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使用三层分类方案在大都市尺度上进行详细的城市土地利用土地覆盖分类

Detailed Urban Land Use Land Cover Classification at the Metropolitan Scale Using a Three-Layer Classification Scheme.

作者信息

Cai Guoyin, Ren Huiqun, Yang Liuzhong, Zhang Ning, Du Mingyi, Wu Changshan

机构信息

School of Geomatics and Urban Spatial Informatics, Beijing University of Civil Engineering and Architecture, Beijing 100044, China.

Beijing advanced innovation center for future urban design, Beijing University of Civil Engineering and Architecture, Beijing 100044, China.

出版信息

Sensors (Basel). 2019 Jul 15;19(14):3120. doi: 10.3390/s19143120.

Abstract

Urban Land Use/Land Cover (LULC) information is essential for urban and environmental management. It is, however, very difficult to automatically extract detailed urban LULC information from remote sensing imagery, especially for a large urban area. Medium resolution imagery, such as Landsat Thematic Mapper (TM) data, cannot uncover detailed LULC information. Further, very high resolution (VHR) satellite imagery, such as IKONOS and QuickBird data, can only be applied to a small area, largely due to the data unavailability and high computation cost. As a result, little research has been conducted to extract detailed urban LULC information for a large urban area. This study, therefore, developed a three-layer classification scheme for deriving detailedurban LULC information by integrating newly launched Chinese GF-1 (medium resolution) and GF-2 (very high resolution) satellite imagery and synthetically incorporating geometry, texture, and spectral information through multi-resolution image segmentation and object-based image classification (OBIA). Homogeneous urban LULC types such as water bodies or large areas of vegetation could be derived from GF-1 imagery with 16 m and 8 m spatial resolutions, while heterogeneous urban LULC types such as industrial buildings, residential buildings, and roads could be extracted from GF-2 imagery with 3.2 m and 0.8 m spatial resolutions. The multi-resolution segmentation method and a random forest algorithm were employed to perform image segmentation and object-based image classification, respectively. An analysis of the results suggests an overall accuracy of 0.89 and 0.87 were achieved for the second and third level urban LULC classification maps, respectively. Therefore, the three-layer classification scheme has the potential to derive high accuracy urban LULC information through integrating medium and high-resolution remote sensing imagery.

摘要

城市土地利用/土地覆盖(LULC)信息对于城市和环境管理至关重要。然而,从遥感影像中自动提取详细的城市LULC信息非常困难,尤其是对于大面积的城市区域。中等分辨率影像,如陆地卫星专题制图仪(TM)数据,无法揭示详细的LULC信息。此外,甚高分辨率(VHR)卫星影像,如IKONOS和QuickBird数据,由于数据获取困难和计算成本高,只能应用于小面积区域。因此,针对大面积城市区域提取详细城市LULC信息的研究很少。因此,本研究开发了一种三层分类方案,通过整合新发射的中国GF-1(中等分辨率)和GF-2(甚高分辨率)卫星影像,并通过多分辨率图像分割和基于对象的图像分类(OBIA)综合融合几何、纹理和光谱信息,来获取详细的城市LULC信息。诸如水体或大面积植被等均质的城市LULC类型可从空间分辨率为16米和8米的GF-1影像中获取,而异质的城市LULC类型,如工业建筑、住宅建筑和道路,则可从空间分辨率为3.2米和0.8米的GF-2影像中提取。分别采用多分辨率分割方法和随机森林算法进行图像分割和基于对象的图像分类。结果分析表明,第二级和第三级城市LULC分类图的总体精度分别达到了0.89和0.87。因此,该三层分类方案有潜力通过整合中高分辨率遥感影像来获取高精度的城市LULC信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b577/6679328/a9e34627a370/sensors-19-03120-g001.jpg

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