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Video-Based Face Tracking and Recognition on Updating Twin GMMs

机译:基于视频的面部跟踪和更新双胞胎Gmms的识别

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Online learning is a very desirable capability for video-based algorithms. In this paper, we propose a novel framework to solve the problems of video-based face tracking and recognition by online updating twin GMMs. At first, considering differences between the tasks of face tracking and face recognition, the twin GMMs are initialized with different rules for tracking and recognition purposes, respectively. Then, given training sequences for learning, both of them are updated with some online incremental learning algorithm, so the tracking performance is improved and the class-specific GMMs are obtained. Lastly, Bayesian inference is incorporated into the recognition framework to accumulate the temporal information in video. Experiments have demonstrated that the algorithm can achieve better performance than some well-known methods.
机译:在线学习是基于视频算法的非常理想的能力。在本文中,我们提出了一种新颖的框架来解决在线更新双胞胎Gmms的基于视频的面部跟踪和识别问题。首先,考虑面部跟踪和面部识别的任务之间的差异,分别用不同的规则初始化双胞胎Gmms以分别用于跟踪和识别目的。然后,给定用于学习的训练序列,它们都以某种在线增量学习算法更新,因此可以提高跟踪性能并获得特定于类的GMM。最后,贝叶斯推断被纳入识别框架以累积视频中的时间信息。实验已经证明,该算法可以实现比某种众所周知的方法更好的性能。

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