Human-robot co-manipulation of large but lightweight elements made by soft materials is a challenging operation that presents several relevant industrial applications. This paper proposes using a 3D camera to track the deformation of soft materials for human-robot co-manipulation. Thanks to a Convolutional Neural Network (CNN), the acquired depth image is processed to estimate the element deformation. The output of the CNN is the feedback for the robot controller to track a given set-point of deformation.
A data-driven approach to human-robot co-manipulation of soft materials
Giorgio NicolaPrimo
Writing – Original Draft Preparation
;Enrico VillagrossiSecondo
Writing – Review & Editing
;Nicola PedrocchiUltimo
Supervision
2022
Abstract
Human-robot co-manipulation of large but lightweight elements made by soft materials is a challenging operation that presents several relevant industrial applications. This paper proposes using a 3D camera to track the deformation of soft materials for human-robot co-manipulation. Thanks to a Convolutional Neural Network (CNN), the acquired depth image is processed to estimate the element deformation. The output of the CNN is the feedback for the robot controller to track a given set-point of deformation.File in questo prodotto:
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