Personalized On-line Adaptation of Kinematic Synergies for Human-Prosthesis Interfaces
Ricardo Garcia-Rosas, Ying Tan, Denny Oetomo, Chris Manzie, and Peter, Choong

TL;DR
This paper introduces a real-time personalized approach for adapting kinematic synergies in human-prosthesis interfaces, enabling effective customization for individual users by modeling motor behavior and learning dynamics.
Contribution
It proposes a systematic on-line personalization method that models individual motor traits and adapts synergies concurrently with motor learning, without re-tuning for each user.
Findings
Effective in achieving optimal synergies
Fast convergence across individuals
Works in virtual reality simulations
Abstract
Synergies have been adopted in prosthetic limb applications to reduce complexity of design, but typically involve a single synergy setting for a population and ignore individual preference or adaptation capacity. However, personalization of the synergy setting is necessary for the effective operation of the prosthetic device. Two major challenges hinder the personalization of synergies in human-prosthesis interfaces. The first is related to the process of human motor adaptation and the second to the variation in motor learning dynamics of individuals. In this paper, a systematic personalization of kinematic synergies for human-prosthesis interfaces using on-line measurements from each individual is proposed. The task of reaching using the upper-limb is described by an objective function and the interface is parameterized by a kinematic synergy. Consequently, personalizing the interface…
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