Smart Agriculture ›› 2022, Vol. 4 ›› Issue (1): 29-46.doi: 10.12133/j.smartag.SA202202005
• Topic--Crop Growth and Its Environmental Monitoring • Previous Articles Next Articles
SHAO Mingyue1(), ZHANG Jianhua1(
), FENG Quan2, CHAI Xiujuan1, ZHANG Ning1, ZHANG Wenrong1
Received:
2021-09-30
Online:
2022-03-30
Published:
2022-04-28
corresponding author:
ZHANG Jianhua
E-mail:82101205406@caas.cn;zhangjianhua@caas.cn
CLC Number:
SHAO Mingyue, ZHANG Jianhua, FENG Quan, CHAI Xiujuan, ZHANG Ning, ZHANG Wenrong. Research Progress of Deep Learning in Detection and Recognition of Plant Leaf Diseases[J]. Smart Agriculture, 2022, 4(1): 29-46.
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