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A Bayesian Computer Vision System for Modeling Human Interactions

机译:用于人类交互建模的贝叶斯计算机视觉系统

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We describe a real-time computer vision and machine learning system for modeling and recognizing human behaviors in a visual surveillance task. The system is particularly concerned with detecting when interactions between people occur, and classifying the type of interaction. Examples of interesting interaction behaviors include following another person, altering one's path to meet another, and so forth. Our system combines top-down with bottom-up information in a closed feedback loop, with both components employing a statistical Bayesian approach. We propose and compare two different state-based learning architectures, namely HMMs and CHMMs, for modeling behaviors and interactions. The CHMM model is shown to work much more efficiently and accurately.rnFinally, to deal with the problem of limited training data, a synthetic 'Alife-style' training system is used to develop flexible prior models for recognizing human interactions. We demonstrate the ability to use these a priori models to accurately classify real human behaviors and interactions with no additional tuning or training.
机译:我们描述了一种用于在视觉监视任务中建模和识别人类行为的实时计算机视觉和机器学习系统。该系统特别关注检测人与人之间何时发生互动以及对互动类型进行分类。有趣的交互行为的示例包括跟随另一个人,改变一个人的方式去认识另一个人,等等。我们的系统在封闭的反馈回路中结合了自上而下和自下而上的信息,两个组件均采用统计贝叶斯方法。我们提出并比较了两种不同的基于状态的学习架构,即HMM和CHMM,用于对行为和交互进行建模。最后,为了解决训练数据有限的问题,使用了合成的“ Alife-style”训练系统来开发灵活的先验模型来识别人与人之间的互动。我们展示了使用这些先验模型来准确分类真实人类行为和互动的能力,而无需进行其他调整或培训。

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