Extracting places and activities from gps traces using hierarchical conditional random fields (2007)
| Venue: | International Journal of Robotics Research |
| Citations: | 52 - 2 self |
BibTeX
@ARTICLE{Liao07extractingplaces,
author = {Lin Liao and Dieter Fox and Henry Kautz},
title = {Extracting places and activities from gps traces using hierarchical conditional random fields},
journal = {International Journal of Robotics Research},
year = {2007},
volume = {26},
pages = {2007}
}
OpenURL
Abstract
Learning patterns of human behavior from sensor data is extremely important for high-level activity inference. We show how to extract a person’s activities and significant places from traces of GPS data. Our system uses hierarchically structured conditional random fields to generate a consistent model of a person’s activities and places. In contrast to existing techniques, our approach takes high-level context into account in order to detect the significant places of a person. Our experiments show significant improvements over existing techniques. Furthermore, they indicate that our system is able to robustly estimate a person’s activities using a model that is trained from data collected by other persons. 1







