An ocular biomechanics environment for reinforcement learning
Author(s)
Iskander, J; Hossny, M;
Journal Title
Journal of Biomechanics
Abstract
Reinforcement learning has been applied to human movement through physiologically-based biomechanical models to add insights into the neural control of these movements; it is also useful in the design of prosthetics and robotics. In this paper, we extend the use of reinforcement learning into controlling an ocular biomechanical system to perform saccades, which is one of the fastest eye movement systems. We describe an ocular environment and an agent trained using Deep Deterministic Policy Gradients method to perform saccades. The agent was able to match the desired eye position with a mean deviation angle of 3.5 degrees +/-1.25 degrees . The proposed framework is a first step towards using the capabilities of deep reinforcement learning to enhance our understanding of ocular biomechanics.
Publisher
Elsevier
Keywords
Eye movement; Neural networks; Ocular biomechanics; Reinforcement learning; Saccades
Research Division(s)
Bioinformatics
PubMed ID
35121383
Terms of Use/Rights Notice
Refer to copyright notice on published article.


Creation Date: 2022-02-18 11:34:00
Last Modified: 2022-02-18 11:40:54
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