A robust,high‐throughput method for computing maize ear,cob, and kernel attributes automatically from images |
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Authors: | Nathan D Miller Nicholas J Haase Jonghyun Lee Shawn M Kaeppler Natalia de Leon Edgar P Spalding |
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Institution: | 1. Department of Botany, University of Wisconsin‐Madison, Madison, WI, USA;2. Department of Agronomy, University of Wisconsin‐Madison, Madison, WI, USA;3. DOE Great Lakes Bioenergy Research Center, Madison, WI, USA |
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Abstract: | Grain yield of the maize plant depends on the sizes, shapes, and numbers of ears and the kernels they bear. An automated pipeline that can measure these components of yield from easily‐obtained digital images is needed to advance our understanding of this globally important crop. Here we present three custom algorithms designed to compute such yield components automatically from digital images acquired by a low‐cost platform. One algorithm determines the average space each kernel occupies along the cob axis using a sliding‐window Fourier transform analysis of image intensity features. A second counts individual kernels removed from ears, including those in clusters. A third measures each kernel's major and minor axis after a Bayesian analysis of contour points identifies the kernel tip. Dimensionless ear and kernel shape traits that may interrelate yield components are measured by principal components analysis of contour point sets. Increased objectivity and speed compared to typical manual methods are achieved without loss of accuracy as evidenced by high correlations with ground truth measurements and simulated data. Millimeter‐scale differences among ear, cob, and kernel traits that ranged more than 2.5‐fold across a diverse group of inbred maize lines were resolved. This system for measuring maize ear, cob, and kernel attributes is being used by multiple research groups as an automated Web service running on community high‐throughput computing and distributed data storage infrastructure. Users may create their own workflow using the source code that is staged for download on a public repository. |
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Keywords: |
Zea mays
image analysis kernel shape kernel spacing Fourier transform kernel counting ear size high‐throughput phenotyping technical advance |
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