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Robust Video Facial Authentication With Unsupervised Mode Disentanglement

机译:具有无监督模式解迷的强大视频面部认证

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Deep learning-based video facial authentication has limitations when it comes to real-world applications, due to large mode variations such as illumination, pose, and eyeglasses variations in real-life situations. Many of existing mode-invariant facial authentication methods need labels of each mode. However, the label information could not be always available in practice. To alleviate this problem, we develop an unsupervised mode disentangling method for video facial authentication. By matching both disentangled identity features and dynamic features of two facial videos, our proposed method shows significant face verification and identification performances on three publicly available datasets, KAIST-MPMI, UVA-NEMO, and YTF.
机译:在实际应用中,基于深度学习的视频面部认证存在局限性,这是由于现实情况下的照明,姿势和眼镜变化等模式变化较大。许多现有的模式不变的面部认证方法都需要每种模式的标签。但是,标签信息在实践中可能并不总是可用。为了减轻这个问题,我们开发了一种用于视频面部认证的无监督模式解缠方法。通过匹配两个面部视频的解开的身份特征和动态特征,我们提出的方法在KAIST-MPMI,UVA-NEMO和YTF这三个公开可用的数据集上显示出显着的面部验证和识别性能。

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