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Error modeling based on geostatistics for uncertainty analysis in crop mapping using Gaofen-1 multispectral imagery

机译:基于地统计的误差建模,用于利用高分1多光谱图像进行作物制图中的不确定性分析

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With the development of remote sensing technology, its applications in agriculture monitoring systems, crop mapping accuracy, and spatial distribution are more and more being explored by administrators and users. Uncertainty in crop mapping is profoundly affected by the spatial pattern of spectral reflectance values obtained from the applied remote sensing data. Errors in remotely sensed crop cover information and the propagation in derivative products need to be quantified and handled correctly. Therefore, this study discusses the methods of error modeling for uncertainty characterization in crop mapping using GF-1 multispectral imagery. An error modeling framework based on geostatistics is proposed, which introduced the sequential Gaussian simulation algorithm to explore the relationship between classification errors and the spectral signature from remote sensing data source. On this basis, a misclassification probability model to produce a spatially explicit classification error probability surface for the map of a crop is developed, which realizes the uncertainty characterization for crop mapping. In this process, trend surface analysis was carried out to generate a spatially varying mean response and the corresponding residual response with spatial variation for the spectral bands of GF-1 multispectral imagery. Variogram models were employed to measure the spatial dependence in the spectral bands and the derived misclassification probability surfaces. Simulated spectral data and classification results were quantitatively analyzed. Through experiments using data sets from a region in the low rolling country located at the Yangtze River valley, it was found that GF-1 multispectral imagery can be used for crop mapping with a good overall performance, the proposal error modeling framework can be used to quantify the uncertainty in crop mapping, and the misclassification probability model can summarize the spatial variation in map accuracy and is helpful for satisfying the need for reliable local estimates for detailed precision management planting. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:随着遥感技术的发展,管理员和用户越来越多地探索其在农业监测系统中的应用,作物制图的准确性和空间分布。从应用的遥感数据获得的光谱反射率值的空间模式会严重影响作物制图的不确定性。遥感的农作物覆盖信息中的错误以及衍生产品中的传播需要进行量化和正确处理。因此,本研究讨论了使用GF-1多光谱图像对作物制图中的不确定性进行表征的误差建模方法。提出了一种基于地统计学的误差建模框架,引入了顺序高斯模拟算法,探讨了分类误差与遥感数据源光谱特征之间的关系。在此基础上,建立了误分类概率模型,为作物图生成了空间上明显的分类误差概率面,从而实现了作物图的不确定性表征。在此过程中,对GF-1多光谱图像的光谱带进行了趋势表面分析,以生成空间变化的平均响应和具有空间变化的相应残留响应。变异函数模型用于测量光谱带和导出的误分类概率面的空间依赖性。定量分析了模拟光谱数据和分类结果。通过使用来自长江流域低谷国家地区的数据集进行的实验,发现GF-1多光谱图像可用于作物制图,总体性能良好,建议误差建模框架可用于量化作物制图中的不确定性,误分类概率模型可以总结出地图精度中的空间变化,并有助于满足对详细的精度管理种植需要可靠的本地估计的需求。 (C)2015年光电仪器工程师协会(SPIE)

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