首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Fusion of Airborne LiDAR With Multispectral SPOT 5 Image for Enhancement of Feature Extraction Using Dempster–Shafer Theory
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Fusion of Airborne LiDAR With Multispectral SPOT 5 Image for Enhancement of Feature Extraction Using Dempster–Shafer Theory

机译:机载LiDAR与多光谱SPOT 5图像的融合,以使用Dempster-Shafer理论增强特征提取

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This paper presents an application of data-driven Dempster–Shafer theory (DST) of evidence to fuse multisensor data for land-cover feature extraction. Over the years, researchers have focused on DST for a variety of applications. However, less attention has been given to generate and interpret probability, certainty, and conflict maps. Moreover, quantitative assessment of DST performance is often overlooked. In this paper, for implementation of DST, two main types of data were used: multisensor data such as Light Detection and Ranging (LiDAR) and multispectral satellite imagery [Satellite Pour l'Observation de la Terre 5 (SPOT 5)]. The objectives are to classify land-cover types from fused multisensor data using DST, to quantitatively assess the accuracy of the classification, and to examine the potential of slope data derived from LiDAR for feature detection. First, we derived the normalized difference vegetation index (NDVI) from SPOT 5 image and the normalized digital surface model (DSM) (nDSM) from LiDAR by subtracting the digital terrain model from the DSM. The two products were fused using the DST algorithm, and the accuracy of the classification was assessed. Second, we generated a surface slope from LiDAR and fused it with NDVI. Subsequently, the classification accuracy was assessed using an IKONOS image of the study area as ground truth data. From the two processing stages, the NDVIDSM fusion had an overall accuracy of 88.7%, while the NDVI/slope fusion had 75.3%. The result indicates that NDVIDSM integration performed better than NDVI/slope. Although the overall accuracy of the former is better than the latter (NDVI/slope), the contribution of individual class reveals that building extraction from fused slope and NDVI performed poorly. This study proves that DST is a time- and cost-effective method for accurate land-cover feature identification and extraction without the need for a prior knowledge of the scene. Furthermore, the ability to gen- rate other products like certainty, conflict, and maximum probability maps for better visual understanding of the decision process makes it more reliable for applications such as urban planning, forest management, 3-D feature extraction, and map updating.
机译:本文介绍了数据驱动的Dempster–Shafer理论(DST)在融合多传感器数据以进行土地覆盖特征提取方面的应用。多年来,研究人员一直将DST应用于各种应用程序。但是,人们很少关注生成和解释概率,确定性和冲突图。此外,对DST性能的定量评估通常被忽略。在本文中,为实现DST,使用了两种主要的数据类型:多传感器数据,例如光检测和测距(LiDAR)和多光谱卫星图像[Saterite Pour l'Observation de la Terre 5(SPOT 5)]。目的是使用DST从融合的多传感器数据中对土地覆盖类型进行分类,以定量评估分类的准确性,并检查从LiDAR得出的坡度数据用于特征检测的潜力。首先,我们通过从DSOT中减去数字地形模型,从SPOT 5图像导出归一化差异植被指数(NDVI),从LiDAR导出归一化数字表面模型(DSM)(nDSM)。使用DST算法将这两种产品融合在一起,并评估了分类的准确性。其次,我们从LiDAR生成了一个表面坡度,并将其与NDVI融合在一起。随后,使用研究区域的IKONOS图像作为地面真实数据来评估分类准确性。从两个处理阶段来看,NDVI / nDSM融合的总体准确度为88.7%,而NDVI / slope融合的准确度为75.3%。结果表明,NDVI / nDSM集成的性能优于NDVI / slope。尽管前者的整体精度优于后者(NDVI /坡度),但单个类别的贡献表明,从融合坡度和NDVI提取建筑物效果不佳。这项研究证明,DST是一种准确而准确的土地覆盖物特征识别和提取方法,省时省钱,而无需事先了解现场情况。此外,生成其他产品(如确定性,冲突和最大概率图)以更好地直观了解决策过程的能力使其对于诸如城市规划,森林管理,3D特征提取和地图更新等应用更加可靠。

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