A Computer Vision-Based Yoga Pose Grading Approach Using Contrastive Skeleton Feature Representations

Wu, Yubin and Lin, Qianqian and Yang, Mingrun and Liu, Jing and Tian, Jing and Kapil, Dev and Vanderbloemen, Laura (2021) A Computer Vision-Based Yoga Pose Grading Approach Using Contrastive Skeleton Feature Representations. Healthcare, 10 (1). p. 36. ISSN 2227-9032

[thumbnail of healthcare-10-00036.pdf] Text
healthcare-10-00036.pdf - Published Version

Download (768kB)

Abstract

The main objective of yoga pose grading is to assess the input yoga pose and compare it to a standard pose in order to provide a quantitative evaluation as a grade. In this paper, a computer vision-based yoga pose grading approach is proposed using contrastive skeleton feature representations. First, the proposed approach extracts human body skeleton keypoints from the input yoga pose image and then feeds their coordinates into a pose feature encoder, which is trained using contrastive triplet examples; finally, a comparison of similar encoded pose features is made. Furthermore, to tackle the inherent challenge of composing contrastive examples in pose feature encoding, this paper proposes a new strategy to use both a coarse triplet example—comprised of an anchor, a positive example from the same category, and a negative example from a different category, and a fine triplet example—comprised of an anchor, a positive example, and a negative example from the same category with different pose qualities. Extensive experiments are conducted using two benchmark datasets to demonstrate the superior performance of the proposed approach.

Item Type: Article
Uncontrolled Keywords: yoga pose grading; skeleton extraction; contrastive learning; yoga pose classification; deep learning
Subjects: Eurolib Press > Medical Science
Depositing User: Managing Editor
Date Deposited: 10 Nov 2022 05:32
Last Modified: 12 Sep 2023 12:57
URI: http://info.submit4journal.com/id/eprint/86

Actions (login required)

View Item
View Item