Rutgers University, Piscataway.
IEEE Trans Pattern Anal Mach Intell. 2013 Dec;35(12):2968-81. doi: 10.1109/TPAMI.2012.215.
Online learned tracking is widely used for its adaptive ability to handle appearance changes. However, it introduces potential drifting problems due to the accumulation of errors during the self-updating, especially for occluded scenarios. The recent literature demonstrates that appropriate combinations of trackers can help balance the stability and flexibility requirements. We have developed a robust tracking algorithm using a local sparse appearance model (SPT) and K-Selection. A static sparse dictionary and a dynamically updated online dictionary basis distribution are used to model the target appearance. A novel sparse representation-based voting map and a sparse constraint regularized mean shift are proposed to track the object robustly. Besides these contributions, we also introduce a new selection-based dictionary learning algorithm with a locally constrained sparse representation, called K-Selection. Based on a set of comprehensive experiments, our algorithm has demonstrated better performance than alternatives reported in the recent literature.
在线学习跟踪因其自适应能力而被广泛应用于处理外观变化。然而,由于在自更新过程中错误的积累,它会引入潜在的漂移问题,尤其是在遮挡的情况下。最近的文献表明,适当的跟踪器组合可以帮助平衡稳定性和灵活性的要求。我们使用局部稀疏外观模型 (SPT) 和 K-选择开发了一种强大的跟踪算法。静态稀疏字典和动态更新的在线字典基分布用于建模目标外观。提出了一种新颖的基于稀疏表示的投票图和稀疏约束正则化均值漂移,以稳健地跟踪目标。除了这些贡献,我们还引入了一种新的基于选择的字典学习算法,具有局部约束稀疏表示,称为 K-选择。基于一组全面的实验,我们的算法性能优于最近文献中报道的替代方法。