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Remote Identification of Housing Buildings with High-Resolution Remote Sensing

机译:高分辨率遥感识别房屋

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Identifying housing buildings from afar is required for many urban planning and management tasks, including population estimations, risk assessment, transportation route design, market area delineation and many decision making processes. High-resolution remote sensing provides a cost-effective method for characterizing buildings and, ultimately, determining its most likely use. In this study we combined high-resolution multispectral images and LiDAR point clouds to compute building characteristics at the parcel level. Tax parcels were then classified in one of four classes (three residential classes and one non-residential class) using three classification methods: Maximum likelihood classification (MLC), Suport Vector Machines (SVM) with linear kernel and SVM with non-linear kernel. The accuracy assessment from a random sample showed that the maximum MLC was the most accurate method followed by SVM with linear kernel. The best classification method was then applied to the whole study area and the residential class was used to mask-out non-residential buildings from a building footprint layer.
机译:许多城市规划和管理任务都需要从远处识别房屋建筑物,包括人口估算,风险评估,运输路线设计,市场区域划分和许多决策过程。高分辨率遥感技术提供了一种经济有效的方法来表征建筑物,并最终确定其最有可能的用途。在这项研究中,我们结合了高分辨率多光谱图像和LiDAR点云,以计算地块级别的建筑物特征。然后,使用三种分类方法将税收包分为四个类别(三个居民类别和一个非居民类别)之一:最大似然分类(MLC),具有线性核的Suport向量机(SVM)和具有非线性核的SVM。来自随机样本的准确性评估表明,最大的MLC是最准确的方法,其次是线性核SVM。然后,将最佳分类方法应用于整个研究区域,并使用住宅类从建筑物覆盖层掩盖非住宅建筑。

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