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首页> 外文期刊>IEICE transactions on information and systems >Discrimination between Genuine and Cloned Gait Silhouette Videos via Autoencoder-Based Training Data Generation
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Discrimination between Genuine and Cloned Gait Silhouette Videos via Autoencoder-Based Training Data Generation

机译:通过基于自动编码器的训练数据生成来区分真实步态和克隆步态剪影视频

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Spoofing attacks are one of the biggest concerns for most biometric recognition systems. This will be also the case with silhouette-based gait recognition in the near future. So far, gait recognition has been fortunately out of the scope of spoofing attacks. However, it is becoming a real threat with the rapid growth and spread of deep neural network-based multimedia generation techniques, which will allow attackers to generate a fake video of gait silhouettes resembling a target person's walking motion. We refer to such computer-generated fake silhouettes as gait silhouette clones (GSCs). To deal with the future threat caused by GSCs, in this paper, we propose a supervised method for discriminating GSCs from genuine gait silhouettes (GGSs) that are observed from actual walking people. For training a good discriminator, it is important to collect training datasets of both GGSs and GSCs which do not differ from each other in any aspect other than genuineness. To this end, we propose to generate a training set of GSCs from GGSs by transforming them using multiple autoencoders. The generated GSCs are used together with their original GGSs for training the discriminator. In our experiments, the proposed method achieved the recognition accuracy of up to 94% for several test datasets, which demonstrates the effectiveness and the generality of the proposed method.
机译:欺骗攻击是大多数生物识别系统最关注的问题之一。在不久的将来基于轮廓的步态识别也会出现这种情况。到目前为止,幸运的是,步态识别已经超出了欺骗攻击的范围。但是,随着基于深度神经网络的多媒体生成技术的迅速发展和传播,这已成为一种真正的威胁,这将使攻击者生成与目标人的步行动作类似的步态剪影的假视频。我们将这种计算机生成的假轮廓称为步态轮廓克隆(GSC)。为了应对GSC所带来的未来威胁,本文提出了一种有监督的方法,用于将GSC与实际步态中观察到的真实步态轮廓(GGS)区别开来。为了训练一个好的鉴别器,重要的是收集GGS和GSC的训练数据集,除了真实性外,它们在任何方面都没有区别。为此,我们建议通过使用多个自动编码器对其进行转换,从GGS生成GSC训练集。生成的GSC与原始GGS一起用于训练鉴别器。在我们的实验中,该方法对多个测试数据集的识别精度高达94%,这证明了该方法的有效性和普遍性。

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