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Combining active learning and local patch alignment for data-driven facial animation with fine-grained local detail

机译:用细粒度本地细节结合用于数据驱动的面部动画的主动学习和本地补丁对齐

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摘要

Data-driven facial animation has attracted considerable attention from both academic and industrial communities in recent years. Typically, the motion data used to animate the faces are derived from either 3D or 2D facial features whose positions on the face are determined according to experience. There still lacks an automatic approach to determine the optimal positions of the features to face deformation, and current face deformation methods are incapable of providing fine-grained local geometric characteristics. This paper proposes a novel scheme for face animation in which an active learning method based on Locally Linear Reconstruction algorithm is exploited to determine the optimal feature positions on the face for face deformation, and the Semi-Supervised Local Patch Alignment algorithm is subsequently used to deform the face with the selected features according to the optimal feature positions. The active learning model can be solved by a sequential approach, and the Semi-Supervised Local Patch Alignment model can be addressed by a least-square method. Experimental results on various types of faces demonstrate the superiority of the proposed scheme to existing approaches in both feature points selection and fine-grained local characteristics preservation. (C) 2019 Elsevier B.V. All rights reserved.
机译:近年来,数据驱动的面部动画引起了学术界和工业社区的相当大。通常,用于动画面的运动数据来自于根据体验确定面部上的位置的3D或2D面部特征。仍然缺乏自动方法来确定面部变形的特征的最佳位置,并且电流面部变形方法不能提供细粒度的局部几何特性。本文提出了一种用于面部动画的新颖方案,其中利用基于局部线性重建算法的主动学习方法来确定面部变形上的最佳特征位置,随后使用半监督的本地补片对准算法来变形根据最佳特征位置具有所选特征的面。可以通过顺序方法解决主动学习模型,并且可以通过最小二乘法解决半监督的本地补丁对齐模型。各种类型面的实验结果证明了特征点选择和细粒度局部特征保存的现有方法的优势。 (c)2019 Elsevier B.v.保留所有权利。

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