Machine Learning-based Multi-Class Classification of Human Fitness Activities for Personalized Wellness Solutions
Metadata
Show full item recordEditorial
Universidad de Granada
Materia
Human lifestyle Fitness solutions Personalized wellness Machine learning Predictive analytics
Date
2024-12-31Referencia bibliográfica
B. Vasantha, Pandiri Sanjana, Survi Nishitha Goud, Thukkani Mounika (2024). Machine Learning- based Multi-Class Classification of Human Fitness Activities for Personalized Wellness Solutions. Journal for Educators, Teachers and Trainers JETT, Vol.15(5);ISSN:1989-9572. DOI:10.47750/jett.2024.15.05.33
Abstract
The growth of sedentary lifestyles and lifestyle-related health conditions has highlighted the need for
individualized wellness solutions to promote physical activity and health. Basic exercises like jumping
jacks and squats to complex routines like pull-ups promote physical health and personalized wellness.
General advice or manual tracking methods could not provide enough precision and customisation to
meet individual fitness needs. Manual fitness diaries, basic workout regimens, and standardized fitness
exams gave limited user performance and progress insights, sometimes resulting in unsatisfactory
results. These labour-intensive, error-prone, and unadaptable methods made it hard to achieve goals or
discover areas for improvement. This research uses new computational methods to improve fitness
monitoring systems, inspired by the transformational potential of AI and ML in healthcare and fitness.
Machine learning can create intelligent algorithms that classify human fitness activities using wearable
technologies, sensor data, and massive datasets. Personal feedback, performance evaluation, and
adaptable exercise plans are possible with this technique. Growing need for data-driven wellness
solutions, ML algorithm breakthroughs, and scalable systems for different populations inspire us.
Traditional systems struggle to interpret massive amounts of real-time data, recognize actions
accurately, and scale personalized recommendations. Our suggested system classifies fitness activities
using labeled sensor data and machine learning methods. This method provides accurate activity
recognition and rich user performance insights. This comprehensive, automated, and scalable
technology improves fitness routines, individualized wellbeing, and healthier lifestyles by solving
existing approaches' shortcomings. This novel system could revolutionize fitness tracking and help
achieve long-term wellness goals.