首页> 外文OA文献 >Direct, ECOC, ND and END Frameworks—Which One Is the Best? An Empirical Study of Sentinel-2A MSIL1C Image Classification for Arid-Land Vegetation Mapping in the Ili River Delta, Kazakhstan
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Direct, ECOC, ND and END Frameworks—Which One Is the Best? An Empirical Study of Sentinel-2A MSIL1C Image Classification for Arid-Land Vegetation Mapping in the Ili River Delta, Kazakhstan

机译:直接,ecoc,nd和结束框架 - 哪一个是最好的?哈萨克斯坦Ili River Delta的干旱地植被映射的哨路-2A MSIL1C图像分类的实证研究

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摘要

To facilitate the advances in Sentinel-2A products for land cover from Moderate Resolution Imaging Spectroradiometer (MODIS) and Landsat imagery, Sentinel-2A MultiSpectral Instrument Level-1C (MSIL1C) images are investigated for large-scale vegetation mapping in an arid land environment that is located in the Ili River delta, Kazakhstan. For accurate classification purposes, multi-resolution segmentation (MRS) based extended object-guided morphological profiles (EOMPs) are proposed and then compared with conventional morphological profiles (MPs), MPs with partial reconstruction (MPPR), object-guided MPs (OMPs), OMPs with mean values (OMPsM), and object-oriented (OO)-based image classification techniques. Popular classifiers, such as C4.5, an extremely randomized decision tree (ERDT), random forest (RaF), rotation forest (RoF), classification via random forest regression (CVRFR), ExtraTrees, and radial basis function (RBF) kernel-based support vector machines (SVMs) are adopted to answer the question of whether nested dichotomies (ND) and ensembles of ND (END) are truly superior to direct and error-correcting output code (ECOC) multiclass classification frameworks. Finally, based on the results, the following conclusions are drawn: 1) the superior performance of OO-based techniques over MPs, MPPR, OMPs, and OMPsM is clear for Sentinel-2A MSIL1C image classification, while the best results are achieved by the proposed EOMPs; 2) the superior performance of ND, ND with class balancing (NDCB), ND with data balancing (NDDB), ND with random-pair selection (NDRPS), and ND with further centroid (NDFC) over direct and ECOC frameworks is not confirmed, especially in the cases of using weak classifiers for low-dimensional datasets; 3) from computationally efficient, high accuracy, redundant to data dimensionality and easy of implementations points of view, END, ENDCB, ENDDB, and ENDRPS are alternative choices to direct and ECOC frameworks; 4) surprisingly, because in the ensemble learning (EL) theorem, “weaker” classifiers (ERDT here) always have a better chance of reaching the trade-off between diversity and accuracy than “stronger” classifies (RaF, ExtraTrees, and SVM here), END with ERDT (END-ERDT) achieves the best performance with less than a 0.5% difference in the overall accuracy (OA) values, but is 100 to 10000 times faster than END with RaF and ExtraTrees, and ECOC with SVM while using different datasets with various dimensions; and, 5) Sentinel-2A MSIL1C is better choice than the land cover products from MODIS and Landsat imagery for vegetation species mapping in an arid land environment, where the vegetation species are critically important, but sparsely distributed.
机译:为了方便来自中等分辨率成像光谱仪(MODIS)和陆地卫星图像,哨兵-2A多光谱仪器的Level-1C在哨兵-2A产品的进步对土地覆盖(MSIL1C)图像以干旱区环境研究进行大规模的植被制图位于伊犁河三角洲,哈萨克斯坦。对于基于扩展引导对象的形态配置文件(EOMP的解释)准确分类的目的,多分辨率分割(MRS)提出,然后用常规的形态配置文件(MPS),与部分重建(MPPR)国会议员相比,引导对象-MPS(外膜蛋白)与平均值(OMPsM),以及面向对象的(OO)系图像分类技术外膜蛋白。流行分类器,如C4.5,极其随机决策树(ERDT),随机森林(RAF),旋转森林(的RoF),通过随机森林分类回归(CVRFR),ExtraTrees,和径向基函数(RBF)内核级基于支持向量机(SVM)采用回答是否嵌套二分法(ND)和ND(END)的合奏的问题是真正优于直接和错误校正输出码(ECOC)多类分类框架。最后,根据结果来看,得出如下结论:1)超过国会议员基于面向对象技术的卓越性能,MPPR,外膜蛋白和OMPsM是明确为哨兵-2A MSIL1C图像分类,而最好的结果是由实现建议EOMP的解释; 2)与进一步的质心(NDFC过直接和ECOC框架ND,ND与类平衡(NDCB),ND数据平衡(NDDB),ND与随机对选择(NDRPS)和ND的性能优越)没有被确认特别是在使用用于低维数据集弱分类器的情况下; 3)从计算上有效的,精度高,冗余数据维数和容易的视图,END,ENDCB,ENDDB,实现分和ENDRPS是替代的选择,以引导和ECOC框架; 4)令人惊讶的,因为在集成学习(EL)定理,“弱”分类器(ERDT这里)总是有深远的多样性和准确性之间的权衡不是“强”进行分类(RAF,ExtraTrees一个更好的机会,和SVM这里),具有ERDT(END-ERDT END)实现了与小于在整体精度的0.5%的差异(OA)值的最佳性能,但比用RAF和ExtraTrees,并用SVM ECOC END快100〜10000倍,而使用不同的数据集与各种尺寸;并且,5)哨兵-2A MSIL1C比从MODIS和陆地卫星图像的土地覆盖植被物种在干旱的土地环境,这里的植被物种是非常重要的,但稀疏分布映射更好的选择。

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