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Selective Face Deidentification with End-to-End Perceptual Loss Learning

机译:端到端感知损失学习的选择性人脸识别

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Privacy is a highly debatable topic in the modern technological era. With the advent of massive video and image data (which in a lot of cases contains personal information on the recorded subjects), there is an imminent need for efficient privacy protection mechanisms. To this end, we develop in this work a novel Face Deidentification Network (FaDeNet) that is able to alter the input faces in such a way that automated recognition fail to recognize the subjects in the images, while this is still possible for human observers. FaDeNet is based an encoder-decoder architecture that is trained to auto-encode the input image, while (at the same time) minimizing the recognition performance of a secondary network that is used as an socalled identity critic in FaDeNet. We present experiments on the Radbound Faces Dataset and observe encouraging results.
机译:在现代技术时代,隐私是一个值得商de的话题。随着海量视频和图像数据的出现(在很多情况下,其中包含有关录制主题的个人信息),迫切需要高效的隐私保护机制。为此,我们在这项工作中开发了一种新颖的人脸识别网络(FaDeNet),该网络能够以自动识别无法识别图像中的对象的方式更改输入人脸,而对于人类观察者来说仍然是可能的。 FaDeNet基于编码器-解码器体系结构,该体系经过训练可对输入图像进行自动编码,同时(同时)最大程度地减少了用作FaDeNet中所谓的身份批评者的辅助网络的识别性能。我们在Radbound Faces数据集上展示实验并观察到令人鼓舞的结果。

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