Human-in-the-Loop Optimization for Deep Stimulus Encoding in Visual Prostheses
Jacob Granley, Tristan Fauvel, Matthew Chalk, Michael Beyeler

TL;DR
This paper introduces a novel approach combining deep learning and Bayesian optimization to personalize stimulus encoding in visual prostheses, significantly improving visual perception quality for patients.
Contribution
A new method that trains a deep encoder to invert a forward model and uses Bayesian optimization for minimal-feedback personalization in neuroprostheses.
Findings
Rapid learning of personalized stimulus encoders
Significant improvements in visual perception quality
Robustness to noisy patient feedback
Abstract
Neuroprostheses show potential in restoring lost sensory function and enhancing human capabilities, but the sensations produced by current devices often seem unnatural or distorted. Exact placement of implants and differences in individual perception lead to significant variations in stimulus response, making personalized stimulus optimization a key challenge. Bayesian optimization could be used to optimize patient-specific stimulation parameters with limited noisy observations, but is not feasible for high-dimensional stimuli. Alternatively, deep learning models can optimize stimulus encoding strategies, but typically assume perfect knowledge of patient-specific variations. Here we propose a novel, practically feasible approach that overcomes both of these fundamental limitations. First, a deep encoder network is trained to produce optimal stimuli for any individual patient by…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neuroscience and Neural Engineering · EEG and Brain-Computer Interfaces
