湖北农业科学 ›› 2025, Vol. 64 ›› Issue (2): 192-196.doi: 10.14088/j.cnki.issn0439-8114.2025.02.030

• 信息工程 • 上一篇    下一篇

基于改进NanoDet-Plus网络的树木小目标病虫害识别

赵小平1, 董众祥2, 冯瑾霞1, 闫学龙1, 胡晶洁1   

  1. 1.酒泉市肃州区城市园林绿化所,甘肃 酒泉 735000;
    2.甘肃盐池湾国家级自然保护区管护中心,甘肃 酒泉 735000
  • 收稿日期:2024-07-30 出版日期:2025-02-25 发布日期:2025-03-07
  • 通讯作者: 董众祥(1969-),男,甘肃酒泉人,高级工程师,主要从事林业方向研究,(电话)13830785612(电子信箱)1098213013@qq.com。
  • 作者简介:赵小平(1971-),女,甘肃酒泉人,高级工程师,主要从事现代园艺、城市园林绿化研究,(电话)18993768632(电子信箱)627803053@qq.com。
  • 基金资助:
    祁连山国家公园酒泉分局生态监测科技专项(XDA2006700)

Recognition of small target diseases and pests in trees based on the improved NanoDet-Plus network

ZHAO Xiao-ping1, DONG zhong-xiang2, FENG Jin-xia1, YAN Xue-long1, HU Jing-jie1   

  1. 1. Urban Landscape and Greening Institute of Suzhou District, Jiuquan 735000, Gansu,China;
    2. Management and Protection Center of Yanchiwan National Nature Reserve, Jiuquan 735000, Gansu,China
  • Received:2024-07-30 Published:2025-02-25 Online:2025-03-07

摘要: 为提高对树木小目标病虫害识别精度,提出一种基于改进NanoDet-Plus网络的小目标病虫害识别方法。为增强对小目标特征的提取能力,通过注意力机制对NanoDet-Plus网络的主干网络进行改进,利用改进NanoDet-Plus网络对松树疫区松材线虫病进行识别。结果表明,在IOU为0.55时,改进NanoDet-Plus网络识别的平均精度达94.51%;在IOU为0.80时,改进NanoDet-Plus网络识别的平均精度为66.57%;在IOU为0.55~0.95时,改进NanoDet-Plus网络识别的平均精度为60.05%。改进NanoDet-Plus网络识别的平均精度均明显高于传统的Faster R-CNN网络、YOLO v6s网络、NanoDet网络、NanoDet-Plus网络,且在定位精度和稳定性上的表现最好。由此得出,改进NanoDet-Plus网络具有较好的识别性能,可用于林业病虫害检测,提高防治效率。

关键词: 改进NanoDet-Plus网络, 树木, 松材线虫病, 小目标, 病虫害, 识别

Abstract: In order to improve the accuracy of identifying small target pests and diseases of trees, a small target pest and disease recognition method based on the improved NanoDet-Plus network was proposed. To enhance the ability to extract small target features, the backbone network of the NanoDet Plus network was improved through attention mechanism, and the improved NanoDet-Plus network was used to identify pine wood nematode disease in pine epidemic areas. The results showed that at an IOU of 0.55, the average accuracy of the improved NanoDet-Plus network recognition reached 94.51%;when the IOU was 0.80, the average accuracy of the improved NanoDet-Plus network recognition was 66.57%;when the IOU was between 0.55 and 0.95, the average accuracy of the improved NanoDet-Plus network recognition was 60.05%. The average accuracy of the improved NanoDet-Plus network recognition was significantly higher than that of traditional Faster R-CNN network, YOLO v6s network, NanoDet network, and NanoDet Plus network, and it performed the best in positioning accuracy and stability.From this, it could be concluded that the improved NanoDet-Plus network had good recognition performance and could be used for forestry pest and disease detection, which could improve prevention and control efficiency.

Key words: improved NanoDet-Plus network, tree, pine wood nematode disease, small goals, diseases and pests, recognition

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