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首页> 外文期刊>Geodesy and Cartography >USING PIXEL-BASED AND OBJECT-BASED METHODS TO CLASSIFY URBAN HYPERSPECTRAL FEATURES
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USING PIXEL-BASED AND OBJECT-BASED METHODS TO CLASSIFY URBAN HYPERSPECTRAL FEATURES

机译:使用基于像素和基于对象的方法对城市超光谱特征进行分类

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摘要

Object-based image analysis methods have been developed recently. They have since become a very active research topic in the remote sensing community. This is mainly because the researchers have begun to study the spatial structures within the data. In contrast, pixel-based methods only use the spectral content of data. To evaluate the applicability of object-based image analysis methods for land-cover information extraction from hyperspectral data, a comprehensive comparative analysis was performed. In this study, six supervised classification methods were selected from pixel-based category, including the maximum likelihood (ML), fisher linear likelihood (FLL), support vector machine (SVM), binary encoding (BE), spectral angle mapper (SAM) and spectral information divergence (SID). The classifiers were conducted on several features extracted from original spectral bands in order to avoid the problem of the Hughes phenomenon, and obtain a sufficient number of training samples. Three supervised and four unsupervised feature extraction methods were used. Pixel based classification was conducted in the first step of the proposed algorithm. The effective feature number (EFN) was then obtained. Image objects were thereafter created using the fractal net evolution approach (FNEA), the segmentation method implemented in eCognition software. Several experiments have been carried out to find the best segmentation parameters. The classification accuracy of these objects was compared with the accuracy of the pixel-based methods. In these experiments, the Pavia University Campus hyperspectral dataset was used. This dataset was collected by the ROSIS sensor over an urban area in Italy. The results reveal that when using any combination of feature extraction and classification methods, the performance of object-based methods was better than pixel-based ones. Furthermore the statistical analysis of results shows that on average, there is almost an 8 percent improvement in classification accuracy when we use the object-based methods.
机译:最近开发了基于对象的图像分析方法。从那以后,它们已成为遥感界非常活跃的研究主题。这主要是因为研究人员已开始研究数据中的空间结构。相反,基于像素的方法仅使用数据的光谱内容。为了评估基于对象的图像分析方法从高光谱数据中提取土地覆盖信息的适用性,进行了全面的比较分析。在这项研究中,从基于像素的类别中选择了六种监督分类方法,包括最大似然(ML),费舍线性似然(FLL),支持向量机(SVM),二进制编码(BE),光谱角度映射器(SAM)和频谱信息散度(SID)。为了避免休斯现象的问题,对分类器进行了从原始谱带提取的几个特征分类,并获得了足够数量的训练样本。使用了三种监督和四种非监督特征提取方法。在提出的算法的第一步中进行了基于像素的分类。然后获得有效特征号(EFN)。此后,使用分形网络演化方法(FNEA)创建图像对象,该方法是在eCognition软件中实现的分割方法。已经进行了几次实验以找到最佳的分割参数。将这些对象的分类精度与基于像素的方法的精度进行了比较。在这些实验中,使用了帕维亚大学校园高光谱数据集。该数据集是由意大利市区的ROSIS传感器收集的。结果表明,当使用特征提取和分类方法的任何组合时,基于对象的方法的性能要优于基于像素的方法。此外,对结果的统计分析表明,当我们使用基于对象的方法时,分类准确率平均提高了8%。

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