2022
DOI: 10.21203/rs.3.rs-2085003/v1
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Deep Learning performance in predicting dairy cows’ behaviour from a tri-axial accelerometer data

Abstract: The accurate detection of behavioural changes represents a promising method to early reveal the onset of diseases in dairy cows. This study assessed the performance of deep learning (DL) in classifying dairy cows’ behaviour from accelerometery data and compared the results with those of classical machine learning (ML). Twelve cows with a tri-axial accelerometer were observed for 136 ± 29 min each to detect 5 main behaviours. For each 8s time-interval 15 metrics were calculated obtaining a dataset of 211,720 ob… Show more

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