| Literature DB >> 28653579 |
Chad DeChant1, Tyr Wiesner-Hanks1, Siyuan Chen1, Ethan L Stewart1, Jason Yosinski1, Michael A Gore1, Rebecca J Nelson1, Hod Lipson1.
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.Entities:
Mesh:
Year: 2017 PMID: 28653579 DOI: 10.1094/PHYTO-11-16-0417-R
Source DB: PubMed Journal: Phytopathology ISSN: 0031-949X Impact factor: 4.025