Evaluating ROCKET and Catch22 features for calf behaviour classification from accelerometer data using Machine Learning models
Oshana Dissanayake, Sarah E. McPherson, Joseph Allyndree, Emer, Kennedy, Padraig Cunningham, Lucile Riaboff

TL;DR
This study compares ROCKET, Catch22, and Hand-Crafted features for classifying calf behaviors from accelerometer data using machine learning, finding ROCKET performs best in accuracy.
Contribution
It demonstrates that ROCKET and Catch22 features outperform traditional Hand-Crafted features in calf behavior classification from accelerometer data.
Findings
ROCKET features achieved the highest average balanced accuracy of 0.70.
Catch22 features achieved an average balanced accuracy of 0.69.
Hand-Crafted features achieved an average balanced accuracy of 0.65.
Abstract
Monitoring calf behaviour continuously would be beneficial to identify routine practices (e.g., weaning, dehorning, etc.) that impact calf welfare in dairy farms. In that regard, accelerometer data collected from neck collars can be used along with Machine Learning models to classify calf behaviour automatically. Hand-crafted features are commonly used in Machine Learning models, while ROCKET and Catch22 features are specifically designed for time-series classification problems in related fields. This study aims to compare the performance of ROCKET and Catch22 features to Hand-Crafted features. 30 Irish Holstein Friesian and Jersey pre-weaned calves were monitored using accelerometer sensors allowing for 27.4 hours of annotated behaviors. Additional time-series were computed from the raw X, Y and Z-axis and split into 3-second time windows. ROCKET, Catch22 and Hand-Crafted features were…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsFood Supply Chain Traceability · Soil Mechanics and Vehicle Dynamics · Effects of Environmental Stressors on Livestock
MethodsSparse Evolutionary Training · Random Convolutional Kernel Transform
