Automatic Evaluation of Wheat Resistance to Fusarium Head Blight Using Dual Mask-RCNN Deep Learning Frameworks in Computer Vision
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Ce Yang | Jiajing Zhang | Brian J. Steffenson | Cory D. Hirsch | Wen-Hao Su | Rae Page | Tamas Szinyei | Ce Yang | B. Steffenson | C. Hirsch | Tamas Szinyei | W. Su | Rae Page | Jiajing Zhang
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