A Symmetry-Based Computational Framework for Motor Skill Optimization: Integrating Screw Theory and Ecological Perception

Wangdo Kim, Wanda Ottes

Research output: Contribution to journalArticlepeer-review

Abstract

This study introduces a computational framework for understanding the symmetry and asymmetry of human movement by integrating Laban Movement Analysis (LMA). By conceptualizing movement refinement as a structured computational process, we model the golf swing as a series of state transitions where perceptual invariants guide biomechanical optimization. The golf club’s motion is analyzed using the instantaneous screw axis (ISA) and inertia tensor revealing how expert golfers dynamically adjust movement by detecting and responding to invariant biomechanical structures. This approach extends Gibson’s ecological theory by proposing that movement execution follows an iterative optimization process analogous to a Turing machine updating its states. Furthermore, we explore the role of symmetry in motor control by aligning Laban’s X-scale with structured computational transitions, demonstrating how movement coordination emerges from dynamically balanced affordance–action couplings. This insight gained from the study suggests that AI-driven sports training and rehabilitation can leverage symmetry-based computational principles to enhance motion learning and real-time adaptation in virtual and physical environments.

Original languageEnglish
Article number715
JournalSymmetry
Volume17
Issue number5
DOIs
StatePublished - May 2025

Keywords

  • affordance-based motor control
  • dynamic touch
  • inertial tensor
  • instantaneous screw axis (ISA)
  • symmetry in human movement
  • turing machine theory

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