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Support vector regression and synthetically mixed training data for quantifying urban land cover

机译:支持向量回归和综合训练数据用于量化城市土地覆盖

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Exploiting imaging spectrometer data with machine learning algorithms has been demonstrated to be an excellent choice for mapping ecologically meaningful land cover categories in spectrally complex urban environments. However, the potential of kernel-based regression techniques for quantitatively analyzing urban composition has not yet been fully explored. To a great extent, this can be explained by difficulties in deriving quantitative training information that reliably represents pairs of spectral signatures with associated land cover fractions needed for empirical modeling. In this paper we present an approach to circumvent this limitation by combining support vector regression (SVR) with synthetically mixed training data to map sub-pixel fractions of single urban land cover categories of interest. This approach was tested on Hyperspectral Mapper (HyMap) data acquired over Berlin, Germany. Fraction estimates were validated with extensive manual mappings and compared to fractions derived from multiple endmember spectral mixture analysis (MESMA). Our regression results demonstrate that the sets of multiple mixtures yielded high accuracies for quantitative estimates for four spectrally complex urban land cover types, i.e., fractions of impervious rooftops and pavements, as well as grass- and tree-covered areas. Despite the extrapolation uncertainty of SVR, which resulted in fraction values below 0% and above 100%, physically meaningful model outputs were reported for a clear majority of pixels, and visual inspection underpinned the quality of produced fraction maps. Statistical accuracy assessment with detailed reference information for 92 urban blocks showed linear relations with R~2 values of 0.86, 0.58, 0.81 and 0.85 for the four categories, respectively. Mean absolute errors (MAE) ranged from 6.4 to 12.8% and block-wise sums of the four individually modeled category fractions were always around 100%. Results of MESMA followed similar trends, but with slightly lower accuracies. Our findings demonstrate that the combination of SVR and synthetically mixed training data enable the use of empirical regression for sub-pixel mapping. Thus, the strengths of kernel-based approaches for quantifying urban land cover from imaging spectrometer data can be well utilized. Remaining uncertainties and limitations were related to the known phenomena of spectral similarity or ambiguity of urban materials, the spectral deficiencies in shaded areas, or the dependency on comprehensive and representative spectral libraries. Therefore, the suggested workflow constitutes a new flexible and extendable universal modeling approach to map land cover fractions.
机译:使用机器学习算法开发成像光谱仪数据已被证明是在光谱复杂的城市环境中绘制具有生态意义的土地覆盖类别的绝佳选择。然而,基于核的回归技术用于定量分析城市构成的潜力尚未得到充分探索。在很大程度上,这可以用难以解释的定量训练信息来解释,该信息可以可靠地表示成对的光谱特征对和经验建模所需的相关土地覆盖率。在本文中,我们提出了一种通过将支持向量回归(SVR)与综合混合的训练数据相结合来映射单个感兴趣的城市土地覆盖类别的亚像素部分的方法来克服此限制。此方法已在通过德国柏林获取的高光谱映射器(HyMap)数据上进行了测试。馏分估计值已通过大量手动映射进行了验证,并与源自多个端元光谱混合物分析(MESMA)的馏分进行了比较。我们的回归结果表明,多种混合物的集合对四种光谱复杂的城市土地覆盖类型(即不透水的屋顶和人行道的一部分以及草木覆盖的区域)进行定量估计具有很高的准确性。尽管SVR的外推不确定性导致分数值低于0%且高于100%,但报告的物理上有意义的模型输出针对大多数像素,并且目视检查是所产生分数图的质量的基础。统计准确性评估和详细的参考信息对92个城市街区显示出线性关系,这四个类别的R〜2值分别为0.86、0.58、0.81和0.85。平均绝对误差(MAE)在6.4至12.8%的范围内,四个单独建模的类别分数的逐块总和始终为100%左右。 MESMA的结果遵循相似的趋势,但准确性略低。我们的发现表明,将SVR与综合混合的训练数据结合使用,可以将经验回归用于子像素映射。因此,可以很好地利用基于核的方法从成像光谱仪数据量化城市土地覆盖的优势。其余的不确定性和局限性与已知的城市材料光谱相似性或歧义现象,阴影区域的光谱缺陷或对综合性和代表性光谱库的依赖性有关。因此,建议的工作流程构成了一种新的灵活且可扩展的通用建模方法,以绘制土地覆盖率图。

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