Angle Heuristics Approach to determine angle of poses based on AI



EOI: 10.11242/viva-tech.01.05.077

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Citation

Piyush Yadav, Tarun Thanvi, Hamid Samani, Kirtida Naik, "Angle Heuristics Approach to determine angle of poses based on AI", VIVA-IJRI Volume 1, Issue 5, Article 77, pp. 1-7, 2022. Published by Computer Engineering Department, VIVA Institute of Technology, Virar, India.

Abstract

In recent years, yoga has become part of life for many people across the world. Due to this there is the need of scientific analysis of y postures. It has been observed that pose detection techniques can be used to identify the postures and also to assist the people to perform yoga more accurately. Recognition of posture is a challenging task due to the lack availability of dataset and also to detect posture on real-time bases. To overcome this problem a large dataset has been created which contain different yoga pose and used a tf-pos estimation Algorithm which draws a skeleton of a human body on the real-time bases. Angles of the joints in the human body are extracted using the tf-pose skeleton and used them as a feature to implement various machine learning models. 80% of the dataset has been used for training purpose and 20% of the dataset has been used for testing. This dataset is tested on different Machine learning classification models and achieves an accuracy of 99.04% by using a Random Forest Classifier

Keywords

Artificial Intelligence, Deep Learning, Human Pose Estimation, Machine Learning, Open pose, Python, Yoga

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