首页> 外文会议>Geoscience and Remote Sensing Symposium, 2007 IEEE International >Vegetation identification and classification in the domain limits of powerlines in brazilian amazon forest
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Vegetation identification and classification in the domain limits of powerlines in brazilian amazon forest

机译:巴西亚马逊森林电力线域极限内的植被识别与分类

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摘要

This paper describes a method to identify different types of vegetation (under the domain limits of the powerlines in the forest) by a vegetation index and the maximum likelihood classification techniques in multispectral QuickBird images. These images were chosen due to its spatial characteristics, since the domain limits width established by Brazilian standards is 100m (in that study, a 50m band width was used) and the average distance of two electric towers is 420m. The initial identification of the areas with a higher concentration of biomass was obtained by the Atmospheric Resistance Vegetation Index (ARVI), calculated from the 1, 3 and 4 channels. The final classification process was developed using (as the accepted threshold and the change threshold respectively of 99% and 5%) the Maximum Likelihood (Interacted Conditional Modes -ICM) classifiers. Training samples were collected in the monitored area covered by a 40km of the powerline providing an overall accuracy of 85.90% and the worst performance was observed in the pasture category (74.8% correctly classified). The areas with the highest vegetation density were identified by ARVI, it discriminated bare soil areas from the category: water, pasture and dense vegetation. However details of that last class (water, pasture and dense vegetation) were not available since their spectral responses were very close in the domain of QuickBird channels.
机译:本文介绍了一种通过植被指数和多光谱QuickBird图像中的最大似然分类技术识别不同类型植被的方法(在森林中的电力线范围内)。选择这些图像是由于其空间特性,因为根据巴西标准建立的域限制宽度为100m(在该研究中,使用的带宽为50m),而两个电塔的平均距离为420m。通过1、3和4个通道计算得出的大气阻力植被指数(ARVI),可以初步确定生物量浓度较高的区域。使用最大可能性(交互条件模式-ICM)分类器(分别作为99%和5%的接受阈值和变化阈值)开发最终分类过程。在电力线40公里覆盖的监测区域中收集了训练样本,总体准确性为85.90%,在牧场类别中观察到了最差的表现(正确分类为74.8%)。 ARVI确定了植被密度最高的区域,它从水,牧草和茂密植被中区分出裸露的土壤区域。但是最后一类(水,牧场和茂密的植被)的详细信息不可用,因为它们的光谱响应在QuickBird通道的范围内非常接近。

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