Neural Head Reenactment with Latent Pose Descriptors

CVPR(2020)

引用 108|浏览125
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摘要
We propose a neural head reenactment system, which is driven by a latent pose representation and is capable of predicting the foreground segmentation alongside the RGB image. The latent pose representation is learned as a part of the entire reenactment system, and the learning process is based solely on image reconstruction losses. We show that despite its simplicity, with a large and diverse enough training dataset, such learning successfully decomposes pose from identity. The resulting system can then reproduce mimics of the driving person and, furthermore, can perform cross-person reenactment. Additionally, we show that the learned descriptors are useful for other pose-related tasks, such as keypoint prediction and pose-based retrieval.
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关键词
latent pose representation,foreground segmentation,RGB image,learning process,image reconstruction losses,cross-person reenactment,learned descriptors,pose-related tasks,latent pose descriptors,neural head reenactment system,reenactment system
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