Content-Preserving Motion Stylization using Variational Autoencoder

Chen-Chieh Liao, Jong-Hwan Kim, H. Koike, D. Hwang
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Abstract

This work proposes a motion style transfer network that transfers motion style between different motion categories using variational autoencoders. The proposed network effectively transfers style among various motion categories and can create stylized motion unseen in the dataset. The network contains a content-conditioned module to preserve the characteristic of the content motion, which is important for real applications. We implement the network with variational autoencoders, which enable us to control the intensity of the style and mix different styles to enrich the motion diversity.
使用变分自编码器的内容保留运动样式化
这项工作提出了一个运动风格传输网络,该网络使用变分自编码器在不同的运动类别之间传输运动风格。所提出的网络在不同的运动类别之间有效地传递风格,并可以创建数据集中不可见的风格化运动。该网络包含内容条件模块,以保持内容运动的特征,这对实际应用很重要。我们用变分自编码器实现网络,使我们能够控制风格的强度和混合不同的风格,以丰富运动的多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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