Title
Deep Learning-Enabled Multitask System For Exercise Recognition And Counting
Abstract
Exercise is a prevailing topic in modern society as more people are pursuing a healthy lifestyle. Physical activities provide significant benefits to human well-being from the inside out. Human pose estimation, action recognition and repetitive counting fields developed rapidly in the past several years. However, few works combined them together to assist people in exercise. In this paper, we propose a multitask system covering the three domains. Different from existing methods, heatmaps, which are the byproducts of 2D human pose estimation models, are adopted for exercise recognition and counting. Recent heatmap processing methods have been proven effective in extracting dynamic body pose information. Inspired by this, we propose a deep-learning multitask model of exercise recognition and repetition counting. To the best of our knowledge, this approach is attempted for the first time. To meet the needs of the multitask model, we create a new dataset Rep-Penn with action, counting and speed labels. Our multitask system can estimate human pose, identify physical activities and count repeated motions. We achieved 95.69% accuracy in exercise recognition on the Rep-Penn dataset. The multitask model also performed well in repetitive counting with 0.004 Mean Average Error (MAE) and 0.997 Off-By-One (OBO) accuracy on the Rep-Penn dataset. Compared with existing frameworks, our method obtained state-of-the-art results.
Year
DOI
Venue
2021
10.3390/mti5090055
MULTIMODAL TECHNOLOGIES AND INTERACTION
Keywords
DocType
Volume
exercise, multitask system, heatmap, Rep-Penn dataset
Journal
5
Issue
Citations 
PageRank 
9
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Qingtian Yu100.68
Haopeng Wang200.34
Fedwa Laamarti300.34
Abdulmotaleb El-Saddik400.34