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Few-Shot Adversarial Learning of Realistic Neural Talking Head Models

机译:少量射击对抗现实神经说话头模型的对抗学习

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Several recent works have shown how highly realistic human head images can be obtained by training convolutional neural networks to generate them. In order to create a personalized talking head model, these works require training on a large dataset of images of a single person. However, in many practical scenarios, such personalized talking head models need to be learned from a few image views of a person, potentially even a single image. Here, we present a system with such few-shot capability. It performs lengthy meta-learning on a large dataset of videos, and after that is able to frame few- and one-shot learning of neural talking head models of previously unseen people as adversarial training problems with high capacity generators and discriminators. Crucially, the system is able to initialize the parameters of both the generator and the discriminator in a person-specific way, so that training can be based on just a few images and done quickly, despite the need to tune tens of millions of parameters. We show that such an approach is able to learn highly realistic and personalized talking head models of new people and even portrait paintings.
机译:最近的几项工程表明,通过培训卷积神经网络来产生它们的人类头像如何获得高度现实的人体头像。为了创建个性化的谈话头模型,这些作品需要在一个人的图像图像的大型数据集上进行培训。然而,在许多实际情况中,这种个性化的谈话头模型需要从人的一些图像视图中学到,潜在的甚至是单个图像。在这里,我们提出了一个具有这种少量拍摄能力的系统。它在视频的大型数据集上执行冗长的元学习,之后能够框架,以帧为先前看不见的人的神经通知头模型,作为高容量发电机和鉴别者的对抗训练问题。至关重要的是,该系统能够以特定于人员方式初始化发电机和鉴别器的参数,使得培训可以基于几个图像并完成快速完成,尽管需要调谐数百万的参数。我们表明这种方法能够学习高度现实和个性化的谈话头模型的新人和肖像绘画。

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