2023
DOI: 10.3389/fpls.2023.1243822
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A New Deep Learning-based Dynamic Paradigm Towards Open-World Plant Disease Detection

Jiuqing Dong,
Alvaro Fuentes,
Sook Yoon
et al.

Abstract: Plant disease detection has made significant strides thanks to the emergence of deep learning. However, existing methods have been limited to closed-set and static learning settings, where models are trained using a specific dataset. This confinement restricts the model’s adaptability when encountering samples from unseen disease categories. Additionally, there is a challenge of knowledge degradation for these static learning settings, as the acquisition of new knowledge tends to overwrite the old when learnin… Show more

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Cited by 6 publications
(1 citation statement)
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“…Recent frontiers in non-invasive sensor technology and image processing methodologies provide potential remedies for the aforementioned challenges. Deep learning methods have shown great success in various tasks, such as plant state monitoring ( Xu et al., 2021a ; Bhise et al., 2022 ; Wang et al., 2022a ; Dong et al., 2023 ; Shoaib et al., 2023 ; Tomaszewski et al., 2023 ), medical diagnosis ( Yao et al., 2022 ; Nalepa et al., 2023 ), cell variation ( Rahman et al., 2021 ), and flora ( Evangelisti et al., 2021 ; Ganesh et al., 2022 ). These achievements frequently hinge upon the extraction of visual cues from images and the provision of precise annotations.…”
Section: Introductionmentioning
confidence: 99%
“…Recent frontiers in non-invasive sensor technology and image processing methodologies provide potential remedies for the aforementioned challenges. Deep learning methods have shown great success in various tasks, such as plant state monitoring ( Xu et al., 2021a ; Bhise et al., 2022 ; Wang et al., 2022a ; Dong et al., 2023 ; Shoaib et al., 2023 ; Tomaszewski et al., 2023 ), medical diagnosis ( Yao et al., 2022 ; Nalepa et al., 2023 ), cell variation ( Rahman et al., 2021 ), and flora ( Evangelisti et al., 2021 ; Ganesh et al., 2022 ). These achievements frequently hinge upon the extraction of visual cues from images and the provision of precise annotations.…”
Section: Introductionmentioning
confidence: 99%