Back to Search Start Over

Mastering Contact-rich Tasks by Combining Soft and Rigid Robotics with Imitation Learning

Authors :
Montero, Mariano Ramírez
Shahabi, Ebrahim
Franzese, Giovanni
Kober, Jens
Mazzolai, Barbara
Della Santina, Cosimo
Publication Year :
2024

Abstract

Soft robots have the potential to revolutionize the use of robotic systems with their capability of establishing safe, robust, and adaptable interactions with their environment, but their precise control remains challenging. In contrast, traditional rigid robots offer high accuracy and repeatability but lack the flexibility of soft robots. We argue that combining these characteristics in a hybrid robotic platform can significantly enhance overall capabilities. This work presents a novel hybrid robotic platform that integrates a rigid manipulator with a fully developed soft arm. This system is equipped with the intelligence necessary to perform flexible and generalizable tasks through imitation learning autonomously. The physical softness and machine learning enable our platform to achieve highly generalizable skills, while the rigid components ensure precision and repeatability.<br />Comment: Corrected missing citation

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.07787
Document Type :
Working Paper