活动识别的耦合隐半马尔可夫模型

P. Natarajan, R. Nevatia
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引用次数: 163

摘要

从一系列感官观察中识别人类活动对于监视和人机交互等许多应用都很重要。隐马尔可夫模型(hmm)已被提出作为一种合适的工具,用于模拟同一动作的观测值变化和区分不同的动作。hmm在这项任务中得到了广泛的应用,但是标准格式存在一些限制。其中包括针对子事件持续时间的不切实际的模型,以及没有直接编码多个代理之间的交互。半马尔可夫模型和耦合hmm模型已经在以前的工作中被提出来处理这些问题。我们将这两个概念结合成一个耦合的隐半马尔可夫模型(CHSMM)。chsmm带来了巨大的计算复杂性挑战。我们提出了在这种结构中学习和解码的有效算法,并通过合成和真实数据的实验证明了它们的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coupled Hidden Semi Markov Models for Activity Recognition
Recognizing human activity from a stream of sensory observations is important for a number of applications such as surveillance and human-computer interaction. Hidden Markov Models (HMMs) have been proposed as suitable tools for modeling the variations in the observations for the same action and for discriminating among different actions. HMMs have come in wide use for this task but the standard form suffers from several limitations. These include unrealistic models for the duration of a sub-event and not encoding interactions among multiple agents directly. Semi- Markov models and coupled HMMs have been proposed in previous work to handle these issues. We combine these two concepts into a coupled Hidden semi-Markov Model (CHSMM). CHSMMs pose huge computational complexity challenges. We present efficient algorithms for learning and decoding in such structures and demonstrate their utility by experiments with synthetic and real data.
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