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AERIAL IMAGES AND LIDAR DATA FUSION FOR AUTOMATIC FEATURE EXTRACTION USING THE SELF-ORGANIZING MAP (SOM) CLASSIFIER

机译:使用自组织地图(SOM)分类器自动特征提取的空中图像和LIDAR数据融合

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This paper presents work on the development of automatic feature extraction from multispectral aerial images and lidar data based on test data from two different study areas with different characteristics. First, we filtered the lidar point clouds to generate a Digital Terrain Model (DTM) using a novel filtering technique based on a linear first-order equation which describes a tilted plane surface, and then the Digital Surface Model (DSM) and the Normalised Digital Surface Model (nDSM) were generated. After that a total of 22 uncorrelated feature attributes have been generated from the aerial images, the lidar intensity image, DSM and nDSM. The attributes include those derived from the Grey Level Co-occurrence Matrix (GLCM), Normalized Difference Vegetation Indices (NDVI) and slope. Finally, a SOM was used to detect buildings, trees, roads and grass from the aerial image, lidar data and the generated attributes. The results show that using lidar data in the SOM improves the accuracy of feature detection by 38percent compared with using aerial photography alone, while using the generated attributes as well improve the detection results by a further 10percent. The results also show that the following attributes contributed most significantly to detection of buildings, trees, roads and grass respectively: entropy (from GLCM) derived from nDSM; slope derived from nDSM; homogeneity (from the GLCM) derived from nDSM; and homogeneity derived from nDSM.
机译:本文介绍了基于不同特征的两个不同研究区域的测试数据的多光谱空中图像和激光雷达数据开发的工作。首先,我们过滤了LIDAR点云以使用基于描述倾斜平面表面的线性一阶等式的新颖滤波技术来生成数字地形模型(DTM),然后是数字表面模型(DSM)和归一化数字产生表面模型(NDSM)。之后,从航空图像,激光雷达强度​​图像,DSM和NDSM生成了总共22个不相关的特征属性。该属性包括源自灰度共发生矩阵(GLCM),归一化差异植被指数(NDVI)和斜率的那些。最后,使用SOM从航拍图像,激光雷达数据和生成的属性中检测建筑物,树木,道路和草地。结果表明,使用SOM中的LIDAR数据通过单独使用空中摄影相比,通过38平方,在使用生成的属性的同时通过进一步提高检测结果,提高了38平方的特征检测的准确性。结果还表明,以下属性分别为源自NDSM的熵(来自GLCM)的熵(来自Glcm)的熵(来自GLCM);源自NDSM;衍生自NDSM的均匀性(来自GLCM);和均匀性来自NDSM。

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