Knowledge graph and deep learning based pest detection and identification system for fruit quality

文献类型: 外文期刊

第一作者: Zhu, DingJu

作者: Zhu, DingJu;Xie, LianZi;Tan, JianBin;Zheng, Yongzhi;Hu, Qi;Yi, Shuai;Zhu, DingJu;Deng, RenFeng;Zhu, DingJu;Chen, BingXu;Mustafa, Rashed;Chen, Wanshan;Yung, KaiLeung;Andrew, W. H. Ip

作者机构:

关键词: Pests detection and identification; Knowledge graph; Raspberry PI; Image classification

期刊名称:INTERNET OF THINGS ( 影响因子:5.9; 五年影响因子:6.4 )

ISSN: 2543-1536

年卷期: 2023 年 21 卷

页码:

收录情况: SCI

摘要: Fruit usually plays a vital role in people's daily life. Many kinds of fruits are rich in vitamins and trace elements, which have high edible value. Pests and diseases are a considerable problem in the process of fruit planting. The quality and quantity of fruit can be effectively improved by the detection and preventing pests and diseases. However, suppose in the process of fruit growth, it is always necessary to manually identify and detect pests and diseases. In that case, it will inevitably consume a lot of workforce and material resources. Therefore, it is advisable to have an auto-mated system to save unnecessary time and effort. This article introduces the detection and identification system of pests and diseases based on Raspberry Pi to identify and detect the pests and diseases of fruit such as Longan and lychee. Firstly, we constructed a knowledge graph of pests and diseases related to lychee and longan. Then, we used the Raspberry Pi to control the camera to capture the pests and diseases images. Next, the system processed and recognized the images captured by the camera. Finally, the Bluetooth speaker broadcasted the results in real-time. We constructed the knowledge graph through data collection, information extraction, knowledge fusion and storage. We trained the vgg-16 model, which achieves 94.9% accuracy in the pests identification task, and we deployed it on a Raspberry Pi.

分类号:

  • 相关文献
作者其他论文 更多>>