D-STGCNT: A Dense Spatio-Temporal Graph Conv-GRU Network based on
transformer for assessment of patient physical rehabilitation
- URL: http://arxiv.org/abs/2401.06150v1
- Date: Thu, 21 Dec 2023 00:38:31 GMT
- Title: D-STGCNT: A Dense Spatio-Temporal Graph Conv-GRU Network based on
transformer for assessment of patient physical rehabilitation
- Authors: Youssef Mourchid, Rim Slama
- Abstract summary: This paper introduces a new graph-based model for assessing rehabilitation exercises.
Dense connections and GRU mechanisms are used to rapidly process large 3D skeleton inputs.
The evaluation of our proposed approach on the KIMORE and UI-PRMD datasets highlighted its potential.
- Score: 0.3626013617212666
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This paper tackles the challenge of automatically assessing physical
rehabilitation exercises for patients who perform the exercises without
clinician supervision. The objective is to provide a quality score to ensure
correct performance and achieve desired results. To achieve this goal, a new
graph-based model, the Dense Spatio-Temporal Graph Conv-GRU Network with
Transformer, is introduced. This model combines a modified version of STGCN and
transformer architectures for efficient handling of spatio-temporal data. The
key idea is to consider skeleton data respecting its non-linear structure as a
graph and detecting joints playing the main role in each rehabilitation
exercise. Dense connections and GRU mechanisms are used to rapidly process
large 3D skeleton inputs and effectively model temporal dynamics. The
transformer encoder's attention mechanism focuses on relevant parts of the
input sequence, making it useful for evaluating rehabilitation exercises. The
evaluation of our proposed approach on the KIMORE and UI-PRMD datasets
highlighted its potential, surpassing state-of-the-art methods in terms of
accuracy and computational time. This resulted in faster and more accurate
learning and assessment of rehabilitation exercises. Additionally, our model
provides valuable feedback through qualitative illustrations, effectively
highlighting the significance of joints in specific exercises.
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