Fast and Robust Video-Based Exercise Classification via Body Pose Tracking and Scalable Multivariate Time Series Classifiers
Ashish Singh, Antonio Bevilacqua, Thach Le Nguyen, Feiyan Hu, Kevin, McGuinness, Martin OReilly, Darragh Whelan, Brian Caulfield, Georgiana Ifrim

TL;DR
This paper introduces BodyMTS, a method that converts video data into time series for exercise classification, achieving high accuracy and robustness while being computationally efficient compared to deep learning approaches.
Contribution
The paper presents BodyMTS, a novel approach combining body pose tracking and multivariate time series classifiers for fast, accurate, and robust video-based exercise classification.
Findings
Achieves 87% average accuracy in classifying exercises.
Robust to noise from video quality and pose estimation errors.
Outperforms deep learning methods in speed and model complexity.
Abstract
Technological advancements have spurred the usage of machine learning based applications in sports science. Physiotherapists, sports coaches and athletes actively look to incorporate the latest technologies in order to further improve performance and avoid injuries. While wearable sensors are very popular, their use is hindered by constraints on battery power and sensor calibration, especially for use cases which require multiple sensors to be placed on the body. Hence, there is renewed interest in video-based data capture and analysis for sports science. In this paper, we present the application of classifying S\&C exercises using video. We focus on the popular Military Press exercise, where the execution is captured with a video-camera using a mobile device, such as a mobile phone, and the goal is to classify the execution into different types. Since video recordings need a lot of…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Anomaly Detection Techniques and Applications · Sports Performance and Training
