Identification of Soybean Leaf Diseases via Deep Learning

Journal of The Institution of Engineers (India): Series A - Tập 100 Số 4 - Trang 659-666 - 2019
Qiufeng Wu1, Keke Zhang2, Jun Meng1
1College of Science, Northeast Agricultural University, No. 600 Changjiang Street, Xiangfang District, Harbin, 150030, China
2College of Engineering, Northeast Agricultural University, No. 600 Changjiang Street, Xiangfang District, Harbin, 150030, China

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