Automatic Temporal Segmentation for Post-Stroke Rehabilitation: A Keypoint Detection and Temporal Segmentation Approach for Small Datasets
Journal:
arXiv
Published Date:
Feb 27, 2025
Abstract
Rehabilitation is essential and critical for post-stroke patients, addressing
both physical and cognitive aspects. Stroke predominantly affects older adults,
with 75% of cases occurring in individuals aged 65 and older, underscoring the
urgent need for tailored rehabilitation strategies in aging populations.
Despite the critical role therapists play in evaluating rehabilitation progress
and ensuring the effectiveness of treatment, current assessment methods can
often be subjective, inconsistent, and time-consuming, leading to delays in
adjusting therapy protocols.
This study aims to address these challenges by providing a solution for
consistent and timely analysis. Specifically, we perform temporal segmentation
of video recordings to capture detailed activities during stroke patients'
rehabilitation. The main application scenario motivating this study is the
clinical assessment of daily tabletop object interactions, which are crucial
for post-stroke physical rehabilitation.
To achieve this, we present a framework that leverages the biomechanics of
movement during therapy sessions. Our solution divides the process into two
main tasks: 2D keypoint detection to track patients' physical movements, and 1D
time-series temporal segmentation to analyze these movements over time. This
dual approach enables automated labeling with only a limited set of real-world
data, addressing the challenges of variability in patient movements and limited
dataset availability. By tackling these issues, our method shows strong
potential for practical deployment in physical therapy settings, enhancing the
speed and accuracy of rehabilitation assessments.