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Neural Information Processing Systems, Date: 2012/12/03 - 2012/12/08, Location: Lake Tahoe, Nevada

Publication date: 2012-12-08

Author:

Di Lello, Enrico
De Laet, Tinne ; Bruyninckx, Herman

Keywords:

Robotics, Machine Learning, Bayesian Nonparametric

Abstract:

The Hierarchical Dirichlet Process Hidden Markov model (HDP-HMM) is a Bayesian non parametric extension of the classical Hidden Markov Model (HMM) that allows to infer posterior probability over the cardinality of the hidden space, thus avoiding the necessity of cross-validation arising in standard EM training. This paper presents the application of Hierarchical Dirichlet Process Hidden Markov Models (HDP-HMM) to error detection during a robotic assembly task. Force sensor data is recorded for successful and failed task executions and man- ually labeled. An HDP-HMM is then fit to a set of training trials for each task execution outcome. We show how posteriors on the learned models could be used to recognize on-line deviation from expected behavior, thus allowing the robotic system to promptly react to task execution errors.