Automated Identification of Northern Leaf Blight-Infected Maize Plants from Field Imagery Using Deep Learning

Chad DeChant(University of the District of Columbia), Tyr Wiesner‐Hanks(University of the District of Columbia), Siyuan Chen(University of the District of Columbia), Ethan L. Stewart(University of the District of Columbia), Jason Yosinski(University of the District of Columbia), Michael A. Gore(University of the District of Columbia), Rebecca Nelson(University of the District of Columbia), Hod Lipson(University of the District of Columbia)
Phytopathology
June 27, 2017
Cited by 420Open Access
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Abstract

Northern leaf blight (NLB) can cause severe yield loss in maize; however, scouting large areas to accurately diagnose the disease is time consuming and difficult. We demonstrate a system capable of automatically identifying NLB lesions in field-acquired images of maize plants with high reliability. This approach uses a computational pipeline of convolutional neural networks (CNNs) that addresses the challenges of limited data and the myriad irregularities that appear in images of field-grown plants. Several CNNs were trained to classify small regions of images as containing NLB lesions or not; their predictions were combined into separate heat maps, then fed into a final CNN trained to classify the entire image as containing diseased plants or not. The system achieved 96.7% accuracy on test set images not used in training. We suggest that such systems mounted on aerial- or ground-based vehicles can help in automated high-throughput plant phenotyping, precision breeding for disease resistance, and reduced pesticide use through targeted application across a variety of plant and disease categories.


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