Layered representations for learning and inferring office activity from multiple sensory channels

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We present the use of layered probabilistic representations for modeling human activities, and describe how we use the representation to do sensing, learning, and inference at multiple levels of temporal granularity and abstraction and from heterogeneous data sources. The approach centers on the use of a cascade of Hidden Markov Models named Layered Hidden Markov Models (LHMMs) to diagnose states of a user’s activity based on real-time streams of evidence from video, audio, and computer (keyboard and mouse) interactions. We couple these LHMMs with an expected utility analysis that considers the cost of misclassification. We describe the representation, present an implementation, and report on experiments with our layered architecture in a real-time office-awareness setting.

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论文评审过程:Received 20 March 2002, Accepted 2 February 2004, Available online 6 August 2004.

论文官网地址:https://doi.org/10.1016/j.cviu.2004.02.004