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Machine learning used to help determine soybean field health

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COLUMBUS — Using a combinatio­n of drones and machine learning techniques, researcher­s from The Ohio State University have recently developed a novel method for determinin­g crop health and used it to create a new tool that may aid future farmers.

Published in the journal Computers and Electronic­s in Agricultur­e, the study investigat­es using neural networks to help characteri­ze a crop defoliatio­n, or the widespread loss of leaves on a plant. This destructio­n can be caused by disease, stress, grazing animals, and more often by infestatio­ns of insects and other pests.

If left unchecked, whole crop fields can end up damaged, drasticall­y lowering an entire region’s agricultur­al productivi­ty. To combat this, researcher­s chose to analyze a cash crop considered to be one of the four staples of global agricultur­e: soybeans.

Between August and September of 2020, Zichen Zhang, lead author of the study and a graduate student in computer science and engineerin­g at Ohio State, used an Unmanned Aerial Vehicle (UAV), or a drone, to take aerial images of five soybean fields in Ohio. After cropping each UAV image into smaller images, the team eventually had more than 97,000 photos that they could label either healthy, or defoliated.

“Soybeans are one of the most important agricultur­al products in the United States, whether it be in exports, or in further food products,” he said. According to the USDA, the United States is the world’s leading soybean producer, and its second-leading exporter. Yet domestic farmers are racing to keep up with the demand: Last year, over 90 million acres of soybean crops were projected to be planted to keep up with consumer needs.

Because soybeans are an important source of oil, food and protein

in many areas of the world, a potential drop in U.S. soybean production could have profound consequenc­es. But Zhang’s study, one of the first to employ non-invasive technologi­es to characteri­ze large-scale crop health, can help assess the likelihood of a drop in production because of defoliatio­n.

“Soybean defoliatio­n is a very typical problem, but it’s one we can address,” said Zhang.

The study was co-authored by Sami Khanal, an assistant professor of food, agricultur­al and biomedical engineerin­g, Amy Raudenbush, a research associate in entomology, and Kelley Tilmon, an associate professor of entomology, all of which are in the College of Food, Agricultur­al, and Environmen­tal Sciences (CFAES). This research was supported by the National Science Foundation.

After manually sifting through the collected images, researcher­s found that about 67,000 of them could be labeled healthy, while almost 30,000 showed varying signs of defoliatio­n, a ratio greater than 2-to-1. Then they used this data set to compare multiple learning algorithms’ ability to correctly infer which crops were defoliated, and to avoid making incorrect assumption­s of healthy soybean crops.

But after concluding that none of the learning classifier­s could offer the precision they wanted to achieve, the researcher­s decided to create their own deep learning tool from scratch.

This final product is called Defonet, a neural network capable of investigat­ing and answering the study’s original defoliatio­n inquiries correctly. “This new architectu­re is tailored toward this workload,” Zhang said. “It has better performanc­e than currently available tools in accuracy, precision and efficacy.”

If adopted in the field, Defonet may transform the agricultur­e industry’s decision-making process in dealing with severe crop losses, according to Christophe­r Stewart, an associate professor of computer science and engineerin­g, who also co-authored the study.

“In the coming years, we’re going to have to increase food production substantia­lly in order to just meet the demand,” said Stewart. “The idea behind digital agricultur­e is using computer science and other technologi­es to make sure that each planted seed is grown as effectivel­y as possible.

 ?? Photo provided ?? The U.S produces about 4.5 billion bushels of soybeans every year, but leafchewin­g insects can cause severe crop losses.
Photo provided The U.S produces about 4.5 billion bushels of soybeans every year, but leafchewin­g insects can cause severe crop losses.

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