Segmentation and generalisation for writing skills transfer from humans to robots

In this study, the authors present an enhanced generalised teaching by demonstration technique for a KUKA iiwa robot. Movements are recorded from a human operator, and then the recorded data are sent to be segmented via MATLAB by using the difference method (DV). The outputted trajectories data are...

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Veröffentlicht in:Cognitive computation and systems 2019-03, Vol.1 (1), p.20-25
Hauptverfasser: Li, Chunxu, Yang, Chenguang, Giannetti, Cinzia
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Sprache:eng
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Zusammenfassung:In this study, the authors present an enhanced generalised teaching by demonstration technique for a KUKA iiwa robot. Movements are recorded from a human operator, and then the recorded data are sent to be segmented via MATLAB by using the difference method (DV). The outputted trajectories data are used to model a non-linear system named dynamic movement primitive (DMP). For the purpose of learning from multiple demonstrations correctly and accurately, the Gaussian mixture model is employed for the evaluation of the DMP in order to modelling multiple trajectories by the teaching of demonstrator. Furthermore, a synthesised trajectory with smaller position errors in 3D space has been successfully generated by the usage of the Gaussian mixture regression algorithm. The proposed approach has been tested and demonstrated by performing a Chinese characters writing task with a KUKA iiwa robot.
ISSN:2517-7567
1873-9601
2517-7567
1873-961X
DOI:10.1049/ccs.2018.0005