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结合光谱变换与特征选择的火龙果株数高光谱遥感提取

郭松 舒田 赵泽英 许元红 陈智虎 蒋丹垚

果树学报2025,Vol.42Issue(12):2898-2909,12.
果树学报2025,Vol.42Issue(12):2898-2909,12.DOI:10.13925/j.cnki.gsxb.20250015

结合光谱变换与特征选择的火龙果株数高光谱遥感提取

Hyperspectral remote sensing extraction of pitaya number by combining spectral transformation and feature selection

郭松 1舒田 1赵泽英 1许元红 1陈智虎 1蒋丹垚2

作者信息

  • 1. 贵州省农业科技信息研究所,贵阳 550006
  • 2. 西北农林科技大学资源环境学院,陕西杨凌 712100
  • 折叠

摘要

Abstract

[Objective]Rapid and non-destructive acquisition of plant spatial information and plant number of pitaya is an important prerequisite for accurate monitoring its growth and adjusting regional planting structure.Traditional field measurement is costly and inefficient,however,hyperspectral re-mote sensing is simple to operate and the data is more sensitive to vegetation,so it has become an effec-tive means for non-contact acquisition of vegetation spatial information at a large scale.[Methods]The DJI M600 low-altitude UAV equipped with Pika XC2 sensor was used to collect hyperspectral remote sensing images of pitaya growing areas in Shangguan town,Guanling county,Guizhou province.Differ-ent regions were divided according to surface complexity and the spectral curves of major surface ob-jects were calculated using Envi 5.3.After Savitzky-Golay second-order smoothing,first derivative spectrum(FDS)and continuum removal spectrum(CRS)were derived to explore the potential of hyper-spectral image data,and a feature selection method was proposed to eliminate redundant variables by defining dimension reduction strategy from feature distance.Based on artificial neural network(ANN),support vector machine(SVM)and random forest(RF)machine learning models,different ground ob-jects in the study area were divided,and the plant number was calculated by combining the projected ar-ea of pitaya measured on the surface.[Results]The results were as follows:(1)The reflectance of the primary hyperspectral curve of pitaya was lower in the visible wavelength region and higher in the near infrared wavelength region,and the reflectance between them was connected by red edge;The spectral reflectance of pitaya and other ground objects were different in different spectral types.The primary spectrum was located in the"red valley"and"high reflective platform",the first derivative spectrum was located in the"red edge"and"green peak",and the continuum removal spectrum was located in the"red valley"and"green peak".(2)The feature selection algorithm defined by the feature distance had a better dimensionality reduction effect,and the number of feature bands was proportional to the surface complexity.The number of feature bands of pitaya ranged from 2 to 9 under different spectral types in each region,and the dimensionality reduction ratio was all above 97%.The spectral transforma-tion could effectively reduce the number of feature bands and the distance between features.The charac-teristic bands of different spectral types in each region were mainly concentrated in the"red valley","red edge"and"near infrared"regions.(3)The classification accuracy of ground objects and the extrac-tion accuracy of plant number were inversely proportional to the surface complexity.Among all classifi-cation models,the accuracy of CRS-RF models was the best,and the overall classification accuracy and Kappa coefficient were above 84%and 0.87,respectively,indicating that the training set and the result set were completely consistent.CRS-RF models had the best effect on the number of pitaya,and the ac-curacy in different regions was above 83.33%.[Conclusion]The combination of continuum removal transformation and random forest algorithm can accurately identify pitaya plant information,which can provide technical reference for obtaining the spatial information of pitaya plants in karst area at a large scale.In practical application,it is only necessary to input hyperspectral remote sensing image of the study area into the trained CRS-RF model,and then the space position and plant number of pitaya in the corresponding region can be output.

关键词

火龙果/无人机高光谱/光谱变换/特征选择/机器学习/株数提取

Key words

Pitaya/UAV hyperspectral remote sensing/Spectral transformation/Feature selection/Ma-chine learning/Extraction number of pitaya plant

分类

农业科技

引用本文复制引用

郭松,舒田,赵泽英,许元红,陈智虎,蒋丹垚..结合光谱变换与特征选择的火龙果株数高光谱遥感提取[J].果树学报,2025,42(12):2898-2909,12.

基金项目

科研机构创新能力建设专项(黔科合服企[2021]15号) (黔科合服企[2021]15号)

果树学报

OA北大核心

1009-9980

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