Hu Weiming, Tian Guodong, Kang Yongxin, Yuan Chunfeng, Maybank Stephen
IEEE Trans Pattern Anal Mach Intell. 2018 Oct;40(10):2355-2373. doi: 10.1109/TPAMI.2017.2756039. Epub 2017 Sep 25.
In this paper, a new nonparametric Bayesian model called the dual sticky hierarchical Dirichlet process hidden Markov model (HDP-HMM) is proposed for mining activities from a collection of time series data such as trajectories. All the time series data are clustered. Each cluster of time series data, corresponding to a motion pattern, is modeled by an HMM. Our model postulates a set of HMMs that share a common set of states (topics in an analogy with topic models for document processing), but have unique transition distributions. The number of HMMs and the number of topics are both automatically determined. The sticky prior avoids redundant states and makes our HDP-HMM more effective to model multimodal observations. For the application to motion trajectory modeling, topics correspond to motion activities. The learnt topics are clustered into atomic activities which are assigned predicates. We propose a Bayesian inference method to decompose a given trajectory into a sequence of atomic activities. The sources and sinks in the scene are learnt by clustering endpoints (origins and destinations) of trajectories. The semantic motion regions are learnt using the points in trajectories. On combining the learnt sources and sinks, the learnt semantic motion regions, and the learnt sequence of atomic activities, the action represented by a trajectory can be described in natural language in as automatic a way as possible. The effectiveness of our dual sticky HDP-HMM is validated on several trajectory datasets. The effectiveness of the natural language descriptions for motions is demonstrated on the vehicle trajectories extracted from a traffic scene.
本文提出了一种新的非参数贝叶斯模型,称为对偶粘性分层狄利克雷过程隐马尔可夫模型(HDP-HMM),用于从轨迹等时间序列数据集中挖掘活动。所有时间序列数据都进行了聚类。每个时间序列数据聚类对应一种运动模式,由一个隐马尔可夫模型建模。我们的模型假设一组共享一组公共状态(类似于文档处理主题模型中的主题)但具有独特转移分布的隐马尔可夫模型。隐马尔可夫模型的数量和主题数量都是自动确定的。粘性先验避免了冗余状态,使我们的HDP-HMM在对多模态观测进行建模时更有效。对于运动轨迹建模的应用,主题对应于运动活动。学习到的主题被聚类为原子活动,并为其分配谓词。我们提出了一种贝叶斯推理方法,将给定轨迹分解为原子活动序列。通过对轨迹端点(起点和终点)进行聚类来学习场景中的源和汇。利用轨迹中的点来学习语义运动区域。结合学习到的源和汇以及学习到的语义运动区域和学习到的原子活动序列,可以尽可能自动地用自然语言描述轨迹所代表的动作。我们的对偶粘性HDP-HMM的有效性在几个轨迹数据集上得到了验证。在从交通场景中提取的车辆轨迹上展示了运动自然语言描述的有效性。