基于面向对象方法的城市绿地映射

Derya Gülçin, A. Akpınar
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引用次数: 9

摘要

技术的出现及其对利用高分辨率卫星图像(HRSI)绘制土地覆盖图的遥感图像处理的影响为研究人员提供了监测土地变化、进行景观分析和管理土地转化的方法。为了城市区域的可持续性,应该绘制的土地动态之一是绿地。城市绿地,如公园、操场和住宅绿化可以促进身心健康。此外,它们还有助于减少热岛效应和碳储存,辅助水调节等生态系统服务。因此,利用高分辨率卫星图像绘制城市绿色基础设施,为开展城市可持续发展的研究和项目提供了重要工具。作为本研究的材料,艾丁市区的正射影像之一举例说明了公园,在农业区的绿色覆盖,操场,和住宅花园,被使用。利用OBIA (Object-Based Image Analysis)软件对正射影像图进行土地覆盖分类。为了结合光谱和形状特征,实现了多分辨率分割。此外,利用亮度和比绿等特征提取城市绿地。在本研究中,成功地从正射影像中提取了城市绿地,并对分类图像进行了精度评估。高分辨率图像的OBIA可以提取城市地区各种目标的详细信息。分类准确率评估结果总体准确率达到84.68%。为了通过人工干预提高准确率,必要时可使用ecognidere9.0的人工分类工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping Urban Green Spaces Based on an Object-Oriented Approach
The advent of technology and its implications on especially remote sensing image processing using High Resolution Satellite Images (HRSI) to map land cover provide researchers to monitor land changes, make landscape analyses, and manage land transformation. One of land dynamics that should be mapped for the sustainability of urban area is green spaces. Urban green spaces, such as parks, playgrounds, and residential greenery may promote both mental and physical health. Besides, they contribute to ecosystem services such as reducing heat island effect and carbon storage, aiding water regulation etc. Therefore, mapping urban green infrastructure from a high-resolution satellite image provides an important tool to conduct studies, researches, and projects for sustainable development of urban areas. As the material of this research, one of the orthophotos of Aydin urban area exemplifies the park, the green cover in the agricultural area, the playground, and the residential garden, was used. For classifying land cover from the orthophoto with Object-Based Image Analysis (OBIA), eCognition Developer 9.0 software was utilized. To combine spectral and shape features, multiresolution segmentation was implemented. Additionally, features as brightness and ratio green were used for the extraction of urban green areas. In this research, urban green areas were successfully extracted from the orthophoto and accuracy assessment was performed on the classified image. OBIA of high resolution imagery enables to extract detailed information of various targets on urban areas. The result of accuracy assessment of the classification achieved 84.68% overall accuracy. To increase the accuracy via manual interventions, manual classification tool of eCognition Developer 9.0 may be used if needed.
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