Deteksi Ketepatan Pose Yoga menggunakan Metode Bidirectional Gated Recurrent Unit Berbasis Video
Accuracy Detection of Yoga Poses using Video-Based Bidirectional Gated Recurrent Unit Method

Date
2025Author
Sofia, Nadia
Advisor(s)
Nasution, Umaya Ramadhani Putri
Metadata
Show full item recordAbstract
Yoga is a physical and mental activity that is gaining popularity among people,
especially the younger generation, for its benefits in improving physical health and
emotional balance. However, practicing yoga on one's own without an instructor
poses a risk of injury if the poses are incorrect. This problem is exacerbated by limited
access to professional yoga classes due to time and cost constraints. This research
aims to develop a yoga pose accuracy detection system based on deep learning
technology using the Bidirectional Gated Recurrent Unit method. The system is
designed to provide automatic feedback and pose correction to users who perform
yoga exercises independently. The dataset used in this research consists of six classes
of yoga poses, namely Downward Dog, Tree, Plank, Boat, Warrior II, and Shoulder
Stand, which are obtained from Youtube videos and personal recordings. The video
data was then extracted into frames using OpenCV and processed using the
MediaPipe framework to generate body keypoints. The keypoints data is formed into a
sequence and used as input for the BiGRU model to detect overall pose accuracy
based on movement dynamics. The implementation results show that the system is able
to detect poses with 93.3% accuracy and provide feedback in the form of voice and
text alerts if the user's movements are not appropriate. Thus, this system can help
users practice yoga more safely, effectively, and efficiently without the need for the
presence of a professional instructor. This research is expected to be an alternative
artificial intelligence-based solution in supporting a healthy lifestyle and reducing the
risk of injury due to posture errors in independent yoga practice.
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- Undergraduate Theses [858]