TY - GEN
T1 - Yoga Pose Estimation with Machine Learning
AU - Tan, Jun Zhi
AU - Lee, Chin Poo
AU - Lim, Kian Ming
AU - Lim, Jit Yan
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - Yoga pose estimation involves the use of computer vision algorithms to automatically identify and track yoga poses from images or videos. This study focuses on improving the accuracy and performance of pose estimation systems through the application of OpenPose keypoint detection, SMOTE, and LightGBM classification. OpenPose is utilized for keypoint detection, enabling the identification of specific points on the body and resulting in more precise pose estimation. To address class imbalance issues, SMOTE is employed to ensure a balanced representation of poses by oversampling minority classes. Additionally, LightGBM classification is utilized to enhance model performance, benefiting from its ability to handle large datasets, faster training speed, and high accuracy. The research utilizes two datasets: the Yoga Pose Image Classification dataset and a self-collected dataset, consisting of 5994 and 5431 images, respectively. The proposed method achieved an accuracy of 56.18% on the Yoga Pose Image Classification dataset with 107 classes and 71.47% on the self-collected dataset with 50 classes, outperforming existing models.
AB - Yoga pose estimation involves the use of computer vision algorithms to automatically identify and track yoga poses from images or videos. This study focuses on improving the accuracy and performance of pose estimation systems through the application of OpenPose keypoint detection, SMOTE, and LightGBM classification. OpenPose is utilized for keypoint detection, enabling the identification of specific points on the body and resulting in more precise pose estimation. To address class imbalance issues, SMOTE is employed to ensure a balanced representation of poses by oversampling minority classes. Additionally, LightGBM classification is utilized to enhance model performance, benefiting from its ability to handle large datasets, faster training speed, and high accuracy. The research utilizes two datasets: the Yoga Pose Image Classification dataset and a self-collected dataset, consisting of 5994 and 5431 images, respectively. The proposed method achieved an accuracy of 56.18% on the Yoga Pose Image Classification dataset with 107 classes and 71.47% on the self-collected dataset with 50 classes, outperforming existing models.
KW - Keypoint
KW - LightGBM
KW - Yoga Pose Estimation
UR - http://www.scopus.com/inward/record.url?scp=85174397173&partnerID=8YFLogxK
U2 - 10.1109/ICoICT58202.2023.10262445
DO - 10.1109/ICoICT58202.2023.10262445
M3 - Conference contribution
AN - SCOPUS:85174397173
T3 - International Conference on ICT Convergence
SP - 260
EP - 265
BT - 2023 11th International Conference on Information and Communication Technology, ICoICT 2023
PB - IEEE Computer Society
T2 - 11th International Conference on Information and Communication Technology, ICoICT 2023
Y2 - 23 August 2023 through 24 August 2023
ER -