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Rural Settlement Subdivision by Using Landscape Metrics as Spatial Contextual Information

机译:利用景观度量作为空间上下文信息的农村聚落细分

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Multiple policy projects have changed land use and land cover (LULC) in China’s rural regions over the past years, resulting in two types of rural settlements: new-fashioned and old-fashioned. Precise extraction of and discrimination between these two settlement types are vital for sustainable land use development. It is difficult to identify these two types via remote sensing images due to their similarities in spectrum, texture, and geometry. This study attempts to discriminate different types of rural settlements by using a spatial contextual information extraction method based on Gaofen 2 (GF-2) images, which integrate hierarchical multi-scale segmentation and landscape analysis. A preliminary LULC map was derived by using only traditional spectral and geometrical features from a finer scale. Subsequently, a vertical connection was built between superobjects and subobjects, and landscape metrics were computed. The vertical connection was used for assigning landscape contextual information to subobjects. Finally, a classification phase was conducted, in which only multi-scale contextual information was adopted, to discriminate between new-fashioned and old-fashioned rural settlements. Compared with previous studies on multi-scale contextual information, this paper employs landscape metrics to quantify contextual characteristics, rather than traditional spectral, textural, and topological relationship information, from superobjects. Our findings indicate that this approach effectively identified and discriminated two types of rural settlements, with accuracies over 80% for both producers and users. A comparison with a conventional top-down hierarchical classification scheme showed that this novel approach improved accuracy, precision, and recall. Our results confirm that multi-scale contextual information with landscape metrics provides valuable spatial information for classification, and indicates the practicability, applicability, and effectiveness of this synthesized approach in distinguishing different types of rural settlements.
机译:在过去的几年中,多项政策项目改变了中国农村地区的土地利用和土地覆被(LULC),导致了两种类型的农村居民点:新型和老式。准确提取和区分这两种定居类型对于可持续土地利用发展至关重要。由于光谱,纹理和几何形状的相似性,很难通过遥感图像识别这两种类型。本研究试图通过使用基于高分2(GF-2)图像的空间上下文信息提取方法来区分不同类型的农村居民点,该方法结合了分层多尺度分割和景观分析。通过仅使用传统的光谱和几何特征从更细的比例中得出了初步的LULC图。随后,在超对象和子对象之间建立了垂直连接,并计算了景观度量。垂直连接用于将景观上下文信息分配给子对象。最后,进行了分类阶段,其中仅采用了多尺度的背景信息,以区分新型农村住区和老式农村住区。与以前关于多尺度上下文信息的研究相比,本文采用景观度量来量化上下文特征,而不是来自超级对象的传统光谱,纹理和拓扑关系信息。我们的发现表明,这种方法有效地识别和区分了两种类型的农村居民点,生产者和使用者的准确率均超过80%。与传统的自上而下的分级分类方案的比较表明,这种新颖的方法提高了准确性,准确性和召回率。我们的结果证实,具有景观度量的多尺度上下文信息为分类提供了有价值的空间信息,并表明了这种综合方法在区分不同类型的农村居民点方面的实用性,适用性和有效性。

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