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240 Chapter 8 A review on plant diseases recognition through deep learning
nonvisualization techniques have been discussed to identify the
symptoms of plant disease. HSI is an upcoming technology,
and researchers are concentrating more on this technique to
identify the disease. HSI is combined with deep learning architec-
ture to identify the plant's disease effectively even before the
symptoms occur. The traditional plant disease treatment
methods such as serological assays and nucleic acid methods
have showed their efficiency in treating plant diseases.
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