Unsupervised Activity Discovery and Characterization From Event-Streams

Uncertainty in Artificial Intelligence(2012)

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摘要
Abstract We present a framework,to discover and characterize different classes of everyday activities from event-streams. We begin by representing activities as bags of event n-grams. This allows us to analyze the global structural information of activities, using their local event statistics. We demonstrate how maximal cliques in an undirected edge-weighted graph of activities, can be used for activity-class discovery in an unsupervised manner. We show,how,modeling an activity as a variable length Markov process, can be used to discover recurrent event-motifs to characterize the discovered activity-classes. We present results over extensive data-sets, collected from multiple active environments, to show the competence,and generalizability of our proposed framework.
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markov process
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