An evaluation of machine learning classifiers for next-generation, continuous-ethogram smart trackers
Autor: | Guozheng Li, Marcel Klaassen, Jian Deng, Max Kröschel, Hui Yu, Sasha Pekarsky, Ran Nathan |
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Rok vydání: | 2021 |
Předmět: |
0106 biological sciences
Behaviour classification Computer science Decision tree Machine learning computer.software_genre 010603 evolutionary biology 01 natural sciences Feature (machine learning) lcsh:QH301-705.5 Ecology Evolution Behavior and Systematics Artificial neural network business.industry Methodology Article 010604 marine biology & hydrobiology Sampling (statistics) Linear discriminant analysis Random forest Accelerometer Support vector machine On-board processing lcsh:Biology (General) Animal ecology Artificial intelligence ANN business computer XGBoost |
Zdroj: | Movement Ecology, Vol 9, Iss 1, Pp 1-14 (2021) Movement Ecology |
ISSN: | 2051-3933 |
DOI: | 10.1186/s40462-021-00245-x |
Popis: | Background Our understanding of movement patterns and behaviours of wildlife has advanced greatly through the use of improved tracking technologies, including application of accelerometry (ACC) across a wide range of taxa. However, most ACC studies either use intermittent sampling that hinders continuity or continuous data logging relying on tracker retrieval for data downloading which is not applicable for long term study. To allow long-term, fine-scale behavioural research, we evaluated a range of machine learning methods for their suitability for continuous on-board classification of ACC data into behaviour categories prior to data transmission. Methods We tested six supervised machine learning methods, including linear discriminant analysis (LDA), decision tree (DT), support vector machine (SVM), artificial neural network (ANN), random forest (RF) and extreme gradient boosting (XGBoost) to classify behaviour using ACC data from three bird species (white stork Ciconia ciconia, griffon vulture Gyps fulvus and common crane Grus grus) and two mammals (dairy cow Bos taurus and roe deer Capreolus capreolus). Results Using a range of quality criteria, SVM, ANN, RF and XGBoost performed well in determining behaviour from ACC data and their good performance appeared little affected when greatly reducing the number of input features for model training. On-board runtime and storage-requirement tests showed that notably ANN, RF and XGBoost would make suitable on-board classifiers. Conclusions Our identification of using feature reduction in combination with ANN, RF and XGBoost as suitable methods for on-board behavioural classification of continuous ACC data has considerable potential to benefit movement ecology and behavioural research, wildlife conservation and livestock husbandry. |
Databáze: | OpenAIRE |
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