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Mapping land cover and land use from object-based classification: an example from a complex agricultural landscape

机译:从基于对象的分类中绘制土地覆盖和土地利用图:来自复杂农业景观的示例

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From its inception, land-use and land-cover mapping have been major themes in remote-sensing research and applications. Although frequently considered together, land use and land cover (LULC) are defined differently, with land use referring to the economic function of the Earth's surface and land cover to its natural or engineered biophysical cover. Land cover can be observed directly using remote sensing, but land use must be inferred from the cover type. In this study, we test whether object-based image analysis (OBIA) can improve the land-cover and land-use classification in a complex agricultural landscape located along the border between Poland and Ukraine. We quantitatively compared the results of OBIA-based versus per-pixel classifications for both land cover and land use, respectively. Our results show that land-cover classification was not significantly improved when OBIA-based methods were used. Although overall classification accuracy was modest, land-use classification was significantly improved when OBIA-based methods were applied using both spectral and spatial/geometric features of image objects, but not when spectral or spatial/geometric features were used independently. Our results suggest that in anthropogenically altered landscapes where the geometry and arrangement of surface spatial structure may convey land-use information, use of OBIA-based techniques may provide a powerful tool for improving classification.
机译:从一开始,土地利用和土地覆盖制图一直是遥感研究和应用的主要主题。尽管经常一起考虑,但土地利用和土地覆被(LULC)的定义有所不同,土地利用是指地球表面和土地覆被的自然或工程生物物理覆被的经济功能。土地覆盖可以通过遥感直接观察到,但是必须根据覆盖类型来推断土地的使用。在这项研究中,我们测试了基于对象的图像分析(OBIA)是否可以改善位于波兰和乌克兰之间边界的复杂农业景观中的土地覆盖和土地利用分类。我们分别定量比较了基于OBIA的土地覆盖和土地利用的像素分类结果。我们的结果表明,当使用基于OBIA的方法时,土地覆被分类没有得到明显改善。尽管总体分类精度不高,但是当使用基于OBIA的方法同时使用图像对象的光谱和空间/几何特征时,土地利用分类显着改善,但是当光谱或空间/几何特征独立使用时,土地利用分类却得到了显着改善。我们的结果表明,在人为改变的景观中,表面空间结构的几何形状和布置可能传达土地使用信息,基于OBIA的技术的使用可能为改善分类提供了强大的工具。

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