2023
DOI: 10.1101/2023.06.29.546989
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Hierarchical Classification of Insects with Multitask Learning and Anomaly Detection

Abstract: Cameras and computer vision are revolutionising the study of insects, creating new research opportunities within agriculture, epidemiology, evolution, ecology and monitoring of biodiversity. However, a major challenge is the diversity of insects and close resemblances of many species combined with computer vision are often not sufficient to classify large numbers of insect species, which sometimes cannot be identified at the species level. Here, we present an algorithm to hierarchically classify insects from i… Show more

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