Title :
Learning of object manipulation operations from continuous multimodal input
Author :
Grossekathöfer, Ulf ; Barchunova, Alexandra ; Haschke, Robert ; Hermann, Thomas ; Franzius, Mathias ; Ritter, Helge
Author_Institution :
CITEC Center of Excellence Cognitive Interaction Technol., Bielefeld Univ., Bielefeld, Germany
Abstract :
In this paper we propose an approach for identification of high-level object manipulation operations within a continuous multimodal time-series. We focus on a multimodal approach for robust recognition of action primitive data. Our procedure combines an unsupervised Bayesian multimodal segmentation with a supervised machine learning approach. We briefly outline (1) the unsupervised segmentation and selection of uni- and bi-manual manipulation primitives developed in our previous work. We show (2) an application of the ordered means models to classification of estimated segments. To assess the performance of our approach, we compare the computed labels to the ground truth acquired during the data recording. In our experiments we examined the robustness of the procedure on two different sets of segments: full length (≈ 95% overlap with the ground truth on average), partial length (≈ 10% overlap with ground truth on average). We have achieved a cross validation rate of ≈ 0.95 and recognition accuracy of ≈ 0.97 for full length and ≈ 0.84 for partial length test sets.
Keywords :
belief networks; learning (artificial intelligence); manipulators; time series; continuous multimodal input; data recording; multimodal time-series; object manipulation operation learning; robust recognition; supervised machine learning; unsupervised Bayesian multimodal segmentation; unsupervised segmentation; Accuracy; Hidden Markov models; Humans; Joints; Robustness; Sensors; Time series analysis;
Conference_Titel :
Humanoid Robots (Humanoids), 2011 11th IEEE-RAS International Conference on
Conference_Location :
Bled
Print_ISBN :
978-1-61284-866-2
Electronic_ISBN :
2164-0572
DOI :
10.1109/Humanoids.2011.6100880