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Online Bayesian changepoint detection for articulated motion models
2015
2015 IEEE International Conference on Robotics and Automation (ICRA)
We introduce CHAMP, an algorithm for online Bayesian changepoint detection in settings where it is difficult or undesirable to integrate over the parameters of candidate models. CHAMP is used in combination with several articulation models to detect changes in articulated motion of objects in the world, allowing a robot to infer physically-grounded task information. We focus on three settings where a changepoint model is appropriate: objects with intrinsic articulation relationships that can
doi:10.1109/icra.2015.7139383
dblp:conf/icra/NiekumOAB15
fatcat:g3qdykrh7neopoyinefxtdi2n4