4.1 Article

Deep Learning Models for Yoga Pose Monitoring

Journal

ALGORITHMS
Volume 15, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/a15110403

Keywords

yoga pose; machine learning; deep learning; data structures; asanas; C/NN; LSTM; mMedia pipe; pose prediction

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This study proposes an approach for recognizing yoga poses using deep learning algorithms, combining Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM). The system can provide real-time feedback on yoga poses through monitoring videos.
Activity recognition is the process of continuously monitoring a person's activity and movement. Human posture recognition can be utilized to assemble a self-guidance practice framework that permits individuals to accurately learn and rehearse yoga postures without getting help from anyone else. With the use of deep learning algorithms, we propose an approach for the efficient detection and recognition of various yoga poses. The chosen dataset consists of 85 videos with 6 yoga postures performed by 15 participants, where the keypoints of users are extracted using the Mediapipe library. A combination of Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) has been employed for yoga pose recognition through real-time monitored videos as a deep learning model. Specifically, the CNN layer is used for the extraction of features from the keypoints and the following LSTM layer understands the occurrence of sequence of frames for predictions to be implemented. In following, the poses are classified as correct or incorrect; if a correct pose is identified, then the system will provide user the corresponding feedback through text/speech. This paper combines machine learning foundations with data structures as the synergy between these two areas can be established in the sense that machine learning techniques and especially deep learning can efficiently recognize data schemas and make them interoperable.

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