Computer Vision-based Approach Using Deep Learning for Breast Cancer Rehabilitation Evaluation: A Comparative Performance of CNN and RNN Using Skeleton Data

Authors

  • Muriati Muda Faculty of Computer, Media and Technology Management, University College TATI, Teluk Kalong, 24000, Kemaman, Terengganu, Malaysia
  • Azim Zaliha Abd Aziz Faculty of Informatics and Computing, Universiti Sultan Zainal Abidin, Tembila Campus, 22200, Besut, Terengganu, Malaysia
  • Chirawat Wattanapanich School of Engineering and Technology, Walailak University 222 Thaiburi, Thasala District Nakhonsrithammarat 80161, Thailand

DOI:

https://doi.org/10.37934/ard.134.1.4654

Keywords:

Computer vision, deep learning, rehabilitation evaluation, CNN, RNN, skeleton dataset, breast cancer rehabilitation

Abstract

Breast cancer rehabilitation plays a crucial role in the recovery process of post-treatment, emphasizing the significance of effective evaluation systems for rehabilitation exercises. This study explores into the utilization of depth-sensing technologies, particularly focusing on skeleton data, in assessing the efficacy of these exercises. Leveraging the ability of deep learning techniques, specifically Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN), this study aims to compare their performance in evaluating breast cancer rehabilitation exercises based on skeleton data. The study conducts a comprehensive regression analysis to assess and compare the models' capabilities. The experimental results reveal insights into the comparative effectiveness of CNN and RNN in evaluating the nuances of these exercises, shedding light on their potential applications in enhancing breast cancer rehabilitation evaluation systems.

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Published

2025-06-13

How to Cite

Muda, M. ., Abd Aziz, A. Z. ., & Wattanapanich, C. . (2025). Computer Vision-based Approach Using Deep Learning for Breast Cancer Rehabilitation Evaluation: A Comparative Performance of CNN and RNN Using Skeleton Data. Journal of Advanced Research Design, 134(1), 46–54. https://doi.org/10.37934/ard.134.1.4654
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