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Smart drones and deep learning deliver low-cost precision agriculture for Aussie farmers
admin
2018-05-14
发布年2018
语种英语
国家美国
领域地球科学
正文(英文)
Smart drones and deep learning deliver low-cost precision agriculture for Aussie farmers
Credit: University of South Australia

New aerial drone technology could change the landscape of Australia's billion-dollar wheat industry by delivering cost-effective mechanisms for farmers to plan and deliver precise water and nutrients to their crops on a need-by-need basis.

Developed by the University of South Australia with the Plant Accelerator at the University of Adelaide and LongReach Plant Breeders, the drone senses a vegetation index—signifying the crop health, moisture and nutrient content, making it easier and more efficient for farmers to manage agricultural land and for breeders to generate new varieties.

Lead researcher, Dr. Zohaib Khan from UniSA's Phenomics and Bioinformatics Research Centre, says the is a welcome development for the annual $5 billion+ Australian wheat sector.

"Drones enable farmers to move from traditional farming practices to precision farming, increasing their ability to accurately nurture across different sectors, at a reduced cost," Dr. Khan says.

"Until now, the drones required an expensive multispectral camera to scan and indicate where there is a need for additional irrigation or application of fertiliser to selected crop segments.

"Multispectral imaging technology lets farmers see beyond the naked eye, allowing them to be proactive rather than reactive about their crops.

"Just as satellites map the Earth's resources, drones can produce colour-coded images that show the presence and state of vegetation on land—from crop performance, to disease detection."

The technology identifies healthy plants exhibiting a high vegetation index—shown as bright green regions—and mature, stressed or dead plants and soil manifesting a low vegetation index—displayed as yellow areas.

The newly-developed technology delivers this information using RGB (red, green, blue) cameras, a standard accessory carried by drones. The flies about 20 metres above land, capturing one image of a section of a crop field every two seconds. This data is then processed offline and modelled into useful information through deep learning—all without the additional cost of a multispectral camera.

Professor Stanley Miklavcic, Director of UniSA's Phenomics and Bioinformatics Research Centre, says the technology will deliver important insights for Australia's farmers.

"Wheat production is an important industry for Australia, yet to produce high quality Australian in a hot and dry climate, farmers rely upon the development of resilient varieties," Prof Miklavcic says.

"When you're growing crops in the driest continent in the world, being able to identify stress-tolerant crop varieties is critical—and this is where our new technology can help.

"It's ironic that Australia's weather both facilitates and constrains Australia's and superior quality.

"But anything we can do to advance and improve existing knowledge and , as well as make it accessible to Australian growers, is absolutely worth the effort."

Published in Plant Methods, this research was part of the Industrial Transformation Research Hub for Wheat in a Hot and Dry Climate, sponsored jointly by the Australian Research Council and the Grains Research Development Corporation.

Explore further: Farming drone imagery often inaccurate

More information: Zohaib Khan et al. Estimation of vegetation indices for high-throughput phenotyping of wheat using aerial imaging, Plant Methods (2018). DOI: 10.1186/s13007-018-0287-6

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来源平台Science X network
文献类型新闻
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/116471
专题地球科学
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