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Black-Box Face Recovery from Identity Features

机译:从身份功能中恢复黑匣子脸部恢复

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In this work, we present a novel algorithm based on an iterative sampling of random Gaussian blobs for black-box face recovery, given only an output feature vector of deep face recognition systems. We attack the state-of-the-art face recognition system (ArcFace) to test our algorithm. Another network with different architecture (FaceNet) is used as an independent critic showing that the target person can be identified with the reconstructed image even with no access to the attacked model. Furthermore, our algorithm requires a significantly less number of queries compared to the state-of-the-art solution.
机译:在这项工作中,我们介绍了一种基于对黑盒面部恢复的随机高斯BLOB的迭代采样的新算法,仅给予深脸识别系统的输出特征向量。 我们攻击最先进的面部识别系统(ArcFace)以测试我们的算法。 具有不同架构(Faceget)的另一个网络用作独立批评者,表明即使无法访问攻击模型,也可以用重建的图像识别目标人。 此外,与最先进的解决方案相比,我们的算法需要较少数量的查询。

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