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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Automatic land cover analysis for Tenerife by supervised classification using remotely sensed data
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Automatic land cover analysis for Tenerife by supervised classification using remotely sensed data

机译:使用遥感数据通过监督分类对特内里费岛进行自动土地覆盖分析

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Automatic land cover classification from satellite images is an important topic in many remote sensing applications. In this paper, we consider three different statistical approaches to tackle this problem: two of them, namely the well-known maximum likelihood classification (ML) and the support vector machine (SVM), are noncontextual methods. The third one, iterated conditional modes (ICM), exploits spatial context by using a Markov random field. We apply these methods to Landsat 5 Thematic Mapper (TM) data from Tenerife, the largest of the Canary Islands. Due to the size and the strong relief of the island, ground truth data could be collected only sparsely by examination of test areas for previously defined land cover classes. We show that after application of an unsupervised clustering method to identify subclasses, all classification algorithms give satisfactory results (with statistical overall accuracy of about 90%) if the model parameters are selected appropriately. Although being superior to ML theoretically, both SVM and ICM have to be used carefully: ICM is able to improve ML, but when applied for too many iterations, spatially small sample areas are smoothed away, leading to statistically slightly worse classification results. SVM yields better statistical results than ML, but when investigated visually, the classification result is not completely satisfying. This is due to the fact that no a priori information on the frequency of occurrence of a class was used in this context, which helps ML to limit the unlikely classes. (C) 2003 Elsevier Inc. All rights reserved. [References: 36]
机译:在许多遥感应用中,根据卫星图像自动进行土地覆盖分类是一个重要的主题。在本文中,我们考虑了三种不同的统计方法来解决此问题:两种方法,即众所周知的最大似然分类(ML)和支持向量机(SVM),是非上下文方法。第三个是迭代条件模式(ICM),它通过使用马尔可夫随机场来利用空间上下文。我们将这些方法应用于加那利群岛最大的特内里费岛的Landsat 5专题制图仪(TM)数据。由于岛屿的大小和强大的地形,只能通过检查先前定义的土地覆盖类别的测试区域来稀疏收集地面真实数据。我们表明,在应用无监督聚类方法来识别子类之后,如果适当选择了模型参数,所有分类算法都将给出令人满意的结果(统计总体准确度约为90%)。尽管在理论上优于ML,但SVM和ICM都必须谨慎使用:ICM可以改善ML,但是如果进行过多的迭代,则会缩小空间上较小的样本区域,从而导致统计结果在统计上稍差一些。 SVM比ML产生更好的统计结果,但是当目视研究时,分类结果并不完全令人满意。这是由于以下事实:在这种情况下,没有使用有关类出现频率的先验信息,这有助于ML限制不太可能的类。 (C)2003 Elsevier Inc.保留所有权利。 [参考:36]

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