利用高分辨率图像开发国家人类住区层:对可持续发展目标报告的贡献

IF 0.3 Q4 REMOTE SENSING South African Journal of Geomatics Pub Date : 2020-02-27 DOI:10.4314/sajg.v9i1.1
N. Mudau, W. Mapurisa, Thomas Tsoeleng, Morwapula Mashalane
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引用次数: 2

摘要

本研究利用spot6卫星图像对建筑物提取的自动化进行了研究。该方法利用1.5m全色图像的方差纹理信息从非建成区中检测建成区。一旦检测到,将对已构建类执行详细分割,以创建单个构建对象。使用阈值技术,利用物体的边缘、SAVI和光谱属性将建筑结构与其他土地利用特征进行分类。在不修改分割和分类参数的情况下,对该方法进行了不同领域的测试,包括正式、农村、非正式和新开发聚落类型。所提出的方法成功地检测了所有不同沉降类型的非建成区的建成区。在正式、农村和新开发地区,单个结构的检测率超过70%,而在非正式住区,检测到的建筑结构不到50%。拟议的方法有助于监测更大范围内的人类住区发展,这在空间规划、提供服务和环境管理方面是至关重要的。这项工作将有助于发展由SANSA开发和维护的国家人类住区层。
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Towards development of a national human settlement layer using high resolution imagery: a contribution to SDG reporting
This study investigated the automation of the building extraction using SPOT 6 satellite imagery. The proposed methodology uses variance textural information derived from 1.5m panchromatic image to detect built-up areas from non-built-up areas. Once detected, detailed segmentation is performed on built-up class to create individual building objects. Canny edges, SAVI and spectral properties of the objects were used to classify building structures from other land use features using a thresholding technique. The methodology was tested in different areas including formal, rural village and informal and new development settlement types without modifying segmentation and classification parameters. The proposed methodology successfully detected built-up from non built-up areas in all different settlement types. The detection of individual structures achieved more than 70% in formal, rural village and new development areas while less than 50% of building structures in informal settlement were detected. The proposed method can contribute towards monitoring of human settlement developments over a larger area which is vital during spatial planning, service delivery and environmental management. This work will contribute towards the development of a National Human Settlement Layer developed and maintained by SANSA.
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