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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Mapping forest degradation in the Eastern Amazon from SPOT 4 through spectral mixture models
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Mapping forest degradation in the Eastern Amazon from SPOT 4 through spectral mixture models

机译:通过光谱混合模型从SPOT 4绘制东亚马逊地区的森林退化情况

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In this paper, we present a methodology to map classes of degraded forest in the Eastern Amazon. Forest degradation field data, available in the literature, and 1-m resolution IKONOS image were linked with fraction images (vegetation, nonphotosynthetic vegetation (NPV), soil and shade) derived from spectral mixture models applied to a Satellite Pour L 'observation de la Terre (SPOT) 4 multispectral image. The forest degradation map was produced in two steps. First, we investigated the relationship between ground (i.e., field and IKONOS data) and satellite scales by analyzing statistics and performing visual analyses of the field classes in terms of fraction values. This procedure allowed us to define four classes of forest at the SPOT 4 image scale, which included: intact forest; logged forest (recent and older logged forests in the field); degraded forest (heavily burned, heavily logged and burned forests in the field); and regeneration (old heavily logged and old heavily burned forest in the field). Next, we used a decision tree classifier (DTC) to define a set of rules to separate the forest classes using the fraction images. We classified 35% of the forest area (2097.3 km{sup}2) as intact forest. Logged forest accounted for 56% of the forest area and 9% of the forest area was classified as degraded forest. The resultant forest degradation map showed good agreement (86% overall accuracy) with areas of degraded forest visually interpreted from two IKONOS images. In addition, high correlation (R{sup}2 = 0.97) was observed between the total live aboveground biomass of degraded forest classes (defined at the field scale) and the NPV fraction image. The NPV fraction also improved our ability to mapping of old selectively logged forests.
机译:在本文中,我们提出了一种方法来绘制东亚马逊地区退化森林的类别。文献中提供的森林退化现场数据和分辨率为1 m的IKONOS图像与分数光谱图像(植被,非光合植被(NPV),土壤和阴影)相关联,这些光谱图像源自应用于卫星倾盆观测的光谱混合模型Terre(SPOT)4多光谱图像。森林退化图分两个步骤绘制。首先,我们通过分析统计数据并根据分数值对视场类别进行视觉分析,研究了地面(即视场和IKONOS数据)与卫星尺度之间的关系。通过此过程,我们可以在SPOT 4图像级别定义四类森林,包括:完整森林;伐木森林(该字段中最近和较旧的伐木森林);退化的森林(田间大面积烧毁,伐木和烧毁的森林);和再生(田间旧伐木和旧烧森林)。接下来,我们使用决策树分类器(DTC)定义一组规则,以使用分数图像将森林类分开。我们将35%的森林面积(2097.3 km {sup} 2)归类为完整森林。砍伐森林占森林面积的56%,其中9%被归类为退化森林。生成的森林退化图与从两个IKONOS图像直观地解释的退化森林面积显示出良好的一致性(整体精度为86%)。另外,在退化森林类别的总活地上生物量(在田间尺度上定义)与NPV分数图像之间观察到高度相关性(R {sup} 2 = 0.97)。净现值部分也提高了我们映射旧有选择性伐木森林的能力。

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