Detection of anomalies in cow activity using wavelet transform based features
Valentin Guien, Violaine Antoine, Romain Lardy, Isabelle Veissier and, Luis E C Rocha

TL;DR
This study demonstrates that wavelet transform-based features significantly improve early detection of anomalies in cow activity time series, aiding in prompt intervention for health or reproductive issues.
Contribution
The paper introduces a novel approach using wavelet transform features combined with an Isolation Forest algorithm for early anomaly detection in cow activity data.
Findings
Wavelet-based features are among the most important for anomaly detection.
The method detects anomalies close to or before caretaker annotations.
Early detection allows for timely corrective actions.
Abstract
In Precision Livestock Farming, detecting deviations from optimal or baseline values - i.e. anomalies in time series - is essential to allow undertaking corrective actions rapidly. Here we aim at detecting anomalies in 24h time series of cow activity, with a view to detect cases of disease or oestrus. Deviations must be distinguished from noise which can be very high in case of biological data. It is also important to detect the anomaly early, e.g. before a farmer would notice it visually. Here, we investigate the benefit of using wavelet transforms to denoise data and we assess the performance of an anomaly detection algorithm considering the timing of the detection. We developed features based on the comparisons between the wavelet transforms of the mean of the time series and the wavelet transforms of individual time series instances. We hypothesized that these features contribute to…
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