HearFit+: Personalized Fitness Monitoring via Audio Signals on Smart Speakers
Journal:
arXiv
Published Date:
Mar 30, 2025
Abstract
Fitness can help to strengthen muscles, increase resistance to diseases, and
improve body shape. Nowadays, a great number of people choose to exercise at
home/office rather than at the gym due to lack of time. However, it is
difficult for them to get good fitness effects without professional guidance.
Motivated by this, we propose the first personalized fitness monitoring system,
HearFit+, using smart speakers at home/office. We explore the feasibility of
using acoustic sensing to monitor fitness. We design a fitness detection method
based on Doppler shift and adopt the short time energy to segment fitness
actions. Based on deep learning, HearFit+ can perform fitness classification
and user identification at the same time. Combined with incremental learning,
users can easily add new actions. We design 4 evaluation metrics (i.e.,
duration, intensity, continuity, and smoothness) to help users to improve
fitness effects. Through extensive experiments including over 9,000 actions of
10 types of fitness from 12 volunteers, HearFit+ can achieve an average
accuracy of 96.13% on fitness classification and 91% accuracy for user
identification. All volunteers confirm that HearFit+ can help improve the
fitness effect in various environments.