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Fire risk assessment in the Brazilian Amazon using MODIS imagery and change vector analysis.

机译:使用MODIS影像和变化向量分析在巴西亚马逊地区进行火灾风险评估。

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Fires in the tropical forests are the main source of greenhouse gas emissions in Brazil. Current methods aimed at the detection and monitoring of fire events in the Brazilian Amazon are frequently insufficient for policy decisions which aim to prevent new fire events and identify the previous land cover of the affected areas. This research applies remote sensing and GIS technique to areas with high occurrence of forest fires in the Brazilian Amazon, with the aiming to recognize land use changes that could: (1) Identify areas with high risk of being burnt and (2) Improve current fire scars mapping methods by enabling the discrimination of fires in primary forests and fires in previously burnt areas. The Change Vector Analysis method was applied to the Red and NIR bands of two MODIS/Terra images from key dates prior to the 2005 forest fire season, resulting in one change vector image with two components: direction and magnitude of changes. A Decision Tree (DT) was designed and evaluated through the C 4.5 algorithm to classify 2400 sample pixels extracted from four selected classes inside the change vector images: (A) Forest; (B) Agricultural areas; (C) Fire risk in primary forest; and (D) Fire risk in already degraded areas. The DT achieved a global accuracy of 90.21%. Samples from classes B and D were the main contributors to the DT confusion, with omission errors of 9.5% and 24.5%, respectively. The method was tested in 14 municipalities for the year of 2005, 2006 and 2007 and compared with hotspots from the MODIS active fire product, resulting in a correlation coefficient of 0.84.Digital Object Identifier http://dx.doi.org/10.1016/j.apgeog.2010.02.004
机译:热带森林火灾是巴西温室气体排放的主要来源。当前旨在检测和监视巴西亚马逊地区火灾事件的方法通常不足以做出旨在防止新的火灾事件并确定受影响地区以前的土地覆盖的政策决策。这项研究将遥感和GIS技术应用于巴西亚马逊地区发生森林大火的地区,目的是识别可能会导致以下问题的土地利用变化:(1)识别有高度燃烧危险的区域,以及(2)改善目前的大火通过区分原始森林火灾和先前烧伤地区的火灾来绘制疤痕映射方法。将变化矢量分析方法应用于从2005年森林火灾季节之前的关键日期开始的两张MODIS / Terra图像的红色和近红外波段,产生了一个包含两个分量的变化矢量图像:变化的方向和幅度。设计了决策树(DT),并通过C 4.5算法进行了评估,以对从变化矢量图像内的四个选定类别中提取的2400个样本像素进行分类:(A)森林; (B)农业地区; (C)原始森林的火灾风险; (D)在已经退化的地区发生火灾的危险。 DT的全球准确度达到90.21%。 B级和D级的样本是DT混淆的主要原因,漏失误差分别为9.5%和24.5%。该方法于2005年,2006年和2007年在14个城市进行了测试,并与MODIS主动火产品的热点进行了比较,相关系数为0.84。Digital Object Identifier http://dx.doi.org/10.1016/ j.apgeog.2010.02.004

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