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Classifiers vs. input variables-The drivers in image classification for land cover mapping

机译:分类器与输入变量-土地覆盖图的图像分类驱动力

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The study investigates the performance of image classifiers for landscape-scale land cover mapping and the relevance of ancillary data for the classification success in order to assess and to quantify the importance of these components in image classification. Specifically tested are the performance of maximum likelihood classification (MLC), artificial neural networks (ANN) and discriminant analysis (DA) based on Landsat7 ETM+ spectral data in combination with topographic measures and NDVI. ANN produced high accuracies of more than 75% also with limited input information, while MLC and DA produced comparable results only by incorporating ancillary data into the classification process. The superiority of ANN classification was less pronounced on the level of the single land cover classes. The use of ancillary data generally increased classification accuracy and showed a similar potential for increasing classification accuracy than the selection of the classifier. Therefore, a stronger focus on the development of appropriate and optimised sets of input variables is suggested. Also the definition and selection of land cover classes has shown to be crucial and not to be simply adaptable from existing land cover class schemes. A stronger research focus towards discriminating land cover classes by their typical spectral, topographic or seasonal properties is therefore suggested to advance image classification.
机译:该研究调查了用于景观尺度土地覆盖制图的图像分类器的性能以及辅助数据与分类成功的相关性,以评估和量化这些成分在图像分类中的重要性。经过特别测试的是基于Landsat7 ETM +光谱数据并结合地形测量和NDVI的最大似然分类(MLC),人工神经网络(ANN)和判别分析(DA)的性能。在输入信息有限的情况下,人工神经网络的准确度也超过75%,而MLC和DA仅通过将辅助数据纳入分类过程即可产生可比的结果。在单一土地覆被类别的水平上,人工神经网络分类的优势并不明显。与选择分类器相比,辅助数据的使用通常会提高分类准确性,并显示出增加分类准确性的潜力。因此,建议将重点放在开发适当和优化的输入变量集上。同样,土地覆盖类别的定义和选择也很关键,并且不能简单地根据现有的土地覆盖类别计划进行调整。因此建议将研究重点放在通过土地的典型光谱,地形或季节特征来区分土地覆盖类别,以促进图像分类。

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