实时头部和面部特征跟踪的高效主动外观模型

F. Dornaika, J. Ahlberg
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引用次数: 27

摘要

我们解决了三维跟踪的姿态和动画的人脸在单眼图像序列使用主动外观模型。经典的基于外观的跟踪存在两个缺点:(1)估计的面外运动不是很准确;(2)优化过程收敛到期望的最小值不能保证。我们的目标是设计一个高效的主动外观模型,该模型在保留基于特征和无特征跟踪方法的优点的同时,能够克服上述缺点。对于每一帧,适应被分成两个连续的阶段。在第一阶段,使用鲁棒统计和面部纹理统计模型的一致性测量恢复3D头部姿势。在第二阶段,使用主动外观模型搜索的概念恢复与某些面部特征相关的局部运动。跟踪实验和方法比较证明了所开发框架的鲁棒性和优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient active appearance model for real-time head and facial feature tracking
We address the 3D tracking of pose and animation of the human face in monocular image sequences using active appearance models. The classical appearance-based tracking suffers from two disadvantages: (i) the estimated out-of-plane motions are not very accurate, and (ii) the convergence of the optimization process to desired minima is not guaranteed. We aim at designing an efficient active appearance model, which is able to cope with the above disadvantages by retaining the strengths of feature-based and featureless tracking methodologies. For each frame, the adaptation is split into two consecutive stages. In the first stage, the 3D head pose is recovered using robust statistics and a measure of consistency with a statistical model of a face texture. In the second stage, the local motion associated with some facial features is recovered using the concept of the active appearance model search. Tracking experiments and method comparison demonstrate the robustness and out-performance of the developed framework.
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