Journal of Agricultural Science and Technology ›› 2022, Vol. 24 ›› Issue (3): 103-110.DOI: 10.13304/j.nykjdb.2021.0335
• INTELLIGENT AGRICULTURE & AGRICULTURAL MACHINERY • Previous Articles
Yinyan GAO1(), Yi SUN2, Baochun LI1,3(
)
Received:
2021-04-20
Accepted:
2021-07-07
Online:
2022-03-15
Published:
2022-03-14
Contact:
Baochun LI
通讯作者:
李葆春
作者简介:
高姻燕 E-mail: gaoyyan@126.com;
基金资助:
CLC Number:
Yinyan GAO, Yi SUN, Baochun LI. Estimating of Wheat Ears Number in Field Based on RGB Images Using Unmanned Aerial Vehicle[J]. Journal of Agricultural Science and Technology, 2022, 24(3): 103-110.
高姻燕, 孙义, 李葆春. 基于无人机RGB影像估测田间小麦穗数[J]. 中国农业科技导报, 2022, 24(3): 103-110.
Fig.5 Relationship between recognition accuracy of training models and sample number and iterationsNote: Different letters indicate significant differences at P<0.05 level.
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