Cleaning Tasks Knowledge Transfer Between Heterogeneous Robots: a Deep Learning Approach

被引:0
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作者
Jaeseok Kim
Nino Cauli
Pedro Vicente
Bruno Damas
Alexandre Bernardino
José Santos-Victor
Filippo Cavallo
机构
[1] Scuola Superiore Sant’Anna,BioRobotics Institute
[2] Instituto Superior Tecnico,Institute for Systems and Robotics
[3] Universidade de Lisboa,undefined
[4] CINAV — Centro de Investigação Naval,undefined
关键词
Learning from demonstration; Transfer learning; Data augmentation; Convolutional neural networks; Task parametrized Gaussian mixture models;
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摘要
Nowadays, autonomous service robots are becoming an important topic in robotic research. Differently from typical industrial scenarios, with highly controlled environments, service robots must show an additional robustness to task perturbations and changes in the characteristics of their sensory feedback. In this paper, a robot is taught to perform two different cleaning tasks over a table, using a learning from demonstration paradigm. However, differently from other approaches, a convolutional neural network is used to generalize the demonstrations to different, not yet seen dirt or stain patterns on the same table using only visual feedback, and to perform cleaning movements accordingly. Robustness to robot posture and illumination changes is achieved using data augmentation techniques and camera images transformation. This robustness allows the transfer of knowledge regarding execution of cleaning tasks between heterogeneous robots operating in different environmental settings. To demonstrate the viability of the proposed approach, a network trained in Lisbon to perform cleaning tasks, using the iCub robot, is successfully employed by the DoRo robot in Peccioli, Italy.
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页码:191 / 205
页数:14
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