journal article Open Access Dec 01, 2024

Beyond supervision: Harnessing self-supervised learning in unseen plant disease recognition

Neurocomputing Vol. 610 pp. 128608 · Elsevier BV
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Published
Dec 01, 2024
Vol/Issue
610
Pages
128608
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Funding
Agence Nationale de la Recherche
Swinburne University of Technology Sarawak Campus
Cite This Article
Abel Yu Hao Chai, Sue Han Lee, Fei Siang Tay, et al. (2024). Beyond supervision: Harnessing self-supervised learning in unseen plant disease recognition. Neurocomputing, 610, 128608. https://doi.org/10.1016/j.neucom.2024.128608
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