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首页> 外文期刊>International journal of applied mechanics >Identification of Seed Maize Fields With High Spatial Resolution and Multiple Spectral Remote Sensing Using Random Forest Classifier
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Identification of Seed Maize Fields With High Spatial Resolution and Multiple Spectral Remote Sensing Using Random Forest Classifier

机译:随机林分类器具有高空间分辨率和多光谱遥感种子玉米场的识别

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Seed maize and common maize plots have different planting patterns and variety types. Identification of seed maize is the basis for seed maize growth monitoring, seed quality and common maize seed supply. In this paper, a random forest (RF) classifier is used to develop an approach for seed maize fields' identification, using the time series vegetation indexes (VIs) calculated from multispectral data acquired from Landsat 8 and Gaofen 1 satellite (GF-1), field sample data, and texture features of Gaofen 2 satellite (GF-2) panchromatic data. Huocheng and Hutubi County in the Xinjiang Uygur Autonomous Region of China were chosen as study area. The results show that RF performs well with the combination of six VIs (normalized difference vegetation index (NDVI), enhanced vegetation index (EVI), triangle vegetation index (TVI), ratio vegetation index (RVI), normalized difference water index (NDWI) and difference vegetation index (DVI)) and texture features based on a grey-level co-occurrence matrix. The classification based on "spectrum + texture" information has higher overall, user and producer accuracies than that of spectral information alone. Using the "spectrum + texture" method, the overall accuracy of classification in Huocheng County is 95.90%, the Kappa coefficient is 0.92, and the producer accuracy for seed maize fields is 93.91%. The overall accuracy of the classification in Hutubi County is 97.79%, the Kappa coefficient is 0.95, and the producer accuracy for seed maize fields is 97.65%. Therefore, RF classifier inputted with high-resolution remote-sensing image features can distinguish two kinds of planting patterns (seed and common) and varieties types (inbred and hybrid) of maize and can be used to identify and map a wide range of seed maize fields. However, this method requires a large amount of sample data, so how to effectively use and improve it in areas lacking samples needs further research.
机译:种子玉米和普通玉米图具有不同的种植模式和种类类型。鉴定种子玉米是种子玉米生长监测,种子质量和常见玉米种子供应的基础。在本文中,随机森林(RF)分类器用于开发种子玉米场识别的方法,使用从Landsat 8和高谱1卫星获取的多光谱数据计算的时间序列植被指数(VI)(GF-1) ,高芬2卫星(GF-2)全形数据的现场样本数据和纹理特征。霍成和湖府县在新疆维吾尔自治区的中国自治区被选为学习区。结果表明,射频对六种VIS(归一化差异植被指数(NDVI),增强植被指数(EVI),三角植被指数(TVI),比率植被指数(RVI),归一化差异水指数(NDWI)的组合而言基于灰度共生矩阵的差异植被指数(DVI))和纹理特征。基于“Spectrum +纹理”信息的分类总体上具有更高的总体,用户和生产者的准确性,而不是单独的光谱信息。利用“频谱+质地”方法,霍成县分类的总体准确性为95.90%,即喀珀系数为0.92,种子玉米田的生产者准确度为93.91%。河浦县分类的总体准确性为97.79%,喀布布系数为0.95,种子玉米田地的生产者准确度为97.65%。因此,利用高分辨率遥感图像特征输入的RF分类器可以区分玉米的两种种植模式(种子和常见)(种子和常见)和品种类型(近交和杂交),并且可用于识别和映射各种种子玉米字段。然而,这种方法需要大量的样本数据,因此如何在缺乏样本需要进一步研究的区域中有效地使用和改善它。

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