Pernkopf Franz
Department of Electrical Engineering, Laboratory of Signal Processing and Speech Communication, Graz University of Technology, 8010 Graz, Austria.
IEEE Trans Syst Man Cybern B Cybern. 2008 Dec;38(6):1465-75. doi: 10.1109/TSMCB.2008.927281.
Recently, much work has been done in multiple object tracking on the one hand and on reference model adaptation for a single-object tracker on the other side. In this paper, we do both tracking of multiple objects (faces of people) in a meeting scenario and online learning to incrementally update the models of the tracked objects to account for appearance changes during tracking. Additionally, we automatically initialize and terminate tracking of individual objects based on low-level features, i.e., face color, face size, and object movement. Many methods unlike our approach assume that the target region has been initialized by hand in the first frame. For tracking, a particle filter is incorporated to propagate sample distributions over time. We discuss the close relationship between our implemented tracker based on particle filters and genetic algorithms. Numerous experiments on meeting data demonstrate the capabilities of our tracking approach. Additionally, we provide an empirical verification of the reference model learning during tracking of indoor and outdoor scenes which supports a more robust tracking. Therefore, we report the average of the standard deviation of the trajectories over numerous tracking runs depending on the learning rate.
最近,一方面在多目标跟踪方面已经开展了大量工作,另一方面在单目标跟踪器的参考模型自适应方面也有诸多进展。在本文中,我们既要在会议场景中对多个对象(人的面部)进行跟踪,还要进行在线学习,以便逐步更新被跟踪对象的模型,从而应对跟踪过程中的外观变化。此外,我们基于低级特征(即面部颜色、面部大小和对象运动)自动初始化并终止对单个对象的跟踪。与我们的方法不同,许多方法假定目标区域在第一帧中已由人工初始化。为了进行跟踪,引入了粒子滤波器来随时间传播样本分布。我们讨论了基于粒子滤波器的已实现跟踪器与遗传算法之间的紧密关系。在会议数据上进行的大量实验证明了我们跟踪方法的能力。此外,我们对室内和室外场景跟踪过程中的参考模型学习进行了实证验证,这支持了更稳健的跟踪。因此,我们报告了根据学习率在多次跟踪运行中轨迹标准差的平均值。