可靠性
生产(经济)
质量(理念)
计算机科学
卷积神经网络
人工智能
农业工程
数学
工程类
经济
宏观经济学
哲学
认识论
政治学
法学
作者
Hanlin Zhou,Jianlong Luo,Qiuping Ye,Wenjun Leng,Jingfeng Qin,Jing Lin,Xiaoyu Xie,Yilan Sun,Shiguo Huang,Jie Pang
摘要
Abstract Background To produce jasmine tea of excellent quality, it is crucial to select jasmine flowers at their optimal growth stage during harvesting. However, achieving this goal remains a challenge due to environmental and manual factors. This study addresses this issue by classifying different jasmine flowers based on visual attributes using the YOLOv7 algorithm, one of the most advanced algorithms in convolutional neural networks. Results The mean average precision (mAP value) for detecting jasmine flowers using this model is 0.948, and the accuracy for five different degrees of openness of jasmine flowers, namely small buds, buds, half‐open, full‐open and wiltered, is 87.7%, 90.3%, 89%, 93.9% and 86.4%, respectively. Meanwhile, other ways of processing the images in the dataset, such as blurring and changing the brightness, also increased the credibility of the algorithm. Conclusion This study shows that it is feasible to use deep learning algorithms for distinguishing jasmine flowers at different growth stages. This study can provide a reference for jasmine production estimation and for the development of intelligent and precise flower‐picking applications to reduce flower waste and production costs. © 2024 Society of Chemical Industry.
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