Learning and inferring transportation routines

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摘要

This paper introduces a hierarchical Markov model that can learn and infer a user's daily movements through an urban community. The model uses multiple levels of abstraction in order to bridge the gap between raw GPS sensor measurements and high level information such as a user's destination and mode of transportation. To achieve efficient inference, we apply Rao–Blackwellized particle filters at multiple levels of the model hierarchy. Locations such as bus stops and parking lots, where the user frequently changes mode of transportation, are learned from GPS data logs without manual labeling of training data. We experimentally demonstrate how to accurately detect novel behavior or user errors (e.g. taking a wrong bus) by explicitly modeling activities in the context of the user's historical data. Finally, we discuss an application called “Opportunity Knocks” that employs our techniques to help cognitively-impaired people use public transportation safely.

论文关键词:Activity recognition,Hierarchical Markov model,Location tracking,Novelty detection,Rao–Blackwellized particle filters

论文评审过程:Received 10 March 2006, Revised 3 October 2006, Accepted 29 January 2007, Available online 24 February 2007.

论文官网地址:https://doi.org/10.1016/j.artint.2007.01.006