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The research on the role of several feature extraction methods in the landcover/landuse classification

机译:几种特征提取方法在土地覆盖/土地利用分类中的作用研究

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A classifier of great capabilities and a good-selection of different features are two key and difficult keys answering for a high accuracy classification result. On the classifier, although there are all kinds of algorithms, most of them couldn't be used widely because of multifarious theoretical limitations. In this paper, based on the TM data, several representative interpretation features, including original bands, texture measurements and spatial metrics, are compared systemically for landcover/landuse classification test with the same classifier and the same training samples. The results show that different feature source has different relationship with the original band and they play the different roles. Summarily, the original bands are the most useful and essential feature source and play the important role and the others can only be seen as equivalent or enhanced feature source. Among which, the texture mean have equivalent capability as that of the original bands, and the spatial metrics and other texture measurements can be seen as compensatory source. For the combination of different features, the classification accuracy can be improved by using the texture measurements or the combination with original bands. As a sort of newly features, the classification accuracy was very poor if only landscape metrics were used, comparatively the accuracy can be greatly improved by combing with the original bands. So, the combination of original bands and texture measurements is the preference for TM dataset.
机译:功能强大的分类器以及对不同功能的良好选择是两个关键和困难的答案,可实现高精度的分类结果。在分类器上,尽管有各种各样的算法,但是由于各种各样的理论限制,它们大多数不能被广泛使用。在本文中,基于TM数据,系统地比较了具有代表性的解释特征,包括原始带,纹理测量和空间度量,以使用相同的分类器和相同的训练样本对土地覆盖/土地利用分类测试进行比较。结果表明,不同的特征源与原始频段具有不同的关系,并且起着不同的作用。综上所述,原始频段是最有用和最重要的特征源,并且起着重要的作用,其他频段只能被视为等效或增强的特征源。其中,纹理均值具有与原始波段相同的功能,并且空间度量和其他纹理测量可以视为补偿源。对于不同特征的组合,可以通过使用纹理测量或与原始波段的组合来提高分类精度。作为一种新功能,如果仅使用景观度量,则分类精度非常差,而与原始频段组合可以大大提高分类精度。因此,原始带和纹理测量的组合是TM数据集的首选。

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