Title: Brain-machine interface based on transfer-learning for detecting the appearance of obstacles during exoskeleton-assisted walking |
Authors: Quiles, Vicente Ferrero, Laura Iáñez, Eduardo Ortiz, Mario Gil-Agudo, Ángel Azorín, José M |
Editor: Frontiers Media |
Department: Departamentos de la UMH::Ingeniería Mecánica y Energía |
Issue Date: 2023-03-14 |
URI: https://hdl.handle.net/11000/38393 |
Abstract:
Introduction: Brain-machine interfaces (BMIs) attempt to establish
communication between the user and the device to be controlled. BMIs
have great challenges to face in order to design a robust control in the real field
of application. The artifacts, high volume of training data, and non-stationarity
of the signal of EEG-based interfaces are challenges that classical processing
techniques do not solve, showing certain shortcomings in the real-time domain.
Recent advances in deep-learning techniques open a window of opportunity to
solve some of these problems. In this work, an interface able to detect the evoked
potential that occurs when a person intends to stop due to the appearance of an
unexpected obstacle has been developed.
Material and methods: First, the interface was tested on a treadmill with five
subjects, in which the user stopped when an obstacle appeared (simulated by a
laser). The analysis is based on two consecutive convolutional networks: the first
one to discern the intention to stop against normal walking and the second one
to correct false detections of the previous one.
Results and discussion: The results were superior when using the methodology of
the two consecutive networks vs. only the first one in a cross-validation pseudoonline analysis. The false positives per min (FP/min) decreased from 31.8 to 3.9
FP/min and the number of repetitions in which there were no false positives and
true positives (TP) improved from 34.9% to 60.3% NOFP/TP. This methodology
was tested in a closed-loop experiment with an exoskeleton, in which the brainmachine interface (BMI) detected an obstacle and sent the command to the
exoskeleton to stop. This methodology was tested with three healthy subjects,
and the online results were 3.8 FP/min and 49.3% NOFP/TP. To make this model
feasible for non-able bodied patients with a reduced and manageable time frame,
transfer-learning techniques were applied and validated in the previous tests, and
were then applied to patients. The results for two incomplete Spinal Cord Injury
(iSCI) patients were 37.9% NOFP/TP and 7.7 FP/min.
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Keywords/Subjects: BMI stopping intention exoskeleton EEG transfer-learning closed-loop |
Knowledge area: CDU: Ciencias aplicadas: Ingeniería. Tecnología |
Type of document: info:eu-repo/semantics/article |
Access rights: info:eu-repo/semantics/openAccess Attribution-NonCommercial-NoDerivatives 4.0 Internacional |
DOI: https://doi.org/10.3389/fnins.2023.1154480 |
Published in: Frontiers in Neuroscience, 14 March 2023, Sec. Neural Technology, Volume 17 - 2023 |
Appears in Collections: Artículos Ingeniería Mecánica y Energía
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