4.6 Review

Plant Disease Detection and Classification by Deep Learning-A Review

期刊

IEEE ACCESS
卷 9, 期 -, 页码 56683-56698

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3069646

关键词

Diseases; Deep learning; Feature extraction; Image recognition; Plants (biology); Agriculture; Image color analysis; Deep learning; plant leaf disease detection; visualization; small sample; hyperspectral imaging

资金

  1. Innovation Project of Shanxi for Postgraduate Education [J202082047]

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Deep learning, a branch of artificial intelligence, has gained wide attention for its automatic learning and feature extraction advantages. It has been extensively applied in various fields, including plant disease recognition, improving research efficiency and objectivity.
Deep learning is a branch of artificial intelligence. In recent years, with the advantages of automatic learning and feature extraction, it has been widely concerned by academic and industrial circles. It has been widely used in image and video processing, voice processing, and natural language processing. At the same time, it has also become a research hotspot in the field of agricultural plant protection, such as plant disease recognition and pest range assessment, etc. The application of deep learning in plant disease recognition can avoid the disadvantages caused by artificial selection of disease spot features, make plant disease feature extraction more objective, and improve the research efficiency and technology transformation speed. This review provides the research progress of deep learning technology in the field of crop leaf disease identification in recent years. In this paper, we present the current trends and challenges for the detection of plant leaf disease using deep learning and advanced imaging techniques. We hope that this work will be a valuable resource for researchers who study the detection of plant diseases and insect pests. At the same time, we also discussed some of the current challenges and problems that need to be resolved.

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