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				 The research, published in Remote Sensing of Environment, 
				combines field measurements, a unique in-field camera network, 
				and high-resolution, high-frequency satellite data, providing 
				highly accurate productivity estimates for crops across Illinois 
				and beyond.  
				 
				“Our ultimate goal is to provide useful information to farmers, 
				especially at the field level or sub-field level. Previously, 
				most available satellite data had coarse spatial and/or temporal 
				resolution, but here we take advantage of new satellite products 
				to estimate leaf area index (LAI), a proxy for crop productivity 
				and grain yield. And we know the satellite estimates are 
				accurate because our ground measurements agree,” says Hyungsuk 
				Kimm, a doctoral student in the Department of Natural Resources 
				and Environmental Sciences (NRES) at U of I and lead author on 
				the study. 
				  
              
                
				  
              
				 
				Kimm and his colleagues used surface reflectance data, which 
				measures light bouncing off the Earth, from two kinds of 
				satellites to estimate LAI in agricultural fields. Both 
				satellite datasets represent major improvements over older 
				satellite technologies; they can “see” the Earth at a fine scale 
				(3-meter or 30-meter resolution) and both return to the same 
				spot above the planet on a daily basis. Since the satellites 
				don’t capture LAI directly, the research team developed two 
				mathematical algorithms to convert surface reflectance into LAI. 
				 
				While developing the algorithms to estimate LAI, Kimm worked 
				with Illinois farmers to set up cameras in 36 corn fields across 
				the state, providing continuous ground-level monitoring. The 
				images from the cameras provided detailed ground information to 
				refine the satellite-derived estimates of LAI. 
				 
				The true test of the satellite estimates came from LAI data Kimm 
				measured directly in the corn fields. Twice weekly during the 
				2017 growing season, he visited the fields with a specialized 
				instrument and measured corn leaf area by hand. 
				 
				In the end, the satellite LAI estimates from the two algorithms 
				strongly agreed with Kimm’s “ground-truth” data from the fields. 
				This result means the algorithms delivered highly accurate, 
				reliable LAI information from space, and can be used to estimate 
				LAI in fields anywhere in the world in real time. 
              
                “We are the first to develop scalable, 
				high-temporal, high-resolution LAI data for farmers to use. 
				These methods have been fully validated using an unprecedented 
				camera network for farmland,” says Kaiyu Guan, assistant 
				professor in the Department of NRES and Blue Waters professor at 
				the National Center for Supercomputing Applications. He is also 
				principal investigator on the study. 
              
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			Having real-time LAI data could be instrumental for 
			responsive management. For example, the satellite method could 
			detect underperforming fields or segments of fields that could be 
			corrected with targeted management practices such as nutrient 
			management, pesticide application, or other strategies. Guan plans 
			to make real-time data available to farmers in the near future.  
			 
			“The new LAI technology developed by Dr. Guan’s research team is an 
			exciting advancement with potential to help farmers identify and 
			respond to in-field problems faster and more effectively than ever 
			before,” says Laura Gentry, director of water quality research for 
			the Illinois Corn Growers Association. 
			 
			“More accurate measurements of LAI can help us to be more efficient, 
			timely, and make decisions that will ultimately make us more 
			profitable. The last few years have been especially difficult for 
			farmers. We need technologies that help us allocate our limited 
			time, money, and labor most wisely. Illinois Corn Growers 
			Association is glad to partner with Dr. Guan’s team, and our farmer 
			members were happy to assist the researchers with access to their 
			crops in validating the team’s work. We’re proud of the advancement 
			this new technology represents and are excited to see how the Guan 
			research team will use it to bring value directly to Illinois 
			farmers,” Gentry adds.  
			  
			
			  
			
			 
			The article, “Deriving high-spatiotemporal-resolution leaf area 
			index for agroecosystems in the U.S. Corn Belt using Planet Labs 
			CubeSat and STAIR fusion data,” is published in Remote Sensing for 
			Environment [DOI: 10.1016/j.rse.2019.111615]. Co-authors include 
			Hyungsuk Kimm, Kaiyu Guan, Chongya Jiang, Bin Peng, Laura Gentry, 
			Scott Wilkin, Sibo Wang, Yaping Cai, Carl Bernacchi, Jian Peng, and 
			Yunan Luo. The work was supported by NASA programs, including NASA 
			New Investigator, NASA Carbon Monitoring System, and NASA Harvest 
			Program. 
			 
			The Department of Natural Resources and Environmental Sciences is in 
			the College of Agricultural, Consumer and Environmental Sciences at 
			the University of Illinois. 
			[Sources: Hyungsuk Kimm,Kaiyu Guan, 
			Laura Gentry 
			News writer: Lauren Quinn]  |