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Face spoofing detection via ensemble of classifiers toward low-power devices

机译:通过对低功耗器件的分类器的集装器进行欺骗检测

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摘要

Facial biometrics tend to be spontaneous, instinctive and less human intrusive. It is regularly employed in the authentication of authorized users and personnel to protect data from violation attacks. A face spoofing attack usually comprises the illegal attempt to access valuable undisclosed information as a trespasser attempts to impersonate an individual holding desirable authentication clearance. In search of such violations, many investigators have devoted their efforts to studying either visual liveness detection or patterns generated during media recapture as predominant indicators to block spoofing violations. This work contemplates low-power devices through the aggregation of Fourier transforms, different classification methods and handcrafted descriptors to estimate whether face samples correspond to falsification attacks. To the best of our knowledge, the proposed method consists of low computational cost and is one of the few methods associating features derived from both spatial and frequency image domains. We conduct experiments on recent and well-known datasets under same and cross-database settings with artificial neural networks, support vector machines and partial least squares ensembles. Results show that although our methodology is geared for resource-limited single-board computers, it can produce significant results, outperforming state-of-the-art approaches.
机译:面部生物识别技术往往是自发的,本能和较少人的侵扰性。它经常在授权用户和人员身份验证中,以保护数据免受违规攻击的影响。面部欺骗攻击通常包括非法尝试以获得有价值的未公开信息作为侵入者试图冒充个人持有所需认证清除的侵权。为了寻找这种违规行为,许多调查人员致力于研究在媒体recapture期间产生的视觉活泼检测或模式,以阻止欺骗违规行为。这项工作考虑了通过傅里叶变换的聚合,不同的分类方法和手工描述符来估计面部样本对应于伪造攻击的影响的低功率。据我们所知,所提出的方法包括低计算成本,并且是少数几种关联来自空间和频率映像域的方法的方法之一。我们在与人工神经网络相同和交叉数据库设置下的近期和众所周知的数据集进行实验,支持向量机和部分最小二乘合奏。结果表明,尽管我们的方法是为资源限制的单板电脑而导致的,但它可以产生显着的结果,表现优于最先进的方法。

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