首页|期刊导航|湖北农业科学|基于多尺度空间注意力机制与高斯核函数软标注的华山松大小蠹受害木遥感识别方法

基于多尺度空间注意力机制与高斯核函数软标注的华山松大小蠹受害木遥感识别方法OA

A remote sensing identification method for Dendroctonus armandi based on multi-scale spatial attention mechanism and Gaussian kernel soft labeling

中文摘要英文摘要

针对传统树冠边界标注耗时费力,且现有深度学习模型在复杂森林环境中易因下采样丢失空间细节而导致检测精度下降的问题,提出一种融合多尺度空间注意力机制卷积网络(MSSCN)与高斯核函数软标注的单木定位方法.以神农架林区2 000、2 200、2 400 m 3个海拔梯度的高分辨率航空遥感影像为数据源,仅标注华山松大小蠹(Dendroctonus armandi)受害木树冠中心点,并采用二维高斯核函数置信图生成标签和制作训练数据集,将区域分割任务转化为单木定位问题.通过调整多尺度特征卷积模块的位置,构建MSSCN1模型、MSSCN2模型、MSSCN3模型,并与U-Net模型、FCN模型和DeepLabV3+模型进行对比.结果表明,高斯核函数软标注方法降低了人工标注成本,同时支持受害木的精确定位.MSSCN3模型在训练100 Epoch时即达到最优性能,测试区精确率、召回率和F1得分的平均值分别为91.97%、93.68%和0.93,优于其他对比模型.MSSCN3模型在神农架林区高海拔区域整体表现出更优的检测性能,且在高暴发密度区的检测精度普遍高于低暴发密度区,然而,在海拔2 400 m的高暴发密度区,模型精度出现轻微下降,表明地形与生态因子可能对检测稳定性产生交互影响.MSSCN3模型能够准确识别神农架林区的华山松大小蠹受害木,为虫害防治提供了一种高效且鲁棒的技术路径.

To address the time-consuming and labor-intensive nature of traditional canopy boundary annotation,and the issue of de-creased detection accuracy in existing deep learning models due to the loss of spatial details from downsampling in complex forest envi-ronments,a single-tree positioning method that integrated a multi-scale spatial attention mechanism convolutional network(MSSCN)and Gaussian kernel function soft labeling was proposed.Using high-resolution aerial remote sensing images from three altitude gradi-ents(2 000 m,2 200 m,and 2 400 m)in the Shennongjia Forestry District as the data source,only the canopy center points of Den-droctonus armandi were annotated.A two-dimensional Gaussian kernel function was employed to generate confidence maps for label-ing and creating the training dataset,thereby transforming the regional segmentation task into a single-tree positioning problem.By ad-justing the position of the multi-scale feature convolution module,MSSCN1,MSSCN2,and MSSCN3 models were constructed and compared with the U-Net,FCN,and DeepLabV3+models.The results showed that the Gaussian kernel function soft labeling method reduced manual annotation costs while supporting the precise localization of infested trees.The MSSCN3 model achieved optimal per-formance after 100 training epochs,with average precision,recall,and F1-score values of 91.97%,93.68%,and 0.93 in the test ar-ea,respectively,outperforming the other comparative models.The MSSCN3 model generally demonstrated superior detection perfor-mance in high-altitude areas of the Shennongjia Forestry District,and its detection accuracy was generally higher in high-outbreak-density areas than in low-outbreak-density areas.However,a slight decrease in model accuracy was observed in the high-outbreak-density area at 2 400 m altitude,indicating that topographic and ecological factors might have interactive effects on detection stability.The MSSCN3 model could accurately identify Pinus armandii infested trees in the Shennongjia Forestry District,providing an efficient and robust technical pathway for pest control.

黄光体;林浩然;佃袁勇;韩泽民;彭寿连;刘晓阳;肖箫

湖北省林业调查规划院,武汉 430079华中农业大学,园艺林学学院,武汉 430070华中农业大学,园艺林学学院,武汉 430070||华中农业大学,湖北林业信息工程技术研究中心,武汉 430070华中农业大学,园艺林学学院,武汉 430070华中农业大学,园艺林学学院,武汉 430070湖北省林业调查规划院,武汉 430079湖北省林业调查规划院,武汉 430079

农业科技

多尺度空间注意力机制高斯核函数软标注华山松大小蠹(Dendroctonus armandi)受害木遥感识别

multi-scale spatial attention mechanismGaussian kernel soft labelingDendroctonus armandiinfested treesremote sensing identification

《湖北农业科学》 2026 (1)

159-165,185,8

国家自然科学基金项目(32371873)

10.14088/j.cnki.issn0439-8114.2026.01.026

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