Litcius/Paper detail

Development of a methodological framework for a robust prediction of the main behaviours of dairy cows using a combination of machine learning algorithms on accelerometer data

Lucile Riaboff, Sylvain Poggi, Aurélien Madouasse, Sébastien Couvreur, S. Aubin, Nicolas Bédère, E. Goumand, Alain Chauvin, Guy Plantier

2020Computers and Electronics in Agriculture102 citationsDOIOpen Access PDF

Abstract

• Main behaviours of dairy cows were successfully predicted using accelerometer data. • EXtreme Gradient Boosting followed by the Viterbi algorithm led to the best results. • Postures are the most difficult to discriminate with an accelerometer on the neck. • 86 Holstein cows from 4 farms were equipped and observed leading to a large dataset. • Independent signal sequences with a stratification were used to validate the models.

Topics & Concepts

AccelerometerGradient boostingMachine learningViterbi algorithmAlgorithmBoosting (machine learning)Artificial intelligenceComputer sciencePattern recognition (psychology)Random forestHidden Markov modelOperating systemGenetic and phenotypic traits in livestockAnimal Behavior and Welfare StudiesEffects of Environmental Stressors on Livestock
Development of a methodological framework for a robust prediction of the main behaviours of dairy cows using a combination of machine learning algorithms on accelerometer data | Litcius