Nowadays, yoga has become a part of life for many people. Exercises and sports technological assistance is implemented in yoga pose identification. In this work, a self-assistance based yoga posture identification technique is developed, which helps users to perform Yoga with the correction feature in Real-time. The work also presents Yoga-hand mudra (hand gestures) identification. The YOGI dataset has been developed which include 10 Yoga postures with around 400-900 images of each pose and also contain 5 mudras for identification of mudras postures. It contains around 500 images of each mudra. The feature has been extracted by making a skeleton on the body for yoga poses and hand for mudra poses. Two different algorithms have been used for creating a skeleton one for yoga poses and the second for hand mudras. Angles of the joints have been extracted as a features for different machine learning and deep learning models. among all the models XGBoost with RandomSearch CV is most accurate and gives 99.2\% accuracy. The complete design framework is described in the present paper.
翻译:目前,瑜伽已成为许多人生活的一部分。在瑜伽中进行锻炼和体育技术援助,以辨别成形。在这项工作中,开发了一种基于自助的瑜伽姿势识别技术,帮助用户进行实时矫正功能的瑜伽。工作还展示了瑜伽手式泥浆(手势)识别。YOGI数据集包括10个瑜伽姿势,每个姿势大约400-900张图像,还包含5个泥浆,用于识别泥浆姿势。它包含每块泥浆的大约500幅图像。通过在身体上做一个骨架,用于瑜伽姿势和泥浆姿。用两种不同的算法制作了瑜伽姿势的骨架,而用手泥浆的骨架则使用两种不同的算法。连接的角是不同的机器学习和深层学习模型的特征。在所有模型中,带有Rand Search CV的XGBoost非常准确,并提供了992 ⁇ 的准确度。本文中描述了完整的设计框架。