Sensor-Based Gym Physical Exercise Recognition: Data Acquisition and Experiments

Sensors (Basel). 2022 Mar 24;22(7):2489. doi: 10.3390/s22072489.

Abstract

Automatic tracking and quantification of exercises not only helps in motivating people but also contributes towards improving health conditions. Weight training, in addition to aerobic exercises, is an important component of a balanced exercise program. Excellent trackers are available for aerobic exercises but, in contrast, tracking free weight exercises is still performed manually. This study presents the details of our data acquisition effort using a single chest-mounted tri-axial accelerometer, followed by a novel method for the recognition of a wide range of gym-based free weight exercises. Exercises are recognized using LSTM neural networks and the reported results confirm the feasibility of the proposed approach. We train and test several LSTM-based gym exercise recognition models. More specifically, in one set of experiments, we experiment with separate models, one for each muscle group. In another experiment, we develop a universal model for all exercises. We believe that the promising results will potentially contribute to the vision of an automated system for comprehensive monitoring and analysis of gym-based exercises and create a new experience for exercising by freeing the exerciser from manual record-keeping.

Keywords: Internet of Things (IoT); LSTM; gym exercise recognition; human activity recognition; inertial sensor; smart sensor.

MeSH terms

  • Exercise Therapy*
  • Exercise* / physiology
  • Humans
  • Neural Networks, Computer