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Developing Machine Vision in Tree-Fruit Applications-Fruit Count, Fruit Size and Branch Avoidance in Automated

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This study demonstrates how advanced Convolutional Neural Networks (CNNs) like YOLOv8 improve automated mango harvesting by accurately detecting fruit and branches. Publicly available datasets and reproducible training methods ensure reliable performance for machine vision applications.

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Area of Science:

  • Computer Vision
  • Agricultural Technology
  • Machine Learning

Background:

  • Advancements in depth imaging hardware and 2D Convolutional Neural Networks (CNNs) are driving machine vision adoption.
  • Mainstream models now often surpass application-specific architectures in performance.
  • Publicly releasing training and test datasets is crucial for validating and re-evaluating research.

Purpose of the Study:

  • To evaluate the effectiveness of mainstream CNN models for key mango orchard applications: fruit counting, fruit sizing, and branch avoidance.
  • To quantify the impact of stochastic processes on model retraining.
  • To assess the viability of edge computing devices for real-time agricultural tasks.

Main Methods:

  • Utilized YOLOv8m and YOLOv9 models for object detection and segmentation tasks.
  • Compared performance against benchmark models like MangoYOLO and Mask R-CNN.
  • Developed and implemented a branch avoidance algorithm using YOLOv8m-seg.
  • Ensured all training and test datasets are publicly available.

Main Results:

  • YOLOv8m achieved 99.3% mAP50 for real-time mango fruit detection, outperforming MangoYOLO.
  • YOLOv8 and v9 models exceeded Mask R-CNN in accuracy and inference speed for fruit and branch detection.
  • YOLOv8m-seg demonstrated comparable accuracy to Mask R-CNN for fruit sizing with significantly reduced inference time.
  • Low coefficient of variation (0.2%–2%) in mAP across repeated trainings indicates model stability.

Conclusions:

  • Mainstream CNN models, particularly YOLOv8, offer superior performance and efficiency for automated mango harvesting tasks compared to previous benchmarks.
  • The short inference times enable real-time implementation on edge computing devices, facilitating field adoption.
  • Publicly available datasets and reproducible training practices enhance the reliability and re-evaluation of machine vision research in agriculture.