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Face liveness detection: fusing colour texture feature and deep feature

机译:面部活动度检测:融合色彩纹理特征和深层特征

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摘要

The identification which uses biological characteristics has been a current top in the recent past. However, numerous spoofing skills occur with the rising prosperity of advance recognition technology, especially in the detection and recognition of a face. In allusion to the problem above, more robust and accurate face spoofing detection schemes have been put forward. Convolutional neural networks (CNNs) have demonstrated extraordinary success in face liveness detection recently. In this study, an effective face anti-spoofing detection method based on CNN and rotation invariant local binary patterns (RI-LBP) has been proposed. First, the authors use CNN to extract deep features and use RI-LBP to extract colour texture features. In addition, the principal component analysis approach is employed to decrease the dimensions of deep characteristic. Moreover, two different features are fused before applying to support vector machine (SVM). Finally, the SVM classifier is adopted to identify genuine faces from fake faces. They have conducted extensive experiments to obtain a scheme of better generalisation capability for face anti-spoofing detection. The analysis results indicate that the proposed approach implements great generalisation capability over other state-of-the-art approaches within the intra-databases and cross-databases.
机译:利用生物学特性的鉴定是近来的当前热门。但是,随着高级识别技术的兴起,出现了许多欺骗技巧,尤其是在面部的检测和识别中。针对上述问题,提出了更鲁棒和准确的面部欺骗检测方案。卷积神经网络(CNN)最近在面部活动度检测中显示出了非凡的成功。提出了一种基于CNN和旋转不变局部二值模式(RI-LBP)的有效人脸防欺骗检测方法。首先,作者使用CNN提取深层特征,并使用RI-LBP提取颜色纹理特征。另外,采用主成分分析方法来减小深度特征的尺寸。此外,在应用到支持向量机(SVM)之前,融合了两个不同的功能。最后,采用SVM分类器从假脸中识别出真人脸。他们已经进行了广泛的实验,以获得用于面部反欺骗检测的更好的泛化能力的方案。分析结果表明,与内部数据库和跨数据库中的其他现有技术相比,该方法具有更高的泛化能力。

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