基于Android平台的烟草病害智能识别解决方案研究

Jingjing Li, Yi Xu, Yapeng Li, Kepei Qi, Feiyong Yu, Shaohua Sun
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引用次数: 0

摘要

为了提高烟草病害的识别准确率,提高识别效率和方便性,降低识别成本,本项目开展了基于深度学习的烟草病害识别技术研究。首先,建立数据集。该数据集由几种常见的烟草疾病图像组成,并根据专家的诊断结果进行标记。其次,考虑识别率和准确率,对YOLOv7网络模型进行研究和剪枝。第三,利用建立的训练数据集对剪枝模型进行训练。然后,将训练好的模型移植到Android系统。最后进行了实验测试,结果表明该模型可以在Android系统下高效运行,检测准确率达到90%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Intelligent Recognition Solution of Tobacco Disease on Android Platform
In order to improve the recognition accuracy of tobacco diseases, improve the recognition efficiency and convenience, and reduce the recognition cost, this project carried out the research on the recognition technology of tobacco diseases based on deep learning. First, the data set was established. The data set is consisted of several kinds of common tobacco diseases images which were labeled according to the experts’ diagnosis results. Second, the YOLOv7 network model was studied and pruned considering the recognition rate and accurate. Third, the pruned model was trained using the established training dataset. Then, the trained model is ported to Android system. Finally, an experimental testing was carried out, and the results show that the model can run efficiently in Android system with the detection accuracy above 90%.
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