Open Access Open Access  Restricted Access Subscription Access

FIT-QUEST – Personal Fitness App

Alan Beno, Akshay Krishnan, Aswanth U, Saeed Rizwi, Prof. Ambili M P

Abstract


FitQuest is a fitness app designed to make home workouts more engaging by incorporating gamification elements. It tailors exercises such as squats and pushups, offering real-time feedback on form using Google's ML Kit for posture detection. The app boosts user motivation with rewards, progress tracking, and social interactions like challenges. Its development employs user-centered design principles and continuous improvement based on testing. The effectiveness of FitQuest will be assessed through user participation and adherence metrics, with future enhancements planned for AIpowered exercise recommendations and integration with wearables

Full Text:

PDF

References


. E. Siira, J. Häikiö and E. Annanperä, "Mobile gaming in gyms — Can fitness and games join together?," 2018 IEEE 6th International Conference on Serious Games and Applications for Health (SeGAH), Vienna, Austria, 2018, pp. 1-6, doi: 10.1109/SeGAH.2018.8401350.

. Hannan, Abdul & Shafiq, Muhammad & Hussain, Faisal & Pires, Ivan. (2021). A Portable Smart Fitness Suite for Real-Time Exercise Monitoring and Posture Correction. 21.10.3390/s21196692

. V. S. P. Bhamidipati, I. Saxena, D. Saisanthiya and M. Retnadhas, "Robust Intelligent Posture Estimation for an AI Gym Trainer using Mediapipe and OpenCV," 2023 International Conference on Networking and Communications (ICNWC), Chennai, India, 2023, pp. 1-7 doi:10.1109/ICNWC57852.2023.10127264

. Bagga, Ereena & Yang, Ang. (2024). Real-Time Posture Monitoring and Risk Assessment for Manual Lifting Tasks Using MediaPipe and LSTM. 10.48550/arXiv.2408.12796.

. Utilizing Google’s Machine Learning Kit in Developing Android Application by chi Nguyen.

. Zhang, X., & Wang, J. (2020). Human Pose Estimation with Deep Learning: A Review.

IEEE Transactions on Circuits and Systems for Video Technology.

. Rahman, M., Roggen, D., & Parate, A. (2019). Counting Repetitions in Exercises Using Wearable Sensors and Machine Learning. ACM UbiComp.

. Shoaib, M., Bosch, S., Incel, O. D., Scholten, H., & Havinga, P. J. (2015). Complex Human Activity Recognition Using Smartphone and Wrist-Worn Motion Sensors. Sensors, 15(5), 11001-11025.

. Chen, K., Lin, M., Chen, H., & Ke, W. (2021). Deep Learning-based Exercise Posture Recognition and Repetition Counting using Mobile Devices. IEEE Access.

. Mathur, A., & Nadeem, T. (2019). Using Computer Vision for Automated Exercise Analysis: A Review. International Conference on Artificial Intelligence and Signal Processing (AISP).


Refbacks

  • There are currently no refbacks.