AI-assisted Automatic Jump Detection and Height Estimation in Volleyball Using a Waist-worn IMU
Weiyi Xu, Chunzhuo Wang, Meng Shang, Camilla De Bleecker, Maria Torres Vega, Jos Vanrenterghem, Bart Vanrumste

TL;DR
This paper presents an integrated machine learning pipeline using a waist-worn IMU to automatically detect volleyball jumps, classify jump types, and accurately estimate jump heights, aiding injury prevention.
Contribution
It introduces a novel combined approach for jump detection, classification, and height estimation using IMU data, filling a gap in existing research.
Findings
High jump activity detection accuracy (F1-score=0.90)
Superior height estimation performance (R-squared=0.50)
Effective monitoring tool for injury prevention
Abstract
The physical load of jumps plays a critical role in injury prevention for volleyball players. However, manual video analysis of jump activities is time-intensive and costly, requiring significant effort and expensive hardware setups. The advent of the inertial measurement unit (IMU) and machine learning algorithms offers a convenient and efficient alternative. Despite this, previous research has largely focused on either jump classification or physical load estimation, leaving a gap in integrated solutions. This study aims to present a pipeline to automatically detect jumps and predict heights using data from a waist-worn IMU. The pipeline leverages a Multi-Stage Temporal Convolutional Network (MS-TCN) to detect jump segments in time-series data and classify the specific jump category. Subsequently, jump heights are estimated using three downstream regression machine learning models…
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Taxonomy
TopicsKnee injuries and reconstruction techniques · Sports Performance and Training · Sports injuries and prevention
