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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Comparison of algorithms for classifying Swedish landcover using Landsat TM and ERS-1 SAR data
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Comparison of algorithms for classifying Swedish landcover using Landsat TM and ERS-1 SAR data

机译:使用Landsat TM和ERS-1 SAR数据对瑞典土地覆盖物进行分类的算法比较

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Sixteen landcover classes in a representative Swedish environment were analyzed and classified using one Landsat TM scene and seven ERS-1 SARPRI images acquired during 1993. Spectral and backscattering signature separabilities are analyzed using the Jeffries-Matusita distance measure to determine which combinations of channels/images contained the most information. Maximum likelihood, sequential maximum a posteriori (SMAP, a Bayesian image segmentation algorithm), and back propagation neural network classification algorithms were applied and their performances evaluated. Results of the separability analyses indicated that the multitemporal SAR data contained more separable landcover information than did the multispectral TM data; the highest separabilities were achieved when the TM and SAR data were combined. Classification accuracy evaluation results indicate that the SMAP algorithm out-performed the maximum likelihood algorithm which, in turn, outperformed the neural network algorithm. The best KAPPA values, using combined data, were 0.495 for SMAP, 0.0445 for maximum likelihood, and 0.432 for neural network. Corresponding overall accuracy values were 57.1%, 52.4%, and 51.2%, respectively. A comparison between lumped crop area statistics with areal sums calculated from the classified satellite data gave the highest correspondence where the SMAP algorithm was used, followed by the maximum likelihood and neural network algorithms. Based on our application, we can therefore confirm the value of a multisource optical/SAR approach for analyzing landcover and the improvements to classification achieved using the SMAP algorithm. (C)Elsevier Science Inc., 2000. [References: 42]
机译:使用1993年采集的一张Landsat TM场景和7张ERS-1 SARPRI图像对瑞典代表性环境中的16种土地覆盖类别进行了分析和分类。使用Jeffries-Matusita距离度量分析光谱和背向散射特征分离度,以确定哪些通道/图像组合包含最多的信息。应用了最大似然,顺序最大后验(SMAP,贝叶斯图像分割算法)和反向传播神经网络分类算法,并对它们的性能进行了评估。可分离性分析结果表明,与多光谱TM数据相比,多时相SAR数据包含更多的可分离土地覆盖信息。当TM和SAR数据结合在一起时,分离度最高。分类准确性评估结果表明,SMAP算法的性能优于最大似然算法,而后者又胜过了神经网络算法。使用组合数据,最佳KAPPA值对于SMAP为0.495,对于最大似然为0.0445,对于神经网络为0.432。相应的总体准确度值分别为57.1%,52.4%和51.2%。集总作物面积统计数据与从分类卫星数据计算的面积总和之间的比较给出了最高对应性,其中使用了SMAP算法,其次是最大似然法和神经网络算法。因此,基于我们的应用,我们可以确认使用多源光学/ SAR方法分析土地覆被的价值以及使用SMAP算法实现的分类改进。 (C)Elsevier Science Inc.,2000年。[参考:42]

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