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Track Creation and Deletion Framework for Long-Term Online Multiface Tracking

机译:长期在线多面跟踪的跟踪创建和删除框架

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摘要

To improve visual tracking, a large number of papers study more powerful features, or better cue fusion mechanisms, such as adaptation or contextual models. A complementary approach consists of improving the track management, that is, deciding when to add a target or stop its tracking, for example, in case of failure. This is an essential component for effective multiobject tracking applications, and is often not trivial. Deciding whether or not to stop a track is a compromise between avoiding erroneous early stopping while tracking is fine, and erroneous continuation of tracking when there is an actual failure. This decision process, very rarely addressed in the literature, is difficult due to object detector deficiencies or observation models that are insufficient to describe the full variability of tracked objects and deliver reliable likelihood (tracking) information. This paper addresses the track management issue and presents a real-time online multiface tracking algorithm that effectively deals with the above difficulties. The tracking itself is formulated in a multiobject state-space Bayesian filtering framework solved with Markov Chain Monte Carlo. Within this framework, an explicit probabilistic filtering step decides when to add or remove a target from the tracker, where decisions rely on multiple cues such as face detections, likelihood measures, long-term observations, and track state characteristics. The method has been applied to three challenging data sets of more than 9 h in total, and demonstrate a significant performance increase compared to more traditional approaches (Markov Chain Monte Carlo, reversible-jump Markov Chain Monte Carlo) only relying on head detection and likelihood for track management.
机译:为了改善视觉跟踪,大量论文研究了更强大的功能或更好的提示融合机制,例如适应或上下文模型。补充方法包括改进跟踪管理,即确定何时添加目标或停止其跟踪(例如在发生故障的情况下)。对于有效的多对象跟踪应用来说,这是必不可少的组件,而且通常也不是一件容易的事。决定是否停止跟踪是在可以避免在跟踪正常时错误地提前停止和在出现实际故障时错误地继续跟踪之间的折衷。由于物体检测器的缺陷或观测模型不足以描述被追踪物体的全部可变性并无法提供可靠的可能性(追踪)信息,因此这种决策过程很难在文献中解决,因此很难。本文解决了轨道管理问题,并提出了一种实时的在线多面跟踪算法,可以有效地解决上述难题。跟踪本身是在用马尔可夫链蒙特卡洛解决的多对象状态空间贝叶斯滤波框架中制定的。在此框架内,一个显式的概率过滤步骤决定何时向跟踪器添加目标或从跟踪器中删除目标,其中决策依赖于多个提示,例如面部检测,似然性测量,长期观察和跟踪状态特征。该方法已应用于总共9小时以上的三个具有挑战性的数据集,与仅依赖头部检测和可能性的传统方法(马尔可夫链蒙特卡洛,可逆跳马尔可夫链蒙特卡洛)相比,其性能有了显着提高用于轨道管理。

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