视觉效果的动态神经面部变形

Lucio Moser, Jason Selfe, Darren Hendler, Douglas Roble
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引用次数: 2

摘要

在这项工作中,我们提出了一种机器学习方法,用于视频中两个或多个身份之间的面部变形。我们设计了一个自编码器架构,每个身份具有不同的解码器,但其权重具有潜在的可学习线性基础。每个解码器都有一个可学习的参数,该参数定义了能够成功解码其身份的基的插值权重(或ID权重)。在推理过程中,可以插值ID权重来产生一系列的变形恒等式。我们的方法产生暂时一致的结果,并允许通过暴露解码器网络每层的混合权重来混合身份的不同方面。我们将训练好的模型部署到图像合成器中,作为具有独立混合权重控制的2D节点。我们的方法已经成功地应用于制作中,在《疟疾必须死亡》(Malaria Must Die)活动中为大卫·贝克汉姆(David Beckham)的衰老做了准备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Neural Face Morphing for Visual Effects
In this work we present a machine learning approach for face morphing in videos, between two or more identities. We devise an autoencoder architecture with distinct decoders for each identity, but with an underlying learnable linear basis for their weights. Each decoder has a learnable parameter that defines the interpolating weights (or ID weights) for the basis which can successfully decode its identity. During inference, the ID weights can be interpolated to produce a range of morphing identities. Our method produces temporally consistent results and allows blending different aspects of the identities by exposing the blending weights for each layer of the decoder network. We deploy our trained models to image compositors as 2D nodes with independent controls for the blending weights. Our approach has been successfully used in production, for the aging of David Beckham in the Malaria Must Die campaign.
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