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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >3D CITY MODELS FOR URBAN MINING: POINT CLOUD BASED SEMANTIC ENRICHMENT FOR SPECTRAL VARIATION IDENTIFICATION IN HYPERSPECTRAL IMAGERY
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3D CITY MODELS FOR URBAN MINING: POINT CLOUD BASED SEMANTIC ENRICHMENT FOR SPECTRAL VARIATION IDENTIFICATION IN HYPERSPECTRAL IMAGERY

机译:3D城市挖掘城市模型:Point基于云的语义富集,用于高光谱图像中的光谱变异识别

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Urban mining aims at reusing building materials enclosed in our cities. Therefore, it requires accurate information on the availability of these materials for each separate building. While recent publications have demonstrated that such information can be obtained using machine learning and data fusion techniques applied to hyperspectral imagery, challenges still persist. One of these is the so-called ’salt-and-pepper noise’, i.e. the oversensitivity to the presence of several materials within one pixel (e.g. chimneys, roof windows). For the specific case of identifying roof materials, this research demonstrates the potential of 3D city models to identify and filter out such unreliable pixels beforehand. As, from a geometrical point of view, most available 3D city models are too generalized for this purpose (e.g. in CityGML Level of Detail 2), semantic enrichment using a point cloud is proposed to compensate missing details. So-called deviations are mapped onto a 3D building model by comparing it with a point cloud. Seeded region growing approach based on distance and orientation features is used for the comparison. Further, the results of a validation carried out for parts of Rotterdam and resulting in KHAT values as high as 0.7 are discussed.
机译:城市采矿旨在重用在我们城市封闭的建筑材料。因此,它需要准确的信息有关每个单独的建筑物的这些材料的可用性。虽然最近的出版物已经证明,可以使用机器学习和数据融合技术应用于高光谱图像的数据融合技术,挑战仍然存在。其中一个是所谓的“盐和胡椒噪声”,即对一个像素(例如烟囱,屋顶窗)的几种材料的过度过度。对于识别屋顶材料的具体情况,该研究表明了3D城市模型的潜力预先识别和过滤掉了此类不可靠的像素。 as从几何角度来看,最可用的3D城市模型对于此目的而言过于广泛(例如,在CityGML水平的细节2)中,建议使用点云的语义丰富来补偿缺失的细节。通过将其与点云进行比较,所谓的偏差被映射到3D建筑模型上。基于距离和方向特征的种子区域生长方法用于比较。此外,讨论了鹿特丹部分并产生高达0.7的旋转数并产生高达0.7的验证结果。

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