Literature DB >> 34758701

Quantifying cricket fast bowling volume, speed and perceived intensity zone using an Apple Watch and machine learning.

Joseph W McGrath1,2,3, Jonathon Neville1, Tom Stewart1,4, Hayley Clinning5, Bernd Thomas6, John Cronin1.   

Abstract

This study examined whether an inertial measurement unit (IMU) and machine learning models could accurately measure bowling volume (BV), ball release speed (BRS), and perceived intensity zone (PIZ). Forty-four male pace bowlers wore a high measurement range, research-grade IMU (SABELSense) and a consumer-grade IMU (Apple Watch) on both wrists. Each participant bowled 36 deliveries, split into two different PIZs (Zone 1 = 70-85% of maximum bowling effort, Zone 2 = 100% of maximum bowling effort). BRS was measured using a radar gun. Four machine learning models were compared. Gradient boosting models had the best results across all measures (BV: F-score = 1.0; BRS: Mean absolute error = 2.76 km/h; PIZ: F-score = 0.92). There was no significant difference between the SABELSense and Apple Watch on the same hand when measuring BV, BRS, and PIZ. A significant improvement in classifying PIZ was observed for IMUs located on the dominant wrist. For all measures, there was no added benefit of combining IMUs on the dominant and non-dominant wrists.

Entities:  

Keywords:  Artificial intelligence; bowling velocity; inertial measurement unit; injury prevention; wearable device

Mesh:

Year:  2021        PMID: 34758701     DOI: 10.1080/02640414.2021.1993640

Source DB:  PubMed          Journal:  J Sports Sci        ISSN: 0264-0414            Impact factor:   3.337


  1 in total

1.  Human Health Activity Recognition Algorithm in Wireless Sensor Networks Based on Metric Learning.

Authors:  Dejie Sun; Jie Zhang; Shuai Zhang; Xin Li; Hangong Wang
Journal:  Comput Intell Neurosci       Date:  2022-04-18
  1 in total

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