通过Yolo-v7目标检测评估提高草莓收获效率

Mehmet Nergi̇z
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引用次数: 0

摘要

草莓果实富含维生素A和类胡萝卜素,对维持上皮组织健康、促进成熟和生长有益。草莓的集约化栽培和快速成熟使它们容易过早收获,导致腐败和农民的经济损失。这强调了需要一种自动化检测方法来监测草莓的发育,并准确地识别果实的生长阶段。为了应对这一挑战,本研究使用了一个名为Strawberry-DS的数据集,该数据集包括在埃及吉萨农业研究中心的温室中拍摄的247张图像。数据集的图像包含各种视角,包括顶部视角和角度视角,并说明了六个不同的增长阶段:“绿色”、“红色”、“白色”、“转向”、“早期转向”和“后期转向”。本研究采用Yolo-v7方法进行目标检测,实现了草莓不同生长阶段的识别和分类。成就的mAP@.生长阶段的5个值分别为:“绿”为0.37,“白”为0.335,“早转”为0.505,“转”为1.0,“晚转”为0.337,“红”为0.804。所有类的综合性能结果如下:精度为0.792,召回率为0.575,mAP@.5在0.558,mAP@.5:。95在0.46。值得注意的是,这些结果显示了所提出的研究在性能评估和视觉评估方面的有效性,即使在处理涉及标签分布不平衡和水果发育阶段标签不明确的分散情景时也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Strawberry Harvesting Efficiency through Yolo-v7 Object Detection Assessment
Strawberry fruits which are rich in vitamin A and carotenoids offer benefits for maintaining healthy epithelial tissues and promoting maturity and growth. The intensive cultivation and swift maturation of strawberries make them susceptible to premature harvesting, leading to spoilage and financial losses for farmers. This underscores the need for an automated detection method to monitor strawberry development and accurately identify growth phases of fruits. To address this challenge, a dataset called Strawberry-DS, comprising 247 images captured in a greenhouse at the Agricultural Research Center in Giza, Egypt, is utilized in this research. The images of the dataset encompass various viewpoints, including top and angled perspectives, and illustrate six distinct growth phases: "green", “red”, "white", "turning", "early-turning" and "late-turning". This study employs the Yolo-v7 approach for object detection, enabling the recognition and classification of strawberries in different growth phases. The achieved mAP@.5 values for the growth phases are as follows: 0.37 for "green," 0.335 for "white," 0.505 for "early-turning," 1.0 for "turning," 0.337 for "late-turning," and 0.804 for "red". The comprehensive performance outcomes across all classes are as follows: precision at 0.792, recall at 0.575, mAP@.5 at 0.558, and mAP@.5:.95 at 0.46. Notably, these results show the efficacy of the proposed research, both in terms of performance evaluation and visual assessment, even when dealing with distracting scenarios involving imbalanced label distributions and unclear labeling of developmental phases of the fruits.
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