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Brain Computer Interface

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Brain Computer Interface

Discover seminars, jobs, and research tagged with Brain Computer Interface across World Wide.
3 curated items2 Seminars1 Position
Updated 1 day ago
3 items · Brain Computer Interface
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Position

Erik C. Johnson

Johns Hopkins University Applied Physics Laboratory
Laurel, MD, USA
Dec 5, 2025

The Intelligent Systems Center at JHU/APL is an interdisciplinary research center for neuroscientists, AI researchers, and roboticists. Please see the individual listings for specific postings and application instructions. Postings for Neuroscience-Inspired AI researchers and Computational Neuroscience researchers may also be posted soon. https://prdtss.jhuapl.edu/jobs/senior-neural-decoding-researcher-2219 https://prdtss.jhuapl.edu/jobs/senior-reinforcement-learning-researcher-615 https://prdtss.jhuapl.edu/jobs/senior-computer-vision-researcher-2242 https://prdtss.jhuapl.edu/jobs/artificial-intelligence-software-developer-2255

SeminarNeuroscience

SWEBAGS conference 2024: Shared network mechanisms of dopamine and deep brain stimulation for the treatment of Parkinson’s disease: From modulation of oscillatory cortex – basal ganglia communication to intelligent clinical brain computer interfaces

Wolf-Julian Neumann
Charité – Universitätsmedizin Berlin
Dec 4, 2024
SeminarNeuroscience

In pursuit of a universal, biomimetic iBCI decoder: Exploring the manifold representations of action in the motor cortex

Lee Miller
Northwestern University
May 19, 2022

My group pioneered the development of a novel intracortical brain computer interface (iBCI) that decodes muscle activity (EMG) from signals recorded in the motor cortex of animals. We use these synthetic EMG signals to control Functional Electrical Stimulation (FES), which causes the muscles to contract and thereby restores rudimentary voluntary control of the paralyzed limb. In the past few years, there has been much interest in the fact that information from the millions of neurons active during movement can be reduced to a small number of “latent” signals in a low-dimensional manifold computed from the multiple neuron recordings. These signals can be used to provide a stable prediction of the animal’s behavior over many months-long periods, and they may also provide the means to implement methods of transfer learning across individuals, an application that could be of particular importance for paralyzed human users. We have begun to examine the representation within this latent space, of a broad range of behaviors, including well-learned, stereotyped movements in the lab, and more natural movements in the animal’s home cage, meant to better represent a person’s daily activities. We intend to develop an FES-based iBCI that will restore voluntary movement across a broad range of motor tasks without need for intermittent recalibration. However, the nonlinearities and context dependence within this low-dimensional manifold present significant challenges.