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Article Dans Une Revue Scientific Data Année : 2023

CherryChèvre: A fine-grained dataset for goat detection in natural environments

Résumé

Abstract We introduce a new dataset for goat detection that contains 6160 annotated images captured under varying environmental conditions. The dataset is intended for developing machine learning algorithms for goat detection, with applications in precision agriculture, animal welfare, behaviour analysis, and animal husbandry. The annotations were performed by expert in computer vision, ensuring high accuracy and consistency. The dataset is publicly available and can be used as a benchmark for evaluating existing algorithms. This dataset advances research in computer vision for agriculture.

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Dates et versions

hal-04259312 , version 1 (26-10-2023)

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Citer

Jehan-Antoine Vayssade, Rémy Arquet, Willy Troupe, Mathieu Bonneau. CherryChèvre: A fine-grained dataset for goat detection in natural environments. Scientific Data , 2023, 10 (1), pp.689. ⟨10.1038/s41597-023-02555-8⟩. ⟨hal-04259312⟩
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