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Robust Face Tracking via Collaboration of Generic and Specific Models

机译:通过通用模型和特定模型的协作进行稳健的面部跟踪

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Significant appearance changes of objects under different orientations could cause loss of tracking, “drifting.” In this paper, we present a collaborative tracking framework to robustly track faces under large pose and expression changes and to learn their appearance models online. The collaborative tracking framework probabilistically combines measurements from an offline-trained generic face model with measurements from online-learned specific face appearance models in a dnamic Bayesian nework. In this framework, generic face models provide the knowledge of the whole face class, while specific face models provide information on individual faces being tracked. Their combination, therefore, provides robust measurements for multiview face tracking. We introduce a mixture of probabilistic principal component analysis (MPPCA) model to represent the appearance of a specific face under multiple views, and we also present an online EM algorithm to incrementally update the MPPCA model using tracking results. Experimental results demonstrate that the collaborative tracking and online learning methods can handle large pose changes and are robust to distractions from the background.
机译:物体在不同方向上的显着外观变化可能会导致丢失跟踪,“漂移”。在本文中,我们提出了一个协作跟踪框架,可以在大的姿势和表情变化下稳健地跟踪人脸,并在线学习其外观模型。协作跟踪框架将脱机训练的普通人脸模型的测量结果与来自网络学习的特定人脸外观模型的测量结果(在动态贝叶斯网络中)结合在一起。在此框架中,通用的人脸模型提供了整个人脸类的知识,而特定的人脸模型则提供了有关要跟踪的单个人脸的信息。因此,它们的组合为多视图面部跟踪提供了可靠的测量。我们引入了混合概率主成分分析(MPPCA)模型来表示特定视图在多个视图下的外观,并且还提出了一种在线EM算法,可以使用跟踪结果来逐步更新MPPCA模型。实验结果表明,协作跟踪和在线学习方法可以处理较大的姿势变化,并且对从背景中分散注意力具有鲁棒性。

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