Accurate estimation of hazelnut yield is crucial for optimizing resource management and harvest planning. Although the number of female flowers on a flowering plant is a reliable indicator of annual production, counting them remains difficult because of their extremely small size and inconspicuous shape and color. Currently, manual flower counting is the only available method, but it is time-consuming and prone to errors. In this study, a novel vision-based method for automatic flower counting specifically designed for hazelnut plants (Corylus avellana) exploiting a commercial high-resolution imaging system and an image-tiling strategy to enhance small-object detection is proposed. The method is designed to be fast and scalable, requiring less than 8 s per plant for processing, in contrast to 30–60 min typically required for manual counting by human operators. A dataset of 2000 labeled frames was used to train and evaluate multiple female hazelnut flower detection models. To improve the detection of small, low-contrast flowers, a modified YOLO11x architecture was introduced by adding a P2 layer, improving the preservation of fine-grained spatial information and resulting in a precision of 0.98 and a Mean Average Precision (mAP@50-95) of 0.89. The proposed method has been validated on images collected from hazelnut groves and compared with manual counting by four experienced operators in the field, demonstrating its ability to detect small, low-contrast flowers despite occlusions and varying lighting conditions. A regression-based bias correction was applied to compensate for systematic counting deviations, further improving accuracy and reducing the mean absolute percentage error to 27.44%, a value comparable to the variability observed in manual counting. The results indicate that the system can provide a scalable and efficient alternative to traditional female flower manual counting methods, offering an automated solution tailored to the unique challenges of hazelnut yield estimation.

Giulietti, N., Tombesi, S., Bedodi, M., Sergenti, C., Carnevale, M., Giberti, H., Hazelnut Yield Estimation: A Vision-Based Approach for Automated Counting of Hazelnut Female Flowers, <<SENSORS>>, N/A; 25 (10): N/A-N/A. [doi:10.3390/s25103212] [https://hdl.handle.net/10807/324290]

Hazelnut Yield Estimation: A Vision-Based Approach for Automated Counting of Hazelnut Female Flowers

Tombesi, Sergio;
2025

Abstract

Accurate estimation of hazelnut yield is crucial for optimizing resource management and harvest planning. Although the number of female flowers on a flowering plant is a reliable indicator of annual production, counting them remains difficult because of their extremely small size and inconspicuous shape and color. Currently, manual flower counting is the only available method, but it is time-consuming and prone to errors. In this study, a novel vision-based method for automatic flower counting specifically designed for hazelnut plants (Corylus avellana) exploiting a commercial high-resolution imaging system and an image-tiling strategy to enhance small-object detection is proposed. The method is designed to be fast and scalable, requiring less than 8 s per plant for processing, in contrast to 30–60 min typically required for manual counting by human operators. A dataset of 2000 labeled frames was used to train and evaluate multiple female hazelnut flower detection models. To improve the detection of small, low-contrast flowers, a modified YOLO11x architecture was introduced by adding a P2 layer, improving the preservation of fine-grained spatial information and resulting in a precision of 0.98 and a Mean Average Precision (mAP@50-95) of 0.89. The proposed method has been validated on images collected from hazelnut groves and compared with manual counting by four experienced operators in the field, demonstrating its ability to detect small, low-contrast flowers despite occlusions and varying lighting conditions. A regression-based bias correction was applied to compensate for systematic counting deviations, further improving accuracy and reducing the mean absolute percentage error to 27.44%, a value comparable to the variability observed in manual counting. The results indicate that the system can provide a scalable and efficient alternative to traditional female flower manual counting methods, offering an automated solution tailored to the unique challenges of hazelnut yield estimation.
2025
AREA07 - SCIENZE AGRARIE E VETERINARIE
Articolo su rivista presente in Web of Knowledge o Scopus o brevetto o monografia
Inglese
Articolo in rivista
Inglese
Corylus avellana
female flower counting
hazelnut tree
image tiling
vision-based measurement system
Settore AGRI-03/A - Arboricoltura generale e coltivazioni arboree
Multidisciplinary Digital Publishing Institute (MDPI)
25
10
N/A
N/A
N/A
3212
Goal 13: Climate action
info:eu-repo/semantics/article
Giulietti, N., Tombesi, S., Bedodi, M., Sergenti, C., Carnevale, M., Giberti, H., Hazelnut Yield Estimation: A Vision-Based Approach for Automated Counting of Hazelnut Female Flowers, <<SENSORS>>, N/A; 25 (10): N/A-N/A. [doi:10.3390/s25103212] [https://hdl.handle.net/10807/324290]
open
262
Giulietti, N.; Tombesi, Sergio; Bedodi, M.; Sergenti, C.; Carnevale, M.; Giberti, H.
6
art_per_29
03. Contributo in rivista::Articolo in rivista, Nota a sentenza
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