1 High-throughput phenotyping analysis of maize at the 2 seedling stage using end-to-end segmentation network 3

4 Yan 4 and Chunjiang Zhao 1,2,3* 5 1 College of Resources and Environment, Jilin Agricultural University, Changchun 6 130118, China 7 2 Beijing Research Center for Information Technology in Agriculture, Beijing 8 100097, China 9 3 Beijing Key Lab of Digital Plant, National Engineering Research Center for 10 Information Technology in Agriculture, Beijing 100097, China 11 4 Beijing Shunxin Agricultural Science and Technology Co., Ltd, Beijing 100097, 12 China 13 * wlwen37@163.com(WW); zhaocj@nercita.org.cn(CZ)

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