Stow D, Lopez A, Lippitt C, Hinton S, Weeks J
Department of Geography, San Diego State University, San Diego, CA 92182-4493, USA.
Int J Remote Sens. 2007 Jan 1;28(22):5167-5173. doi: 10.1080/01431160701604703.
A segmentation and hierarchical classification approach applied to QuickBird multispectral satellite data was implemented, with the goal of delineating residential land use polygons and identifying low and high socio-economic status of neighbourhoods within Accra, Ghana. Two types of object-based classification strategies were tested, one based on spatial frequency characteristics of multispectral data, and the other based on proportions of Vegetation-Impervious-Soil sub-objects. Both approaches yielded residential land-use maps with similar overall percentage accuracy (75%) and kappa index of agreement (0.62) values, based on test objects from visual interpretation of QuickBird panchromatic imagery.
实施了一种应用于快鸟多光谱卫星数据的分割和分层分类方法,目的是在加纳阿克拉划定住宅用地多边形,并识别社区的低和高社会经济地位。测试了两种基于对象的分类策略,一种基于多光谱数据的空间频率特征,另一种基于植被-不透水-土壤子对象的比例。基于快鸟全色图像目视解译的测试对象,两种方法生成的住宅用地利用图总体百分比精度(75%)和卡帕一致性指数(0.62)值相似。