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Sheng et al., 2022 - Google Patents

Disease diagnostic method based on cascade backbone network for apple leaf disease classification

Sheng et al., 2022

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Document ID
194094693190503699
Author
Sheng X
Wang F
Ruan H
Fan Y
Zheng J
Zhang Y
Lyu C
Publication year
Publication venue
Frontiers in Plant Science

External Links

Snippet

Fruit tree diseases are one of the major agricultural disasters in China. With the popularity of smartphones, there is a trend to use mobile devices to identify agricultural pests and diseases. In order to identify leaf diseases of apples more easily and efficiently, this paper …
Continue reading at www.frontiersin.org (HTML) (other versions)

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