Image analysis-based modelling for flower number estimation in grapevine

  1. Millan, B. 1
  2. Aquino, A. 1
  3. Diago, M.P. 1
  4. Tardaguila, J. 1
  1. 1 Instituto de Ciencias de la Vid y del Vino
    info

    Instituto de Ciencias de la Vid y del Vino

    Logroño, España

    ROR https://ror.org/01rm2sw78

Revista:
Journal of the Science of Food and Agriculture

ISSN: 0022-5142

Año de publicación: 2017

Volumen: 97

Número: 3

Páginas: 784-792

Tipo: Artículo

DOI: 10.1002/JSFA.7797 SCOPUS: 2-s2.0-84973520060 WoS: WOS:000395329000009 GOOGLE SCHOLAR

Otras publicaciones en: Journal of the Science of Food and Agriculture

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Resumen

BACKGROUND: Grapevine flower number per inflorescence provides valuable information that can be used for assessing yield. Considerable research has been conducted at developing a technological tool, based on image analysis and predictive modelling. However, the behaviour of variety-independent predictive models and yield prediction capabilities on a wide set of varieties has never been evaluated. RESULTS: Inflorescence images from 11 grapevine Vitis vinifera L. varieties were acquired under field conditions. The flower number per inflorescence and the flower number visible in the images were calculated manually, and automatically using an image analysis algorithm. These datasets were used to calibrate and evaluate the behaviour of two linear (single-variable and multivariable) and a nonlinear variety-independent model. As a result, the integrated tool composed of the image analysis algorithm and the nonlinear approach showed the highest performance and robustness (RPD = 8.32, RMSE = 37.1). The yield estimation capabilities of the flower number in conjunction with fruit set rate (R2=0.79) and average berry weight (R2=0.91) were also tested. CONCLUSION: This study proves the accuracy of flower number per inflorescence estimation using an image analysis algorithm and a nonlinear model that is generally applicable to different grapevine varieties. This provides a fast, non-invasive and reliable tool for estimation of yield at harvest. © 2016 Society of Chemical Industry.