Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
412101 | Robotics and Autonomous Systems | 2015 | 12 Pages |
•A framework for robot semantic mapping through human activity recognition.•Human activity recognition is realized through wearable motion sensors.•Validated through both simulation and experiments.
Semantic information can help robots understand unknown environments better. In order to obtain semantic information efficiently and link it to a metric map, we present a new robot semantic mapping approach through human activity recognition in a human–robot coexisting environment. An intelligent mobile robot platform called ASCCbot creates a metric map while wearable motion sensors attached to the human body are used to recognize human activities. Combining pre-learned models of activity–furniture correlation and location–furniture correlation, the robot determines the probability distribution of the furniture types through a Bayesian framework and labels them on the metric map. Computer simulations and real experiments demonstrate that the proposed approach is able to create a semantic map of an indoor environment effectively.