Unoccupied aerial systems imagery for phenotyping in cotton, maize, soybean, and wheat breeding

Author:

Herr Andrew W.1ORCID,Adak Alper2ORCID,Carroll Matthew E.3,Elango Dinakaran3ORCID,Kar Soumyashree3,Li Changying4ORCID,Jones Sarah E.3,Carter Arron H.1ORCID,Murray Seth C.2,Paterson Andrew5,Sankaran Sindhuja6,Singh Arti3ORCID,Singh Asheesh K.3ORCID

Affiliation:

1. Department of Crop and Soil Sciences Washington State University Pullman Washington USA

2. Department Soil and Crop Science Texas A&M University College Station Texas USA

3. Department of Agronomy Iowa State University Ames Iowa USA

4. Department of Agricultural and Biological Engineering University of Florida Gainesville Florida USA

5. Plant Genome Mapping Laboratory University of Georgia Athens Georgia USA

6. Department of Biological Systems Engineering Washington State University Pullman Washington USA

Abstract

AbstractHigh‐throughput phenotyping (HTP) with unoccupied aerial systems (UAS), consisting of unoccupied aerial vehicles (UAV; or drones) and sensor(s), is an increasingly promising tool for plant breeders and researchers. Enthusiasm and opportunities from this technology for plant breeding are similar to the emergence of genomic tools ∼30 years ago, and genomic selection more recently. Unlike genomic tools, HTP provides a variety of strategies in implementation and utilization that generate big data on the dynamic nature of plant growth formed by temporal interactions between growth and environment. This review lays out strategies deployed across four major staple crop species: cotton (Gossypium hirsutum L.), maize (Zea mays L.), soybean (Glycine max L.), and wheat (Triticum aestivum L.). Each crop highlighted in this review demonstrates how UAS‐collected data are employed to automate and improve estimation or prediction of objective phenotypic traits. Each crop section includes four major topics: (a) phenotyping of routine traits, (b) phenotyping of previously infeasible traits, (c) sample cases of UAS application in breeding, and (d) implementation of phenotypic and phenomic prediction and selection. While phenotyping of routine agronomic and productivity traits brings advantages in time and resource optimization, the most potentially beneficial application of UAS data is in collecting traits that were previously difficult or impossible to quantify, improving selection efficiency of important phenotypes. In brief, UAS sensor technology can be used for measuring abiotic stress, biotic stress, crop growth and development, as well as productivity. These applications and the potential implementation of machine learning strategies allow for improved prediction, selection, and efficiency within breeding programs, making UAS HTP a potentially indispensable asset.

Funder

National Institute of Food and Agriculture

National Science Foundation

Texas AgriLife Research

Washington Grain Commission

Iowa Soybean Association

Publisher

Wiley

Subject

Agronomy and Crop Science

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