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Semi-Supervised Learning for Monocular Gaze Redirection

机译:单眼注视重定向的半监督学习

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摘要

We present a new approach to monocular learning-based gaze redirection problem in images that is able to train on raw sequences of eye images with unknown gaze directions and a small amount of eye images, where the gaze direction is known. The proposed approach is based on a pair of deep networks, where the first encoder-like network maps eye images to a latent space, while the second network maps pairs of latent representations to warping fields implementing the transformation between the pair of the original images. In the proposed system, both networks are trained in an unsupervised manner, while the gaze-annotated images are only used to estimate displacements in the latent space that are characteristic to certain gaze redirections. Quantitative and qualitative evaluation suggests that such characteristic displacement vectors in the learned latent space can be learned from few examples and are transferable across different people and different imaging conditions.
机译:我们提出了一种新的方法来解决图像中基于单眼学习的注视重定向问题,该方法能够在未知注视方向和少量注视图像(已知注视方向)的原始眼睛图像序列上进行训练。所提出的方法基于一对深层网络,其中第一个类似编码器的网络将眼睛图像映射到一个潜在空间,而第二个网络将成对的潜在表示映射到变形场,以实现一对原始图像之间的转换。在提出的系统中,两个网络都以无监督的方式训练,而注视图像仅用于估计潜在空间中某些注视重定向特征的位移。定量和定性评估表明,可以从几个示例中了解到学习的潜在空间中的此类特征位移矢量,并且可以在不同的人和不同的成像条件下进行转移。

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