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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Use of a dark object concept and support vector machines to automate forest cover change analysis
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Use of a dark object concept and support vector machines to automate forest cover change analysis

机译:使用暗物体概念和支持向量机自动进行森林覆盖率变化分析

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An automated method was developed for mapping forest cover change using satellite remote sensing data sets. This multi-temporal classification method consists of a training data automation (TDA) procedure and uses the advanced support vector machines (SVM) algorithm. The TDA procedure automatically generates training data using input satellite images and existing land cover products. The derived high quality training data allow the SVM to produce reliable forest cover change products. This approach was tested in 19 study areas selected from major forest biomes across the globe. In each area a forest cover change map was produced using a pair of Landsat images acquired around 1990 and 2000. High resolution IKONOS images and independently developed reference data sets were available for evaluating the derived change products in 7 of those areas. The overall accuracy values were over 90% for 5 areas, and were 89.4% and 89.6% for the remaining two areas. The user's and producer's accuracies of the forest loss class were over 80% for all 7 study areas, demonstrating that this method is especially effective for mapping major disturbances with low commission errors. IKONOS images were also available in the remaining 12 study areas but they were either located in non-forest areas or in forest areas that did not experience forest cover change between 1990 and 2000. For those areas the IKONOS images were used to assist visual interpretation of the Landsat images in assessing the derived change products. This visual assessment revealed that for most of those areas the derived change products likely were as reliable as those in the 7 areas where accuracy assessment was conducted. The results also suggest that images acquired during leaf-off seasons should not be used in forest cover change analysis in areas where deciduous forests exist. Being highly automatic and with demonstrated capability to produce reliable change products, the TDA-SVM method should be especially usefial for quantifying forest cover change over large areas. (C) 2007 Elsevier Inc. All rights reserved.
机译:开发了一种自动方法,用于使用卫星遥感数据集绘制森林覆盖率变化图。这种多时间分类方法由训练数据自动化(TDA)程序组成,并使用高级支持向量机(SVM)算法。 TDA程序使用输入的卫星图像和现有的土地覆盖产品自动生成训练数据。导出的高质量培训数据使SVM可以生成可靠的森林覆盖变化产品。在从全球主要森林生物群落中选择的19个研究区域中对该方法进行了测试。在每个区域中,使用一对1990和2000年左右采集的Landsat图像制作了一个森林覆盖变化图。高分辨率IKONOS图像和独立开发的参考数据集可用于评估其中7个区域的衍生变化产物。 5个区域的整体准确性值超过90%,其余两个区域的整体准确性值分别为89.4%和89.6%。在所有7个研究区域中,用户和生产者对森林损失类别的准确性均超过80%,这表明该方法对于绘制具有低佣金误差的重大干扰特别有效。在其余12个研究区域中也可以使用IKONOS图像,但它们位于非森林地区或1990年至2000年之间未发生森林覆盖率变化的森林地区。对于这些区域,IKONOS图像用于辅助视觉解释。 Landsat影像,以评估衍生的变更产品。视觉评估表明,对于大多数这些区域,派生的变更产品可能与进行准确性评估的7个区域的产品一样可靠。结果还表明,在有落叶林的地区,不应该在落叶季节采集的图像用于森林覆盖率变化分析。 TDA-SVM方法具有高度的自动化性,并具有生产可靠的变更产品的能力,尤其适用于定量大面积的森林覆盖率变化。 (C)2007 Elsevier Inc.保留所有权利。

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