Wang Junqiu, Yagi Yasushi
Institute of Scientific and Industrial Research, Osaka University, Osaka, Japan.
IEEE Trans Syst Man Cybern B Cybern. 2009 Dec;39(6):1578-89. doi: 10.1109/TSMCB.2009.2021482. Epub 2009 Jun 19.
We present a new approach for robust and efficient tracking by incorporating the efficiency of the mean-shift algorithm with the multihypothesis characteristics of particle filtering in an adaptive manner. The aim of the proposed algorithm is to cope with problems that were brought about by sudden motions and distractions. The mean-shift tracking algorithm is robust and effective when the representation of a target is sufficiently discriminative, the target does not jump beyond the bandwidth, and no serious distractions exist. We propose a novel two-stage motion estimation method that is efficient and reliable. If a sudden motion is detected by the motion estimator, some particle-filtering-based trackers can be used to outperform the mean-shift algorithm, at the expense of using a large particle set. In our approach, the mean-shift algorithm is used, as long as it provides reasonable performance. Auxiliary particles are introduced to cope with distractions and sudden motions when such threats are detected. Moreover, discriminative features are selected according to the separation of the foreground and background distributions when threats do not exist. This strategy is important, because it is dangerous to update the target model when the tracking is in an unsteady state. We demonstrate the performance of our approach by comparing it with other trackers in tracking several challenging image sequences.
我们提出了一种新的方法,通过以自适应方式将均值漂移算法的效率与粒子滤波的多假设特征相结合,来实现鲁棒且高效的跟踪。所提出算法的目的是应对由突然运动和干扰带来的问题。当目标的表示具有足够的区分性、目标没有超出带宽范围且不存在严重干扰时,均值漂移跟踪算法是鲁棒且有效的。我们提出了一种高效且可靠的新颖两阶段运动估计方法。如果运动估计器检测到突然运动,可以使用一些基于粒子滤波的跟踪器来超越均值漂移算法,但代价是使用大量粒子集。在我们的方法中,只要均值漂移算法能提供合理的性能,就会使用它。当检测到此类威胁时,引入辅助粒子来应对干扰和突然运动。此外,在不存在威胁时,根据前景和背景分布的分离情况选择区分性特征。这一策略很重要,因为在跟踪处于不稳定状态时更新目标模型是危险的。我们通过将我们的方法与其他跟踪器在几个具有挑战性的图像序列跟踪中进行比较,展示了我们方法的性能。