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基于Sentinel-1/2數(shù)據(jù)特征優(yōu)選的冬小麥種植區(qū)識(shí)別方法研究
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Research on Winter Wheat Planting Area Identification Method Based on Sentinel-1/2 Data Feature Optimization
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    摘要:

    為了提高冬小麥種植區(qū)識(shí)別精度,本文基于谷歌地球引擎(Google Earth Engine,,GEE)平臺(tái)和隨機(jī)森林算法,對(duì)比雷達(dá)和光學(xué)遙感數(shù)據(jù)對(duì)冬小麥提取效果的差異,并對(duì)多類特征變量進(jìn)行重要性分析,,研究特征優(yōu)選對(duì)冬小麥識(shí)別精度的影響。選取2019年3—5月冬小麥關(guān)鍵生育期的Sentinel-1和Sentinel-2影像為數(shù)據(jù)源,,構(gòu)建Sentinel-1的極化特征和紋理特征以及Sentinel-2的光譜特征,、植被指數(shù)特征、植被指數(shù)變化率特征共5類特征變量,;設(shè)置不同數(shù)據(jù)源和不同特征組合的冬小麥種植區(qū)提取方案,;對(duì)方案中特征變量進(jìn)行優(yōu)選,得出最優(yōu)特征組合,利用最優(yōu)特征組合對(duì)河南省駐馬店市冬小麥種植區(qū)進(jìn)行提取,。結(jié)果表明,,無(wú)論是否進(jìn)行特征優(yōu)選,基于多源遙感數(shù)據(jù)的冬小麥識(shí)別精度均優(yōu)于僅采用光學(xué)或雷達(dá)數(shù)據(jù)的精度,;經(jīng)過(guò)特征優(yōu)選后,,各方案的分類精度均有不同程度的提升,說(shuō)明多源數(shù)據(jù)特征變量組合和特征優(yōu)選均能夠提高分類精度,。不同月份和類型的特征變量對(duì)分類精度的貢獻(xiàn)率不同,,貢獻(xiàn)率由大到小為4月、3月和5月,;貢獻(xiàn)率由大到小的特征類型為極化特征,、植被指數(shù)變化率特征、植被指數(shù)特征,、光譜特征和紋理特征,。基于多源數(shù)據(jù)特征優(yōu)選提取的2019年駐馬店冬小麥空間分布最優(yōu),,總體精度為95.60%,,Kappa系數(shù)為0.93,冬小麥提取面積與統(tǒng)計(jì)年鑒數(shù)據(jù)相比,,相對(duì)誤差為2.23%,。本文可為基于多源光學(xué)和雷達(dá)遙感影像進(jìn)行農(nóng)作物種植區(qū)提取的研究提供理論參考。

    Abstract:

    In order to improve the accuracy of winter wheat identification, the difference between radar and optical remote sensing data on winter wheat area extraction was compared and analyzed based on Google Earth Engine (GEE) platform and random forest algorithm. The importance analysis of multiple feature variables was performed to study the influence of feature optimization on the accuracy of winter wheat extraction. The Sentinel-1 and Sentinel-2 images during the main growth period of winter wheat (from March 1 to May 31, 2019) were chosen as the data sources. The polarization and texture features of Sentinel-1 data as well as the spectral, vegetation index and vegetation index change rate features of Sentinel-2 data were constructed. Six winter wheat identification schemes were constructed based on different remote sensing data sources and feature combinations, and the accuracies of the schemes were compared and analyzed. Then the feature variables were optimized and the optimal feature combination was obtained to extract the planting area of winter wheat in Zhumadian City, Henan Province. The results showed that regardless of feature optimization, the results of winter wheat area extraction based on multi-source remote sensing data were superior to those by using only optical or radar data. After feature optimization, the classification accuracy of each scheme was further improved, indicating that both the combination of multi-source feature variables and feature optimization can improve the winter wheat identification accuracy. In addition, the feature variables of different months and types had different contribution rates to classification accuracy, and the months with contribution rates from high to low were April, March and May. The feature types with contribution rates from high to low were polarization, vegetation index change rate, vegetation index, spectral features and texture. The accuracy of winter wheat extraction in Zhumadian based on both multi-source satellite data and feature optimization were the best, with the overall accuracy of 95.60% and Kappa coefficient of 0.93. The relative error between the extracted area of winter wheat and official statistical data was 2.23%. The research result can provide an important theoretical reference for crop planting area extraction based on multi-source optical and radar remote sensing images.

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解毅,王佳楠,劉鈺.基于Sentinel-1/2數(shù)據(jù)特征優(yōu)選的冬小麥種植區(qū)識(shí)別方法研究[J].農(nóng)業(yè)機(jī)械學(xué)報(bào),2024,55(2):231-241. XIE Yi, WANG Jia’nan, LIU Yu. Research on Winter Wheat Planting Area Identification Method Based on Sentinel-1/2 Data Feature Optimization[J]. Transactions of the Chinese Society for Agricultural Machinery,2024,55(2):231-241.

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  • 收稿日期:2023-07-31
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  • 在線發(fā)布日期: 2024-02-10
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