Improving Face Anti-Spoofing by 3D Virtual Synthesis

Jianzhu Guo, Xiangyu Zhu, Jinchuan Xiao, Zhen Lei, Genxun Wan, S. Li
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引用次数: 25

Abstract

Face anti-spoofing is crucial for the security of face recognition systems. Learning based methods especially deep learning based methods need large-scale training samples to reduce overfitting. However, acquiring spoof data is very expensive since the live faces should be reprinted and re-captured in many views. In this paper, we present a method to synthesize virtual spoof data in 3D space to alleviate this problem. Specifically, we consider a printed photo as a flat surface and mesh it into a 3D object, which is then randomly bent and rotated in 3D space. Afterward, the transformed 3D photo is rendered through perspective projection as a virtual sample. The synthetic virtual samples can significantly boost the anti-spoofing performance when combined with a proposed data balancing strategy. Our promising results open up new possibilities for advancing face anti-spoofing using cheap and large-scale synthetic data.
三维虚拟合成提高人脸抗欺骗性能
人脸防欺骗是人脸识别系统安全的关键。基于学习的方法特别是基于深度学习的方法需要大规模的训练样本来减少过拟合。然而,获取伪造数据是非常昂贵的,因为需要在许多视图中重新打印和重新捕获实时面。本文提出了一种在三维空间中合成虚拟欺骗数据的方法来缓解这一问题。具体来说,我们将打印的照片视为平面,并将其网格化成3D对象,然后在3D空间中随机弯曲和旋转。然后,通过透视投影将变换后的三维照片作为虚拟样本进行渲染。当与所提出的数据均衡策略相结合时,合成虚拟样本可以显著提高系统的抗欺骗性能。我们有希望的结果为使用廉价和大规模合成数据推进人脸反欺骗开辟了新的可能性。
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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