Autonomous Detection of Plant Disease Symptoms Directly from Aerial Imagery

Core Ideas A deep learning model identified plant disease in UAV images with 95% accuracy. Transfer learning allowed for faster model optimization. This method detected plant disease symptoms at a very fine spatial scale.

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