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Spatio-temporal generative adversarial network for gait anonymization

机译:用于步态匿名化的时空生成对抗网络

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摘要

Gait anonymization for protecting a person's identity against gait recognition while maintaining naturalness is a new research direction. It can be used to protect the identity of people in videos to be posted on social networks, in police videos that require redaction, and in videos obtained from surveillance systems. We have developed a spatio-temporal generative adversarial network (ST-GAN) that uses random noise synthesized in the gait distribution to generate anonymized gaits that appear natural. ST-GAN consists of a generator that uses the original gait and random noise to generate an anonymized gait and two discriminators, a spatial discriminator and a temporal discriminator, to estimate the probability that a gait is the original one and not an anonymized one. Evaluation showed that the anonymized gaits generated with the proposed method are more natural than those generated with an existing method and that the proposed method outperforms the existing method in preventing gaits from being recognized by a gait recognition system. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在保持自然的同时保护一个人对步态认可来保护一个人的身份的步态匿名化是一种新的研究方向。它可用于保护在需要重放的警察视频中张贴在社交网络上的视频中的人们的身份,以及从监视系统获得的视频。我们开发了一种时空生成的对抗网络(ST-GaN),它使用在步态分发中合成的随机噪声来生成出现自然的匿名Gaits。 St-GaN由使用原始步态和随机噪声的发电机组成,以产生匿名的步态和两个鉴别器,空间鉴别器和时间鉴别器,以估计步态是原始的概率而不是匿名的。评估表明,用所提出的方法生成的匿名Gaits比用现有方法产生的匿名遗传率更自然,并且所提出的方法优于通过步态识别系统来识别的现有方法。 (c)2019 Elsevier Ltd.保留所有权利。

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