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Study on Extraction Land use/Cover Information from Landsat ETM+ images by Combining Classifier

机译:组合分类器从Landsat ETM +图像提取土地使用/覆盖信息研究

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Remotely sensed images are principle data source in researches of land use and land cover. Despite many methods are developed and the classification accuracy is steadily enhanced, they cannot fast classify images and are unsuitable for regular operation to process mass data. We develop a combining classifier based on unsupervised classifier and decision tree classifier to process an image of Landsat ETM+ under ERDAS IMAGINE 8.7. Then we compare the classification results from the combining classifier, unsupervised classifier and decision-tree classifier in two aspects: classification accuracy and time efficiency. The comparison shows that this combining classifier is not only optimal with a total accuracy 87.6%, kappa coefficient 0.853, but also encouraging in time efficiency. It is concluded that this method is simple and applicable, suitable for regular operations of mass images classification.
机译:远程感测的图像是土地利用和陆地覆盖研究的原理数据源。尽管开发了许多方法并且稳定增强了分类准确度,但它们无法快速分类图像,并且不适合定期操作以处理质量数据。我们基于无监督的分类器和决策树分类器开发一个组合的分类器,以在Erdas Imagine 8.7下处理Landsat ETM +的图像。然后,我们将组合分类器,无监督分类器和决策树分类器的分类结果进行比较:分类准确性和时间效率。比较表明,这种组合分类器不仅最佳,总精度为87.6%,kappa系数0.853,而且促进时间效率。得出结论,该方法简单且适用,适用于众规则图像分类的常规操作。

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