Real-Time Decoding of Movement Onset and Offset for Brain-Controlled Rehabilitation Exoskeleton
Kanishka Mitra, Satyam Kumar, Frigyes Samuel Racz, Deland Liu, Ashish D. Deshpande, Jos\'e del R. Mill\'an

TL;DR
This paper demonstrates real-time, EEG-based control of an upper-limb exoskeleton for neurorehabilitation, enabling direct initiation and termination of movement with reliable accuracy, and introduces methods to improve decoding robustness.
Contribution
It presents a novel online dual-state motor imagery control system for exoskeletons and introduces a class-agnostic recentering method to enhance decoding accuracy and reduce bias.
Findings
Achieved 61.5% hit rate for movement onset
Achieved 64.5% hit rate for movement offset
Improved decoding separability with AUC gains of +56% and +34%
Abstract
Robot-assisted therapy can deliver high-dose, task-specific training after neurologic injury, but most systems act primarily at the limb level-engaging the impaired neural circuits only indirectly-which remains a key barrier to truly contingent, neuroplasticity-targeted rehabilitation. We address this gap by implementing online, dual-state motor imagery control of an upper-limb exoskeleton, enabling goal-directed reaches to be both initiated and terminated directly from non-invasive EEG. Eight participants used EEG to initiate assistance and then volitionally halt the robot mid-trajectory. Across two online sessions, group-mean hit rates were 61.5% for onset and 64.5% for offset, demonstrating reliable start-stop command delivery despite instrumental noise and passive arm motion. Methodologically, we reveal a systematic, class-driven bias induced by common task-based recentering using…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Stroke Rehabilitation and Recovery · Prosthetics and Rehabilitation Robotics
