Exploring Tradeoffs of Annotation Cost and Model Accuracy with Contrastive Learning for Yoga Pose Classification
Zolboo Damiran, Tomokazu Matsui, Yuki Matsuda, Hirohiko Suwa, Keiichi Yasumoto: “Exploring Tradeoffs of Annotation Cost and Model Accuracy with Contrastive Learning for Yoga Pose Classification,” The 21st International Conference on Intelligent Environments (IE '25), pp.1-8, 2025.
Abstract
Yoga pose classification is critical for intelligent environments, health, and fitness applications. This study investigates resource-efficient implementations of classification models using contrastive learning frameworks, including SimCLR, MoCo, and BYOL. We evaluate their performance across varying levels of labeled data, focusing on accuracy, computational efficiency, and robustness. MoCo offers a balanced tradeoff with 87.59% accuracy at 50% labeled data, while BYOL achieves strong results with faster inference. SimCLR, suitable for real-time applications due to faster training, consumes more memory and has slower inference. We apply data augmentation and normalization in the preprocessing pipeline to enhance generalization and address challenges like limited data and class imbalance. These techniques improve the model’s resilience and learning efficiency. Our findings guide scalable, energy-efficient, user-centered yoga pose classification models for intelligent environments.
Award
Best Presentation Award
Links
DOI: https://doi.org/10.1109/IE64880.2025.11130168
PDF: https://cocolab.jp/publication/files/202506_IE_Zolboo.pdf
BibTeX
code:references.bib
@inproceedings{bib:zolboo_yoga_ie2025,
author={Damiran, Zolboo and Matsui, Tomokazu and Matsuda, Yuki and Suwa, Hirohiko and Yasumoto, Keiichi},
title={Exploring Tradeoffs of Annotation Cost and Model Accuracy with Contrastive Learning for Yoga Pose Classification},
booktitle={The 21st International Conference on Intelligent Environments (IE '25)},
pages={1--8},
year={2025},
doi={10.1109/IE64880.2025.11130168},
url={https://doi.org/10.1109/IE64880.2025.11130168}
}
https://scrapbox.io/files/68ca6e1c9edcf53fe36e42fb.png
Category
International Conference Paper(国際会議)
Conference
IE
IE2025
Keywords
Yoga(ヨガ)
Healthcare(ヘルスケア)
Fitness(フィットネス)
Contrastive Learning(対照学習)
Wearable Computing(ウェアラブルコンピューティング)
IMU(慣性センサ)
Sports(スポーツ)
Collaborating Organization
NAIST(奈良先端科学技術大学院大学)
#Award