Automated Counting of Rice Panicle by Applying Deep Learning Model to Images from Unmanned Aerial Vehicle Platform
Chengquan Zhou(National Engineering Research Center for Information Technology in Agriculture), Guijun Yang(National Engineering Research Center for Information Technology in Agriculture), Hongbao Ye(ZheJiang Academy of Agricultural Sciences), Jun Hu(ZheJiang Academy of Agricultural Sciences), Xiaoyan Shi(ZheJiang Academy of Agricultural Sciences), Zhifu Xu(ZheJiang Academy of Agricultural Sciences), Jibo Yue(Harbin Medical University)
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