We propose an incremental, modular, and extensible method for learning robotic manipulation tasks using a limited number of demonstrations provided in Virtual Reality, while assuming minimal prior information about the objects to be manipulated. The developed framework enables an incremental training process in which the operator first demonstrates specialized tasks to the robotic system, and subsequently more complex tasks, exploiting the skills learned during the previous phases. We illustrate and discuss the method at work considering picking tasks performed by manipulators equipped with multi-fingered sensorized hands. The experimental evaluation highlights the feasibility and advantage of the proposed method, particularly in terms of modularity, low number of demonstrations, and reliability of the trained system.
Incremental Learning of Robotic Manipulation Tasks through Virtual Reality Demonstrations / Rauso, Giuseppe; Caccavale, Riccardo; Finzi, Alberto. - (2024), pp. 5176-5181. ( 2024 IEEE/RSJ International Conference on Intelligent Robots and Systems, IROS 2024 are 2024) [10.1109/iros58592.2024.10802774].
Incremental Learning of Robotic Manipulation Tasks through Virtual Reality Demonstrations
Rauso, Giuseppe;Caccavale, Riccardo;Finzi, Alberto
2024
Abstract
We propose an incremental, modular, and extensible method for learning robotic manipulation tasks using a limited number of demonstrations provided in Virtual Reality, while assuming minimal prior information about the objects to be manipulated. The developed framework enables an incremental training process in which the operator first demonstrates specialized tasks to the robotic system, and subsequently more complex tasks, exploiting the skills learned during the previous phases. We illustrate and discuss the method at work considering picking tasks performed by manipulators equipped with multi-fingered sensorized hands. The experimental evaluation highlights the feasibility and advantage of the proposed method, particularly in terms of modularity, low number of demonstrations, and reliability of the trained system.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


