Cuntoor N P, Yegnanarayana B, Chellappa R
Signal Innovations Group, Research Triangle Park, NC 27702, USA.
IEEE Trans Image Process. 2008 Apr;17(4):594-607. doi: 10.1109/TIP.2008.916991.
Changes in motion properties of trajectories provide useful cues for modeling and recognizing human activities. We associate an event with significant changes that are localized in time and space, and represent activities as a sequence of such events. The localized nature of events allows for detection of subtle changes or anomalies in activities. In this paper, we present a probabilistic approach for representing events using the hidden Markov model (HMM) framework. Using trained HMMs for activities, an event probability sequence is computed for every motion trajectory in the training set. It reflects the probability of an event occurring at every time instant. Though the parameters of the trained HMMs depend on viewing direction, the event probability sequences are robust to changes in viewing direction. We describe sufficient conditions for the existence of view invariance. The usefulness of the proposed event representation is illustrated using activity recognition and anomaly detection. Experiments using the indoor University of Central Florida human action dataset, the Carnegie Mellon University Credo Intelligence, Inc., Motion Capture dataset, and the outdoor Transportation Security Administration airport tarmac surveillance dataset show encouraging results.
轨迹运动属性的变化为人类活动建模和识别提供了有用线索。我们将一个事件与在时间和空间上局部化的显著变化相关联,并将活动表示为这样一系列事件。事件的局部化特性使得能够检测活动中的细微变化或异常。在本文中,我们提出一种使用隐马尔可夫模型(HMM)框架来表示事件的概率方法。对于训练集中的每个运动轨迹,使用针对活动训练的HMM计算事件概率序列。它反映了在每个时刻发生事件的概率。尽管训练好的HMM的参数取决于观察方向,但事件概率序列对观察方向的变化具有鲁棒性。我们描述了视图不变性存在的充分条件。通过活动识别和异常检测说明了所提出的事件表示的有用性。使用佛罗里达中央大学室内人类动作数据集、卡内基梅隆大学Credo Intelligence公司动作捕捉数据集以及运输安全管理局机场停机坪室外监控数据集进行的实验显示了令人鼓舞的结果。