Abstract

In a world where technology is assuming a pervasive role, sports sciences are also increasingly exploiting the possibilities opened by advanced sensors and intelligent algorithms. This paper focuses on the development of a convenient, practical, and low-cost system, SwimBIT, which is intended to help swimmers and coaches in performance evaluation, improvement, and injury reduction. Real-world data were collected from 13 triathletes (age 20.8 ± 3.5 years, height 173.7 ± 5.3 cm, and weight 63.5 ± 6.3 kg) with different skill levels in performing the four competitive styles of swimming in order to develop a representative database and allow assessment of the system’s performance in swimming conditions. The hardware collects a set of signals from swimmers based on an attitude and heading reference system (AHRS), and a machine learning workflow for data analysis is used to extract a selection of indicators that allows analysis of a swimmer’s performance. Based on the AHRS data, three novel indicators are proposed: trunk elevation, body balance, and body rotation. Experimental evaluation has shown promising results, with a 100% accuracy in swim lap segmentation, a precision of 100% in the recognition of backstroke, and a precision of 89.60% in the three remaining swimming techniques (butterfly, breaststroke, and front crawl). The performance indicators proposed here provide valuable information for both swimmers and coaches in their quest for enhancing performance and preventing injuries.

Highlights

  • Video-based and inertial sensing approaches are often used to support swimmers and coaches in their daily work for improving performance and preventing injuries

  • Video-based approaches have limitations as they often require visual markers on the swimmer, which may hinder the swimmer in executing movements in ecological conditions

  • These markers might introduce added drag and limit the swimmer’s movements, which may lead to an Sports 2019, 7, 238; doi:10.3390/sports7110238

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Summary

Introduction

Video-based and inertial sensing approaches (using wearable devices) are often used to support swimmers and coaches in their daily work for improving performance and preventing injuries. For example, using a mobile phone (out of water) or an action cam (underwater), enables recording of swimmer movements for further or real-time analysis. Video-based approaches have limitations as they often require visual markers on the swimmer, which may hinder the swimmer in executing movements in ecological conditions. These markers might introduce added drag and limit the swimmer’s movements, which may lead to an Sports 2019, 7, 238; doi:10.3390/sports7110238 www.mdpi.com/journal/sports

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