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The Application of Machine Learning for Cultivar Discrimination of Sweet Cherry Endocarp

Author

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  • Ewa Ropelewska

    (Fruit and Vegetable Storage and Processing Department, Research Institute of Horticulture, Konstytucji 3 Maja 1/3, 96-100 Skierniewice, Poland)

Abstract

The aim of this study was to evaluate the usefulness of the texture and geometric parameters of endocarp (pit) for distinguishing different cultivars of sweet cherries using image analysis. The textures from images converted to color channels and the geometric parameters of the endocarp (pits) of sweet cherry ‘Kordia’, ‘Lapins’, and ‘Büttner’s Red’ were calculated. For the set combining the selected textures from all color channels, the accuracy reached 100% when comparing ‘Kordia’ vs. ‘Lapins’ and ‘Kordia’ vs. ‘Büttner’s Red’ for all classifiers. The pits of ‘Kordia’ and ‘Lapins’, as well as ‘Kordia’ and ‘Büttner’s Red’ were also 100% correctly discriminated for discriminative models built separately for RGB, Lab and XYZ color spaces, G , L and Y color channels and for models combining selected textural and geometric features. For discrimination ‘Lapins’ and ‘Büttner’s Red’ pits, slightly lower accuracies were determined—up to 93% for models built based on textures selected from all color channels, 91% for the RGB color space, 92% for the Lab and XYZ color spaces, 84% for the G and L color channels, 83% for the Y channel, 94% for geometric features, and 96% for combined textural and geometric features.

Suggested Citation

  • Ewa Ropelewska, 2020. "The Application of Machine Learning for Cultivar Discrimination of Sweet Cherry Endocarp," Agriculture, MDPI, vol. 11(1), pages 1-12, December.
  • Handle: RePEc:gam:jagris:v:11:y:2020:i:1:p:6-:d:467494
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    Cited by:

    1. Pan Fan & Guodong Lang & Pengju Guo & Zhijie Liu & Fuzeng Yang & Bin Yan & Xiaoyan Lei, 2021. "Multi-Feature Patch-Based Segmentation Technique in the Gray-Centered RGB Color Space for Improved Apple Target Recognition," Agriculture, MDPI, vol. 11(3), pages 1-18, March.

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