首页> 外文会议>Image Processing (ICIP 2009), 2009 >Interactive modeling of 3D facial expressions with hierarchical Gaussian process latent variable models
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Interactive modeling of 3D facial expressions with hierarchical Gaussian process latent variable models

机译:使用分层高斯过程潜在变量模型对3D面部表情进行交互建模

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The natural expressions play an important role in the daily communication. The efficient and intuitive facial expression editing based on the limited constraints is desirable in the facial animation. In this paper, we present an interactive 3D facial expression editing system with the hierarchical Gaussian process latent variable model (HGPLVM). The hierarchical model incorporates the joint work of the local facial features to produce the natural expressions. To deal with the holistic expression modeling from the local constraints, the inverse mapping between the low-level feature nodes and the high-level facial region nodes is established by the RBF regression model in the latent space. A propagation algorithm is introduced to predict the holistic facial configurations. The experiments demonstrate the 3D facial expressions satisfying the user constraints can be produced efficiently.
机译:自然表达在日常交流中起着重要作用。在面部动画中需要基于有限约束的有效且直观的面部表情编辑。在本文中,我们提出了一种具有分层高斯过程潜在变量模型(HGPLVM)的交互式3D面部表情编辑系统。分层模型结合了局部面部特征的联合工作,以产生自然的表情。为了从局部约束出发对整体表情建模进行处理,利用潜在空间中的RBF回归模型建立了低级特征节点与高级面部区域节点之间的逆映射。引入了一种传播算法来预测整体面部配置。实验表明,可以有效地生成满足用户约束的3D面部表情。

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