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dc.contributor.authorBhambhani, Yash-
dc.contributor.authorOrtiz, Mario-
dc.contributor.authorPolo-Hortig, Cristina-
dc.contributor.authorQuiles, Vicente-
dc.contributor.authorCavaliere-Ballesta, Carlo-
dc.contributor.authorIañez, Eduardo-
dc.contributor.authorAzorín, Jose M.-
dc.contributor.otherDepartamentos de la UMH::Ingeniería Mecánica y Energíaes_ES
dc.date.accessioned2026-04-14T11:56:56Z-
dc.date.available2026-04-14T11:56:56Z-
dc.date.created2025-
dc.identifier.citationIEEE International Conference on Systems, Man, and Cybernetics (SMC) October 5-8, 2025.es_ES
dc.identifier.urihttps://hdl.handle.net/11000/39737-
dc.description.abstractBrain–machine interfaces (BMI) for lower-limb exoskeletons are a state-of-the-art neurorehabilitation modality. They decode electroencephalographic (EEG) recordings during motor imagery (MI)—the mental rehearsal of movement—to infer intent and drive exoskeleton control. Yet MI decoding suffers from low signal-to-noise ratio, EEG non-stationarity, and high inter-trial/subject variability. Conventional machine-learning classifiers further struggle with limited training data and overfitting, undermining real-time robustness. In this preliminary, offline study on a single subject, a novel semi-supervised MI-classification network is implemented that includes an L2-normalized autoencoder with dual reconstruction and classification branches—that, to our knowledge, is the first correctly tailored for closed-loop lower-limb exoskeleton control. This method is compared against four supervised approaches using a hybrid feature-extraction pipeline capturing spectral, spatial, and temporal EEG dynamics. Supervised models were evaluated via leave-one-out cross-validation, while the semi-supervised framework’s latent representations were examined with K-means clustering and t-Stochastic Neighbour Embeddings (t-SNE). Event-based false-positive (FPR) and true-positive ratios (TPR) served as comparative metrics. All approaches achieved 61–67 % accuracy, with the semi-supervised network showing a lower FPR—suggesting its promise for more robust, data-efficient BMI-driven exoskeleton control.es_ES
dc.formatapplication/pdfes_ES
dc.format.extent6es_ES
dc.language.isoenges_ES
dc.publisherIEEE Xplorees_ES
dc.rightsinfo:eu-repo/semantics/openAccesses_ES
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 Internacional*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.subject.otherCDU::6 - Ciencias aplicadas::62 - Ingeniería. Tecnologíaes_ES
dc.titleSupervised and Semi - Supervised Machine Learning Networks applied for control of a Lower - Limb Exoskeletones_ES
dc.typeinfo:eu-repo/semantics/articlees_ES
dc.relation.publisherversion10.1109/SMC58881.2025.11343432es_ES
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Artículos Ingeniería Mecánica y Energía


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