A discriminative spatio-temporal mapping of face for liveness detection

Nagashri N. Lakshminarayana, N. Narayan, N. Napp, S. Setlur, V. Govindaraju
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引用次数: 25

Abstract

The proposed system aims to boost the performance of a face anti-spoofing system by fusing pulse based features with other spatial and temporal information that markedly define liveness. Most face recognition systems do not have an effective spoof detection module and hence are vulnerable to spoofing attacks. We address the above problem by developing a spatio-temporal mapping of face and then using a deep Convolutional Neural Network (CNN) to learn discriminative features for liveness detection. CNNs can act directly on the raw inputs, thus automating the process of feature construction. Instead of only relying on the deep CNN to learn features by skimming through all the frames of a sequence, a compact representation of face that captures only the selective features is given as an input. Features are extracted from both spatial and temporal dimensions through spectral analysis, thereby capturing the motion and physiological information encoded in multiple adjacent frames. The developed model generates multiple channels of information from the input frames, and the final feature representation is obtained by combining information from all channels. Our model differs from other models in this aspect. Our system is evaluated on two challenging databases, CASIA [27] and Replay-Attack [7], and the achieved results are presented in this paper. This work shows that the proposed model outperforms state-of-the-art methods on CASIA, achieves comparable result on REPLAY-ATTACK and reduces model complexity by exploiting few key features of liveness.
一种用于活体检测的人脸判别时空映射
该系统旨在通过融合脉冲特征与其他空间和时间信息来提高人脸抗欺骗系统的性能。大多数人脸识别系统没有有效的欺骗检测模块,因此容易受到欺骗攻击。我们通过开发人脸的时空映射,然后使用深度卷积神经网络(CNN)学习判别特征以进行活体检测来解决上述问题。cnn可以直接作用于原始输入,从而使特征构建过程自动化。而不是仅仅依靠深度CNN通过浏览序列的所有帧来学习特征,而是提供一个紧凑的面部表示,仅捕获选择性特征作为输入。通过频谱分析从空间和时间维度提取特征,从而捕获编码在多个相邻帧中的运动和生理信息。该模型从输入帧中生成多通道信息,并将各通道信息组合得到最终的特征表示。我们的模型在这方面与其他模型不同。我们的系统在CASIA[27]和Replay-Attack[7]两个具有挑战性的数据库上进行了评估,并在本文中给出了取得的结果。这项工作表明,所提出的模型在CASIA上优于最先进的方法,在REPLAY-ATTACK上取得了相当的结果,并且通过利用活体的几个关键特征降低了模型的复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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