Cross-subject Decoding of Eye Movement Goals from Local Field Potentials

11/08/2019
by   Marko Angjelichinoski, et al.
15

Objective. We consider the cross-subject decoding problem from local field potential (LFP) activity, where training data collected from the pre-frontal cortex of a subject (source) is used to decode intended motor actions in another subject (destination). Approach. We propose a novel pre-processing technique, referred to as data centering, which is used to adapt the feature space of the source to the feature space of the destination. The key ingredients of data centering are the transfer functions used to model the deterministic component of the relationship between the source and destination feature spaces. We also develop an efficient data-driven estimation approach for linear transfer functions that uses the first and second order moments of the class-conditional distributions. Main result. We apply our techniques for cross-subject decoding of eye movement directions in an experiment where two macaque monkeys perform memory-guided visual saccades to one of eight target locations. The results show peak cross-subject decoding performance of 80%, which marks a substantial improvement over random choice decoder. Significance. The analyses presented herein demonstrate that the data centering is a viable novel technique for reliable cross-subject brain-computer interfacing.

READ FULL TEXT

page 9

page 15

page 18

research
01/29/2019

Minimax-optimal decoding of movement goals from local field potentials using complex spectral features

We consider the problem of predicting eye movement goals from local fiel...
research
07/13/2020

Deep Cross-Subject Mapping of Neural Activity

In this paper, we demonstrate that a neural decoder trained on neural ac...
research
12/03/2019

Heterogeneous Label Space Transfer Learning for Brain-Computer Interfaces: A Label Alignment Approach

A brain-computer interface (BCI) system usually needs a long calibration...
research
11/21/2022

Motor Imagery Decoding Using Ensemble Curriculum Learning and Collaborative Training

Objective: In this work, we study the problem of cross-subject motor ima...
research
12/17/2018

Transfer Learning in Brain-Computer Interfaces with Adversarial Variational Autoencoders

We introduce adversarial neural networks for representation learning as ...
research
05/27/2022

Generalizing Brain Decoding Across Subjects with Deep Learning

Decoding experimental variables from brain imaging data is gaining popul...

Please sign up or login with your details

Forgot password? Click here to reset