Experimental Study on Time Series Analysis of Lower Limb Rehabilitation Exercise Data Driven by Novel Model Architecture and Large Models
Journal:
arXiv
Published Date:
Apr 4, 2025
Abstract
This study investigates the application of novel model architectures and
large-scale foundational models in temporal series analysis of lower limb
rehabilitation motion data, aiming to leverage advancements in machine learning
and artificial intelligence to empower active rehabilitation guidance
strategies for post-stroke patients in limb motor function recovery. Utilizing
the SIAT-LLMD dataset of lower limb movement data proposed by the Shenzhen
Institute of Advanced Technology, Chinese Academy of Sciences, we
systematically elucidate the implementation and analytical outcomes of the
innovative xLSTM architecture and the foundational model Lag-Llama in
short-term temporal prediction tasks involving joint kinematics and dynamics
parameters. The research provides novel insights for AI-enabled medical
rehabilitation applications, demonstrating the potential of cutting-edge model
architectures and large-scale models in rehabilitation medicine temporal
prediction. These findings establish theoretical foundations for future
applications of personalized rehabilitation regimens, offering significant
implications for the development of customized therapeutic interventions in
clinical practice.