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A Concept Study for Feature Extraction and Modeling for Grapevine Yield Prediction

Affiliation
Department of Computer Science IV, University of Bonn, Bonn, Germany
Huber, Florian;
Affiliation
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung (IOSB), Karlsruhe, Germany
Hoffmann, Benedikt;
GND
125203010X
Affiliation
Julius Kühn Institute (JKI), Institute for Grapevine Breeding, Germany
Engler, Hannes;
Affiliation
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung (IOSB), Karlsruhe, Germany
Gauweiler, Pascal;
Affiliation
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung (IOSB), Karlsruhe, Germany
Fischer, Benedikt;
GND
1050416945
Affiliation
Julius Kühn Institute (JKI), Institute for Grapevine Breeding, Germany
Herzog, Katja;
GND
1059151588
Affiliation
Julius Kühn Institute (JKI), Institute for Grapevine Breeding, Germany
Kicherer, Anna;
GND
1059151928
Affiliation
Julius Kühn Institute (JKI), Institute for Grapevine Breeding, Germany
Töpfer, Reinhard;
Affiliation
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung (IOSB), Karlsruhe, Germany
Gruna, Robin;
Affiliation
Department of Computer Science IV, University of Bonn, Bonn, Germany
Steinhage, Volker

Yield prediction in viticulture is an especially challenging research direction within the field of yield prediction. The characteristics that determine annual grapevine yields are plentiful, difficult to obtain, and must be captured multiple times throughout the year. The processes currently used in grapevine yield prediction are based mainly on manually captured data and rigid statistical measures derived from historical insights. Experts for data acquisition are scarce, and statistical models cannot meet the requirements of a changing environment, especially in times of climate change. This paper contributes a concept on how to overcome those drawbacks, by (1) proposing a deep learning driven approach for feature recognition and (2) explaining how Extreme Gradient Boosting (XGBoost) can be utilized for yield prediction based on those features, while being explainable and computationally inexpensive. The methods developed will be influential for the future of yield prediction in viticulture.

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License Holder: The author(s) 2024

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