TY - JOUR
T1 - Detection of crop diseases using enhanced variability imagery data and convolutional neural networks
AU - Kendler, Shai
AU - Aharoni, Ran
AU - Young, Sierra
AU - Sela, Hanan
AU - Kis-Papo, Tamar
AU - Fahima, Tzion
AU - Fishbain, Barak
N1 - Publisher Copyright:
© 2022 Elsevier B.V.
PY - 2022/2
Y1 - 2022/2
N2 - The timely detection of crop diseases is critical for securing crop productivity, lowering production costs, and minimizing agrochemical use. This study presents a crop disease identification method that is based on Convolutional Neural Networks (CNN) trained on images taken with consumer-grade cameras. Specifically, this study addresses the early detection of wheat yellow rust, stem rust, powdery mildew, potato late blight, and wild barley net blotch. To facilitate this, pictures were taken in situ without modifying the scene, the background, or controlling the illumination. Each image was then split into several patches, thus retaining the original spatial resolution of the image while allowing for data variability. The resulting dataset was highly diverse since the disease manifestation, imaging geometry, and illumination varied from patch to patch. This diverse dataset was used to train various CNN architectures to find the best match. The resulting classification accuracy was 95.4 ± 0.4%. These promising results lay the groundwork for autonomous early detection of plant diseases. Guidelines for implementing this approach in realistic conditions are also discussed.
AB - The timely detection of crop diseases is critical for securing crop productivity, lowering production costs, and minimizing agrochemical use. This study presents a crop disease identification method that is based on Convolutional Neural Networks (CNN) trained on images taken with consumer-grade cameras. Specifically, this study addresses the early detection of wheat yellow rust, stem rust, powdery mildew, potato late blight, and wild barley net blotch. To facilitate this, pictures were taken in situ without modifying the scene, the background, or controlling the illumination. Each image was then split into several patches, thus retaining the original spatial resolution of the image while allowing for data variability. The resulting dataset was highly diverse since the disease manifestation, imaging geometry, and illumination varied from patch to patch. This diverse dataset was used to train various CNN architectures to find the best match. The resulting classification accuracy was 95.4 ± 0.4%. These promising results lay the groundwork for autonomous early detection of plant diseases. Guidelines for implementing this approach in realistic conditions are also discussed.
KW - Classification
KW - Convolutional Neural Networks
KW - Crop disease
KW - Generalization
KW - Precision agriculture
UR - http://www.scopus.com/inward/record.url?scp=85123058834&partnerID=8YFLogxK
U2 - 10.1016/j.compag.2022.106732
DO - 10.1016/j.compag.2022.106732
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AN - SCOPUS:85123058834
SN - 0168-1699
VL - 193
JO - Computers and Electronics in Agriculture
JF - Computers and Electronics in Agriculture
M1 - 106732
ER -