Department of Earth Sciences, University of Bristol, Queens Road, BS8 1RJ, Bristol, UK.
Sensors (Basel). 2010;10(3):1967-85. doi: 10.3390/s100301967. Epub 2010 Mar 11.
Satellite remote sensing, with its unique synoptic coverage capabilities, can provide accurate and immediately valuable information on fire analysis and post-fire assessment, including estimation of burnt areas. In this study the potential for burnt area mapping of the combined use of Artificial Neural Network (ANN) and Spectral Angle Mapper (SAM) classifiers with Landsat TM satellite imagery was evaluated in a Mediterranean setting. As a case study one of the most catastrophic forest fires, which occurred near the capital of Greece during the summer of 2007, was used. The accuracy of the two algorithms in delineating the burnt area from the Landsat TM imagery, acquired shortly after the fire suppression, was determined by the classification accuracy results of the produced thematic maps. In addition, the derived burnt area estimates from the two classifiers were compared with independent estimates available for the study region, obtained from the analysis of higher spatial resolution satellite data. In terms of the overall classification accuracy, ANN outperformed (overall accuracy 90.29%, Kappa coefficient 0.878) the SAM classifier (overall accuracy 83.82%, Kappa coefficient 0.795). Total burnt area estimates from the two classifiers were found also to be in close agreement with the other available estimates for the study region, with a mean absolute percentage difference of ≈ 1% for ANN and ≈ 6.5% for SAM. The study demonstrates the potential of the examined here algorithms in detecting burnt areas in a typical Mediterranean setting.
卫星遥感具有独特的天气覆盖能力,能够提供有关火灾分析和火灾后评估的准确且即时的有价值信息,包括估算烧毁区域。在本研究中,评估了在 Mediterranean 设置中联合使用人工神经网络 (ANN) 和光谱角映射 (SAM) 分类器与 Landsat TM 卫星图像进行烧毁区域制图的潜力。作为案例研究,使用了 2007 年夏季发生在希腊首都附近的一场最具灾难性的森林火灾之一。通过产生的专题地图的分类精度结果,确定了两种算法在从 Landsat TM 图像中划定烧毁区域的准确性。此外,还将两种分类器的得出的烧毁面积估算值与研究区域的独立估算值进行了比较,这些估算值是从对高空间分辨率卫星数据的分析中得出的。在总体分类精度方面,ANN 表现优于 SAM 分类器(总体精度为 90.29%,Kappa 系数为 0.878)。两种分类器的总烧毁面积估算值也与研究区域的其他可用估算值非常吻合,ANN 的平均绝对百分比差异约为 1%,而 SAM 的平均绝对百分比差异约为 6.5%。该研究表明,在典型的地中海环境中,所检查的算法在检测烧毁区域方面具有潜力。