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DeepCob: Precise and high-throughput analysis of maize cob geometry using deep learning with an application in genebank phenomics

Lydia Kienbaum, Miguel Correa Abondano, Raul Blas, View ORCID ProfileKarl Schmid
doi: https://doi.org/10.1101/2021.03.16.435660
Lydia Kienbaum
1Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, Stuttgart, Germany
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Miguel Correa Abondano
1Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, Stuttgart, Germany
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Raul Blas
2Universidad National Agraria La Molina (UNALM), Lima, Peru
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Karl Schmid
1Institute of Plant Breeding, Seed Science and Population Genetics, University of Hohenheim, Stuttgart, Germany
3Computational Science Lab, University of Hohenheim, Stuttgart, Germany
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  • ORCID record for Karl Schmid
  • For correspondence: karl.schmid@uni-hohenheim.de
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Abstract

Background Maize cobs are an important component of crop yield that exhibit a high diversity in size, shape and color in native landraces and modern varieties. Various phenotyping approaches were developed to measure maize cob parameters in a high throughput fashion. More recently, deep learning methods like convolutional neural networks (CNN) became available and were shown to be highly useful for high-throughput plant phenotyping. We aimed at comparing classical image segmentation with deep learning methods for maize cob image segmentation and phenotyping using a large image dataset of native maize landrace diversity from Peru.

Results Comparison of three image analysis methods showed that a Mask R-CNN trained on a diverse set of maize cob images was highly superior to classical image analysis using the Felzenszwalb-Huttenlocher algorithm and a Window-based CNN due to its robustness to image quality and object segmentation accuracy (r = 0.99). We integrated Mask R-CNN into a high-throughput pipeline to segment both maize cobs and rulers in images and perform an automated quantitative analysis of eight phenotypic traits, including diameter, length, ellipticity, asymmetry, aspect ratio and average RGB values for cob color. Statistical analysis identified key training parameters for efficient iterative model updating. We also show that a small number of 10-20 images is sufficient to update the initial Mask R-CNN model to process new types of cob images. To demonstrate an application of the pipeline we analyzed phenotypic variation in 19,867 maize cobs extracted from 3,449 images of 2,484 accessions from the maize genebank of Peru to identify phenotypically homogeneous and heterogeneous genebank accessions using multivariate clustering.

Conclusions Single Mask R-CNN model and associated analysis pipeline are widely applicable tools for maize cob phenotyping in contexts like genebank phenomics or plant breeding.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • http://doi.org/10.5281/zenodo.4587304

  • https://gitlab.com/kjschmidlab/deepcob

  • Abbreviations

    AP@[.5: .95]
    AP@[IoU=0.50:0.95], sometimes also called mAP.
    CLARA
    Clustering Large Applications
    RPN
    Region Proposal Network
  • Copyright 
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    DeepCob: Precise and high-throughput analysis of maize cob geometry using deep learning with an application in genebank phenomics
    Lydia Kienbaum, Miguel Correa Abondano, Raul Blas, Karl Schmid
    bioRxiv 2021.03.16.435660; doi: https://doi.org/10.1101/2021.03.16.435660
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    DeepCob: Precise and high-throughput analysis of maize cob geometry using deep learning with an application in genebank phenomics
    Lydia Kienbaum, Miguel Correa Abondano, Raul Blas, Karl Schmid
    bioRxiv 2021.03.16.435660; doi: https://doi.org/10.1101/2021.03.16.435660

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