Fitness Ortamları için EgzersizTakip ve Kullanıcı Tanımlama Sistemi


Gürsoy R., Yüceyalçın F., Soydaş M. A.

TÜBİTAK Projesi, 2024 - 2025

  • Proje Türü: TÜBİTAK Projesi
  • Başlama Tarihi: Mart 2024
  • Bitiş Tarihi: Mart 2025

Proje Özeti

 In modern fitness environments, accurate tracking of user ac tivity and identification poses significant challenges due to the dynamic nature of gym settings. This project introduces an innovative system that uses RFID for entry/exit tracking and OSNet-based deep learning for robust, real-time re-identification of a person. The system incorpo rates a custom-designed wearable device with IMU sensors and machine learning algorithms to monitor and analyze exercises with high accuracy and minimal user intervention. A key design principle of this system is seamless usability, prioritizing minimal disruption to the user’s work out flow. Once checked in via RFID, users are passively tracked across stations without requiring further action, allowing them to focus solely on their exercise routines. Each station operates independently, using a sequence of motion detection, re-identification, and exercise-specific analysis, while multi-threading enables simultaneous monitoring across multiple stations. The system employs a dual-modality approach, com bining data from IMU sensors on a wrist-worn device with video-based pose estimation to accurately track user movements and exercise form. This complementary setup ensures robustness, compensating for limi tations in each modality—for example, addressing occlusions in video or stationary poses undetectable by IMU. Together, these data streams allow for precise repetition counting and detailed movement analysis, making the system adaptable to diverse exercise types and enhancing the accuracy and reliability of real-time exercise monitoring.