Effect of directional augmentation using supervised machine learning technologies: A case study of strawberry powdery mildew detection

Biosystems Engineering - Tập 194 - Trang 49-60 - 2020
Jaemyung Shin1, Young K. Chang1, Brandon Heung2, Tri Nguyen-Quang1, Gordon W. Price1, Ahmad Al-Mallahi1
1Department of Engineering, Faculty of Agriculture, Dalhousie University, Truro, Canada
2Department of Plant, Food, and Environmental Sciences, Faculty of Agriculture, Dalhousie University, Truro, Canada

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