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Face liveness detection by learning multispectral reflectance distributions

机译:通过学习多光谱反射率分布来检测人脸活动度

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Existing face liveness detection algorithms adopt behavioural challenge-response methods that require user cooperation. To be verified live, users are expected to obey some user unfriendly requirement. In this paper, we present a multispectral face liveness detection method, which is user cooperation free. Moreover, the system is adaptive to various user-system distances. Using the Lambertian model, we analyze multispectral properties of human skin versus non-skin, and the discriminative wavelengths are then chosen. Reflectance data of genuine and fake faces at multi-distances are selected to form a training set. An SVM classifier is trained to learn the multispectral distribution for a final Genuine-or-Fake classification. Compared with previous works, the proposed method has the following advantages: (a) The requirement on the users' cooperation is no longer needed, making the liveness detection user friendly and fast. (b) The system can work without restricted distance requirement from the target being analyzed. Experiments are conducted on genuine versus planar face data, and genuine versus mask face data. Furthermore a comparison with the visible challenge-response liveness detection method is also given. The experimental results clearly demonstrate the superiority of our method over previous systems.
机译:现有的面部活动度检测算法采用需要用户合作的行为挑战-响应方法。要进行实时验证,用户应遵守一些用户不友好的要求。在本文中,我们提出了一种多光谱人脸活动度检测方法,该方法无需用户合作。而且,该系统适应于各种用户系统距离。使用朗伯模型,我们分析了人类皮肤与非皮肤的多光谱特性,然后选择了判别波长。选择真伪面部在多距离处的反射率数据以形成训练集。对SVM分类器进行了培训,以学习多光谱分布,以进行最终的货真价实或假货分类。与以前的工作相比,该方法具有以下优点:(a)不再需要用户合作的要求,使得活度检测的用户友好和快速。 (b)该系统可以在不受分析目标距离限制的情况下工作。实验是针对真实与平面人脸数据以及真实与面具人脸数据进行的。此外,还给出了与可见质询-响应活力检测方法的比较。实验结果清楚地证明了我们的方法优于以前的系统。

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