首页|GF-6与Sentinel-2A数据多层次优选的杨树食叶虫害信息提取研究

GF-6与Sentinel-2A数据多层次优选的杨树食叶虫害信息提取研究

Extraction of leaf-eating pest information in poplar trees using multilevel optimization of GF-6 and sentinel-2A

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以天津市蓟州区于桥水库北部为研究区,选用高分六号(GF-6)全色数据和哨兵二号(Sentinel-2A)多光谱数据,通过对遥感数据的虫害敏感波段、融合波段和分类识别特征的 3 个层次优选处理,进而提高杨树食叶虫害遥感识别信息的准确度.遥感影像经过预处理后,首先根据光谱统计特征差值最大化方法,优选出虫害区识别敏感的特征波段;然后利用波段相关系数大小优选融合波段方案,进行高通滤波(high-pass filtering,HPF)融合和Gram-Schmidt(GS)融合处理;最后通过Relief算法对植被指数等 19 种特征进行优选,确定食叶虫害遥感识别的特征.结果表明:①经过敏感波段优选后的HPF+GS融合,Sentinel-2A数据的红边波段、近红外波段、短波红外波段受虫害胁迫区杨树林的反射率值有明显变化,在分类时特征贡献度提升明显;②经过HPF+GS组合融合处理后,融合后的影像细节信息突出,植被监测光谱红边敏感波段的空间分辨率明显提高;③经过多层次的特征优选处理后的分类精度明显提高.未经过优选处理遥感影像分类精度为 83.15%,Kappa系数为 0.6785;经过优选后影像的分类精度为 90.64%,Kappa系数 0.8116,表明进行多次特征优选处理能够较为有效地提取食叶虫害影像信息.
Taking the northern part of Yuqiao Reservoir in Jizhou District of Tianjin as the research area,by selecting the panchromatic data of GF-6 and the multi-spectral data of Sentinel-2A.The accuracy of remote sensing identification information of poplar leaf-eating pests was improved by optimizing the three levels of pest sensitive bands,fusion bands and classification recognition features of remote sensing data.After the remote sensing image was preprocessed,the sensitive characteristic bands of pest area identification were selected first,according to the spectral statistical feature difference maximization method.Then the band correlation coefficient was used to achieve the purpose of optimizing the fusion band scheme,and the HPF fusion and GS fusion processing were carried out.Finally,the Relief algorithm was used to optimize 19 features,such as vegetation index,to determine the characteristics of remote sensing identification of leaf-eating pests.The results show that:①the reflectance values of poplar forests in the red edge band,near-infrared band and short-wave infrared band of Sentinel-2A data were significantly changed through the HPF+GS fusion after optimizing sensitive bands,and the feature contribution was significantly improved during classification.②After the combination of HPF+GS fusion processing,the details of the fused image were prominent,and the spatial resolution of the red edge sensitive band of the vegetation monitoring spectrum was significantly improved.③After multi-level feature optimization,the classification accuracy was significantly improved.The classification accuracy of remote sensing images without optimization was 83.15%,and the Kappa coefficient was 0.6785.The classification accuracy of the image after priority was 90.64%,and the Kappa coefficient was 0.8116.To sum up,multiple feature optimization processing can effectively extract leaf-eating pest image information.

remote sensing monitoringleaf-eating pest information extractionimage fusionfeature optimizationobject oriented

缪若梵、李孟倩、汪金花、纪天齐、王赛楠

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华北理工大学矿业工程学院,河北唐山 063210

天津十年树人科技有限公司,天津 300350

遥感监测 食叶虫害信息提取 影像融合 特征优选 面向对象

国家自然科学基金河北省自然科学基金

52274166E2021209147

2024

云南大学学报(自然科学版)
云南大学

云南大学学报(自然科学版)

CSTPCD北大核心
影响因子:0.663
ISSN:0258-7971
年,卷(期):2024.46(3)