Deep learning approaches for object recognition in plant diseases: a review

Zimo Zhou , Yue Zhang , Zhaohui Gu , Simon X. Yang

Intelligence & Robotics ›› 2023, Vol. 3 ›› Issue (4) : 514 -37.

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Intelligence & Robotics ›› 2023, Vol. 3 ›› Issue (4) :514 -37. DOI: 10.20517/ir.2023.29
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Deep learning approaches for object recognition in plant diseases: a review

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Abstract

Plant diseases pose a significant threat to the economic viability of agriculture and the normal functioning of trees in forests. Accurate detection and identification of plant diseases are crucial for smart agricultural and forestry management. Artificial intelligence has been successfully applied to agriculture in recent years. Many intelligent object recognition algorithms, specifically deep learning approaches, have been proposed to identify diseases in plant images. The goal is to reduce labor and improve detection efficiency. This article reviews the application of object detection methods for detecting common plant diseases, such as tomato, citrus, maize, and pine trees. It introduces various object detection models, ranging from basic to modern and sophisticated networks, and compares the innovative aspects and drawbacks of commonly used neural network models. Furthermore, the article discusses current challenges in plant disease detection and object detection methods and suggests promising directions for future work in learning-based plant disease detection systems.

Keywords

Plant disease detection / deep learning / object detection / plant disease management

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Zimo Zhou, Yue Zhang, Zhaohui Gu, Simon X. Yang. Deep learning approaches for object recognition in plant diseases: a review. Intelligence & Robotics, 2023, 3(4): 514-37 DOI:10.20517/ir.2023.29

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