和假脸之间的面部纹理差异,这可以看作是CTMF的低级特征。然后,通过马尔可夫过程对面部纹理差异建模,以形成低级特征的高级表示。同时,研究了先前文献中忽略的颜色通道之间的面部纹理的相互信息。另外,利用SVM-RFE可以减小特征尺寸,使其适合于实时检测。在四个公共基准数据库上进行的实验表明,该方案可以有效抵抗人脸识别中的照片和视频欺骗攻击。

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