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Learning by Demonstration for Motion Planning of Upper-Limb Exoskeletons


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Título :
Learning by Demonstration for Motion Planning of Upper-Limb Exoskeletons
Autor :
Badesa, Francisco Javier
García Aracil, Nicolás
Catalán, José María
Zollo, Loredana
Pagliara, Silvio Marcello
Sterzi, Silvia
Lauretti, Clemente
Cordella, Francesca
Crea, Simona
Ciancio, Anna Lisa
Trigili, Emilio
Vitiello, Nicola
Editor :
Frontiers Media
Departamento:
Departamentos de la UMH::Ingeniería de Sistemas y Automática
Fecha de publicación:
2018
URI :
https://hdl.handle.net/11000/31253
Resumen :
The reference joint position of upper-limb exoskeletons is typically obtained by means of Cartesian motion planners and inverse kinematics algorithms with the inverse Jacobian; this approach allows exploiting the available Degrees of Freedom (i.e. DoFs) of the robot kinematic chain to achieve the desired end-effector pose; however, if used to operate non-redundant exoskeletons, it does not ensure that anthropomorphic criteria are satisfied in the whole human-robot workspace. This paper proposes a motion planning system, based on Learning by Demonstration, for upper-limb exoskeletons that allow successfully assisting patients during Activities of Daily Living (ADLs) in unstructured environment, while ensuring that anthropomorphic criteria are satisfied in the whole human-robot workspace. The motion planning system combines Learning by Demonstration with the computation of Dynamic Motion Primitives and machine learning techniques to construct task- and patient-specific joint trajectories based on the learnt trajectories. System validation was carried out in simulation and in a real setting with a 4- DoF upper-limb exoskeleton, a 5-DoF wrist-hand exoskeleton and four patients with Limb Girdle Muscular Dystrophy. Validation was addressed to (i) compare the performance of the proposed motion planning with traditional methods; (ii) assess the generalization capabilities of the proposed method with respect to the environment variability. Three ADLs were chosen to validate the system: drinking, pouring and lifting a light sphere. The achieved results showed a 100% success rate in the task fulfillment, with a high level of generalization with respect to the environment variability. Moreover, an anthropomorphic configuration of the exoskeleton is always ensured.
Palabras clave/Materias:
motion planning
machine learning
learning by demonstration
dynamics movement primitives
assistive robotics
Tipo de documento :
info:eu-repo/semantics/article
Derechos de acceso:
info:eu-repo/semantics/openAccess
Attribution-NonCommercial-NoDerivatives 4.0 Internacional
DOI :
https://doi.org/10.3389/fnbot.2018.00005
Aparece en las colecciones:
Artículos Ingeniería de Sistemas y Automática



Creative Commons La licencia se describe como: Atribución-NonComercial-NoDerivada 4.0 Internacional.