Horse Jumping and Dressage Training Activity Detection Using Accelerometer Data.

CNN accelerometer activity recognition dressage machine learning neural network show jumping

Journal

Animals : an open access journal from MDPI
ISSN: 2076-2615
Titre abrégé: Animals (Basel)
Pays: Switzerland
ID NLM: 101635614

Informations de publication

Date de publication:
07 Oct 2021
Historique:
received: 28 06 2021
revised: 25 08 2021
accepted: 01 10 2021
entrez: 23 10 2021
pubmed: 24 10 2021
medline: 24 10 2021
Statut: epublish

Résumé

Equine training activity detection will help to track and enhance the performance and fitness level of riders and their horses. Currently, the equestrian world is eager for a simple solution that goes beyond detecting basic gaits, yet current technologies fall short on the level of user friendliness and detection of main horse training activities. To this end, we collected leg accelerometer data of 14 well-trained horses during jumping and dressage trainings. For the first time, 6 jumping training and 25 advanced horse dressage activities are classified using specifically developed models based on a neural network. A jumping training could be classified with a high accuracy of 100 %, while a dressage training could be classified with an accuracy of 96.29%. Assigning the dressage movements to 11, 6 or 4 superclasses results in higher accuracies of 98.87%, 99.10% and 100%, respectively. Furthermore, during dressage training, the side of movement could be identified with an accuracy of 97.08%. In addition, a velocity estimation model was developed based on the measured velocities of seven horses performing the collected, working, and extended gaits during a dressage training. For the walk, trot, and canter paces, the velocities could be estimated accurately with a low root mean square error of 0.07 m/s, 0.14 m/s, and 0.42 m/s, respectively.

Identifiants

pubmed: 34679925
pii: ani11102904
doi: 10.3390/ani11102904
pmc: PMC8532712
pii:
doi:

Types de publication

Journal Article

Langues

eng

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Auteurs

Anniek Eerdekens (A)

WAVES-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Margot Deruyck (M)

WAVES-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Jaron Fontaine (J)

IDLab-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Bert Damiaans (B)

VETMED, Department of Reproduction, Obstetrics and Herd Health, Faculty of Veterinary Medicine, Ghent University, 9820 Merelbeke, Belgium.

Luc Martens (L)

WAVES-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Eli De Poorter (E)

IDLab-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Jan Govaere (J)

VETMED, Department of Reproduction, Obstetrics and Herd Health, Faculty of Veterinary Medicine, Ghent University, 9820 Merelbeke, Belgium.

David Plets (D)

WAVES-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Wout Joseph (W)

WAVES-IMEC, Department of Information Technology, Ghent University-IMEC, 9052 Ghent, Belgium.

Classifications MeSH