A precise berry counting method for in-cluster grapes to guide berry thinning
Wensheng Du, Weishuai Qin, Xiao Cui, Yanjun Zhu, Yonghao Jia, Ruihan Wang, Yuanpeng Du

TL;DR
This paper introduces an automated method for counting grapes in clusters to improve vineyard management efficiency and accuracy.
Contribution
A dual-branch network (MVDNet) and post-processing algorithm are proposed for precise and efficient berry counting in grape clusters.
Findings
MVDNet achieves a Mean Absolute Error (MAE) of 7.7 and a Root Mean Square Error (RMSE) of 12.6.
The model has only 3.372 million parameters, making it suitable for edge devices.
The post-processing algorithm achieves an R² of 0.886 for per-cluster berry counting.
Abstract
In table grape production, berry thinning is a vital management practice where workers remove berries to achieve a target number per cluster. However, this process fundamentally depends on obtaining an accurate initial berry count, which currently relies on manual methods. These conventional approaches are labor-intensive, slow, and error-prone, posing a significant bottleneck to efficient and precise vineyard management. This study proposes a method comprising a dual-branch network named MVDNet and a post-processing algorithm. MVDNet simultaneously performs density map regression for berry counting and bunch segmentation. Its architecture employs a Front-end containing UIB modules for feature extraction, multi-scale feature fusion for spatial detail reconstruction, and a parameter-free SimAM attention mechanism to enhance salient berry features. Extensive experiments demonstrate that…
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Taxonomy
TopicsSmart Agriculture and AI · Horticultural and Viticultural Research · Plant Surface Properties and Treatments
