Learning and Inferring Transportation Routines
I will give the presentation I gave at the AAAI conference this year. We introduce a hierarchical Markov model that can learn and infer a user’s daily movements through the 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 mode of transportation or her goal. We apply Rao-Blackwellised particle filters for efficient inference both at the low level and at the higher levels of the hierarchy. Significant locations such as goals or locations where the user frequently changes mode of transportation are learned from GPS data logs without requiring any manual labeling. We show how to detect abnormal behaviors (e.g. taking a wrong bus) by concurrently tracking his activities with a trained and a prior model. Experiments show that our model is able to accurately predict the goals of a person and to recognize situations in which the user performs unknown activities.
Speaker Bios
Lin Liao is currently a summer intern at MSR working with Eric Horvitz. He is a Ph.D. candidate in the Department of Computer Science and Engineering at the University of Washington (Seattle), where he has worked with Dieter Fox and Henry Kautz on learning and inferring human behavior from sensor data using probabilistic models.
- Date:
- Haut-parleurs:
- Lin Liao
- Affiliation:
- University of Washington
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Jeff Running
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