TY - JOUR
T1 - Breaking the field phenotyping bottleneck in maize with autonomous robots
AU - DeBruin, Jason
AU - Aref, Thomas
AU - Tirado Tolosa, Sara
AU - Hensley, Rebecca
AU - Underwood, Haley
AU - McGuire, Michael
AU - Soman, Chinmay
AU - Nystrom, Grace
AU - Parkinson, Emma
AU - Li, Catherine
AU - Moose, Stephen Patrick
AU - Chowdhary, Girish
N1 - From Corteva, the authors acknowledge Jan-Michael Schulze and Fred Gruis for initializing the collaboration and guiding the budgetary support for the yearly testing. The authors specifically thank Logan Anderson, Carmen Trainer and Melissa Grafton for their commitment to operate the robots at a number of USA field trial locations during multiple years of testing. Phenotyping efforts at the University of Illinois were supported in part by the National Science Foundation Science and Technology Center for Programmable Plant Systems (CROPPS, NSF award DBI-2019674), the Denton E. and Betty Alexander Professorship in Maize Breeding and Genetics, and a graduate fellowship from the Illinois Corn Marketing Board to C.L. Development of the TerraSentia robots was supported through grants from NSF SBIR Phase I (1820332) and NSF STTR Phase II (1951250), ARPA-E project DE-AR0000598 TERRA-MEPP. The work was also supported in part by the Bill and Melinda Gates Foundation through the RIPE project; by grant (2020-67021-32799) from USDA National Institute of Food and Agriculture NSF/USDA National AI Institute and AIFARMS, and Center for Research on Programmable Plant Systems (CROPPS) through the National Science Foundation under Grant No. DBI-2019674. We acknowledge support also from UIUC Center for Digital Agriculture and UIUC USDA Farm of the Future award. The authors acknowledge guidance and support by Professors Steve Long and Carl Bernachi at UIUC and Professors Edward Buckler and Mike Gore at Cornell.
PY - 2025/3/21
Y1 - 2025/3/21
N2 - Understanding phenotypic plasticity in maize (Zea mays L.) is a current grand challenge for continued crop improvement. Measuring the interactive effects of genetics, environmental factors, and management practices (GxExM) on crop performance is time-consuming, expensive, and a major bottleneck to yield advancement. We demonstrate that an autonomous robotic platform, capable of collecting biologically relevant and commonly measured phenotypes, within a maize canopy at high-throughput, low-cost, and high-volume is now a reality. Field teams used TerraSentia autonomous ground robots developed by EarthSense, Inc. (Champaign, IL) to capture data using a suite of low-cost sensors from nearly 200,000 experimental units, located at 142 unique research fields in the USA and Canada, across five years. Computer vision and machine learning algorithms, developed by EarthSense, Inc., analyzed these in-canopy multi-sensor data to deliver ground-truth validated plant height, ear height, stem diameter, and leaf area index at multiple time points during each season. The robot measured these phenotypes with high accuracy and reliability, at scales sufficient to dissect interactions between genotypes and nitrogen rates in several environments. The results show that within-row, autonomous field robots hold great promise to increase GxExM understanding and decrease the amount of human labor required for plant phenotyping.
AB - Understanding phenotypic plasticity in maize (Zea mays L.) is a current grand challenge for continued crop improvement. Measuring the interactive effects of genetics, environmental factors, and management practices (GxExM) on crop performance is time-consuming, expensive, and a major bottleneck to yield advancement. We demonstrate that an autonomous robotic platform, capable of collecting biologically relevant and commonly measured phenotypes, within a maize canopy at high-throughput, low-cost, and high-volume is now a reality. Field teams used TerraSentia autonomous ground robots developed by EarthSense, Inc. (Champaign, IL) to capture data using a suite of low-cost sensors from nearly 200,000 experimental units, located at 142 unique research fields in the USA and Canada, across five years. Computer vision and machine learning algorithms, developed by EarthSense, Inc., analyzed these in-canopy multi-sensor data to deliver ground-truth validated plant height, ear height, stem diameter, and leaf area index at multiple time points during each season. The robot measured these phenotypes with high accuracy and reliability, at scales sufficient to dissect interactions between genotypes and nitrogen rates in several environments. The results show that within-row, autonomous field robots hold great promise to increase GxExM understanding and decrease the amount of human labor required for plant phenotyping.
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UR - http://www.scopus.com/inward/citedby.url?scp=105000490881&partnerID=8YFLogxK
U2 - 10.1038/s42003-025-07890-7
DO - 10.1038/s42003-025-07890-7
M3 - Article
C2 - 40119164
AN - SCOPUS:105000490881
SN - 2399-3642
VL - 8
JO - Communications biology
JF - Communications biology
IS - 1
M1 - 467
ER -