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Terrain Type Detection for Smart Equine Gait Analysis Systems Using Inertial Sensors and Machine Learning

Jeanne I. M. Parmentier, Filipe M. Serra Bragança, Elin Hernlund, Berend Jan van der Zwaag

Onderzoeksoutput: Contribution to conference proceedingAcademicpeer review

Samenvatting

Lameness, limping due to pain, is a significant welfare issue for horses. Veterinarians typically evaluate horses on two terrain types (hard and soft, e.g., asphalt and sand) that are known to affect the observed degree of lameness based on the origin/location of the pain. In the past years, whole-body inertial measurement units (IMU)-based gait analysis systems were developed to support diagnostics and monitor locomotion changes over time. Movement direction and gait (walk, trot) are automatically labeled, resulting in smart and easy-to-use systems. However, terrain types are not detected, leading to information loss. In this work, we explored terrain classification tasks with equine IMU data and machine and deep learning. Using the data of 111 horses equipped with IMU sensors (withers, pelvis, front, and hind limbs), we compared different features-based (FT) and time-series-based (TS) classifiers (train-test ratio: 0.7-0.3). In order to reduce the computational costs of the future system, we also evaluated the performance (F1 score) of the classifiers with different sampling frequencies (10 to 200Hz) and different IMU combinations (body and limbs). Our Convolutional Neural Network models accurately classified terrain types with only one IMU placed on the front limb. Downsampling the signals led to similar results, thus enabling real-time applications.
Originele taal-2English
TitelProceedings - 19th International Conference on Distributed Computing in Smart Systems and the Internet of Things
SubtitelDCOSS-IoT 2023
UitgeverijInstitute of Electrical and Electronics Engineers
Pagina's103-111
Aantal pagina's9
ISBN van geprinte versie9798350346497
DOI's
StatusPublished - 27 sep. 2023
Extern gepubliceerdJa

Keywords

  • paarden
  • kunstmatige intelligentie
  • oppervlakten
  • traagheidsmeeteenheid

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