Performance Evaluation of YOLOv8 Model Configurations, for Instance Segmentation of Strawberry Fruit Development Stages in an Open Field Environment
Abdul-Razak Alhassan Gamani, Ibrahim Arhin, and Adrena Kyeremateng, Asamoah

TL;DR
This study evaluates various YOLOv8 model configurations for instance segmentation of strawberries in open fields, highlighting YOLOv8n's superior accuracy and speed for practical agricultural applications.
Contribution
It provides a comprehensive performance comparison of YOLOv8 configurations for strawberry segmentation, demonstrating YOLOv8n's effectiveness in open-field environments.
Findings
YOLOv8n achieved 80.9% mAP in segmentation accuracy.
YOLOv8n processed images at 12.9 milliseconds.
YOLOv8n detected more ripe and unripe strawberries than other configurations.
Abstract
Accurate identification of strawberries during their maturing stages is crucial for optimizing yield management, and pest control, and making informed decisions related to harvest and post-harvest logistics. This study evaluates the performance of YOLOv8 model configurations for instance segmentation of strawberries into ripe and unripe stages in an open field environment. The YOLOv8n model demonstrated superior segmentation accuracy with a mean Average Precision (mAP) of 80.9\%, outperforming other YOLOv8 configurations. In terms of inference speed, YOLOv8n processed images at 12.9 milliseconds, while YOLOv8s, the least-performing model, processed at 22.2 milliseconds. Over 86 test images with 348 ground truth labels, YOLOv8n detected 235 ripe fruit classes and 51 unripe fruit classes out of 251 ground truth ripe fruits and 97 unripe ground truth labels, respectively. In comparison,…
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Taxonomy
TopicsHorticultural and Viticultural Research · Greenhouse Technology and Climate Control · Berry genetics and cultivation research
MethodsYou Only Look Once · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
