The Analysis of the Impact of Yoga on Healthcare and Conventional Strategies for Human Pose Recognition

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Nagalakshmi Vallabhaneni, Dr. P. Prabhavathy

Abstract

Human pose estimation is a profound, established computer vision issue that has uncovered numerous past difficulties. Breaking down human exercise is advantageous in multiple fields like surveillance, biometrics, and many healthcare applications. Workout with yoga poses is famous these days since yoga activities can expand adaptability and muscular quality, and the respiration procedure will be improvised. The yoga postures evaluation is hard to check, so specialists will most likely be unable to benefit from the exercises ultimately. IoT-based yoga frameworks are required for individuals who need to rehearse Yoga at home. A few studies are recommended camera-oriented or wearable gadget-oriented yoga posture finding strategies with more precision. Nonetheless, camera-based plans have security and privacy issues, and the wearable device-based methods are illogical in the earlier applications. To build such systems, one must have a strong foundation and current research in pose estimation. In this paper, first, the impact of Yoga on humans with various stress levels is analysed on the real-time data. Second, the comprehensive review of yoga posture recognition systems from machine learning to deep learning strategies and evaluation metrics discussed

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How to Cite
Dr. P. Prabhavathy, N. V. . (2021). The Analysis of the Impact of Yoga on Healthcare and Conventional Strategies for Human Pose Recognition . Turkish Journal of Computer and Mathematics Education (TURCOMAT), 12(6), 1772–1783. Retrieved from https://turcomat.org/index.php/turkbilmat/article/view/4032
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