Poliana Domingos Ferro, G. Mataveli, Jeferson de Souza Arcanjo, D. J. Dutra, Thaís Pereira de Medeiros, Y. Shimabukuro, Ana Carolina Moreira Pessôa, G. de Oliveira, L. O. Anderson
{"title":"利用烧毁面积产品和 CBERS/WFI 数据立方体对亚马孙西南部烧伤疤痕绘图进行区域评估","authors":"Poliana Domingos Ferro, G. Mataveli, Jeferson de Souza Arcanjo, D. J. Dutra, Thaís Pereira de Medeiros, Y. Shimabukuro, Ana Carolina Moreira Pessôa, G. de Oliveira, L. O. Anderson","doi":"10.3390/fire7030067","DOIUrl":null,"url":null,"abstract":"Fires are one of the main sources of disturbance in fire-sensitive ecosystems such as the Amazon. Any attempt to characterize their impacts and establish actions aimed at combating these events presupposes the correct identification of the affected areas. However, accurate mapping of burned areas in humid tropical forest regions remains a challenging task. In this paper, we evaluate the performance of four operational BA products (MCD64A1, Fire_cci, GABAM and MapBiomas Fogo) on a regional scale in the southwestern Amazon and propose a new approach to BA mapping using fraction images extracted from data cubes of the Brazilian orbital sensors CBERS-4/WFI and CBERS-4A/WFI. The methodology for detecting burned areas consisted of applying the Linear Spectral Mixture Model to the images from the CBERS-4/WFI and CBERS-4A/WFI data cubes to generate shadow fraction images, which were then segmented and classified using the ISOSEG non-supervised algorithm. Regression and similarity analyses based on regular grid cells were carried out to compare the BA mappings. The results showed large discrepancies between the mappings in terms of total area burned, land use and land cover affected (forest and non-forest) and spatial location of the burned area. The global products MCD64A1, GABAM and Fire_cci tended to underestimate the area burned in the region, with Fire_cci underestimating BA by 88%, while the regional product MapBiomas Fogo was the closest to the reference, underestimating by only 7%. The burned area estimated by the method proposed in this work (337.5 km2) was 12% higher than the reference and showed a small difference in relation to the MapBiomas Fogo product (18% more BA). These differences can be explained by the different datasets and methods used to detect burned areas. The adoption of global products in regional studies can be critical in underestimating the total area burned in sensitive regions. Our study highlights the need to develop approaches aimed at improving the accuracy of current global products, and the development of regional burned area products may be more suitable for this purpose. Our proposed approach based on WFI data cubes has shown high potential for generating more accurate regional burned area maps, which can refine BA estimates in the Amazon.","PeriodicalId":12279,"journal":{"name":"Fire","volume":"41 23","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-02-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Regional-Scale Assessment of Burn Scar Mapping in Southwestern Amazonia Using Burned Area Products and CBERS/WFI Data Cubes\",\"authors\":\"Poliana Domingos Ferro, G. Mataveli, Jeferson de Souza Arcanjo, D. J. Dutra, Thaís Pereira de Medeiros, Y. Shimabukuro, Ana Carolina Moreira Pessôa, G. de Oliveira, L. O. Anderson\",\"doi\":\"10.3390/fire7030067\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Fires are one of the main sources of disturbance in fire-sensitive ecosystems such as the Amazon. 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引用次数: 0
摘要
火灾是亚马逊等对火敏感的生态系统的主要干扰源之一。要确定火灾影响的特征并制定旨在应对这些事件的行动,前提是正确识别受影响的区域。然而,在潮湿的热带森林地区准确绘制烧毁区域的地图仍然是一项具有挑战性的任务。在本文中,我们评估了亚马逊西南部区域范围内四种运行 BA 产品(MCD64A1、Fire_cci、GABAM 和 MapBiomas Fogo)的性能,并提出了一种使用从巴西轨道传感器 CBERS-4/WFI 和 CBERS-4A/WFI 数据立方体中提取的分数图像绘制 BA 地图的新方法。检测烧毁区域的方法包括对来自 CBERS-4/WFI 和 CBERS-4A/WFI 数据立方体的图像应用线性光谱混合模型生成阴影分数图像,然后使用 ISOSEG 非监督算法对其进行分割和分类。在常规网格单元的基础上进行回归和相似性分析,以比较 BA 映射。结果表明,在焚烧总面积、受影响的土地利用和土地覆盖(森林和非森林)以及焚烧区的空间位置方面,绘图之间存在很大差异。全球产品 MCD64A1、GABAM 和 Fire_cci 有低估该地区烧毁面积的趋势,其中 Fire_cci 低估了 BA 面积的 88%,而地区产品 MapBiomas Fogo 最接近参考值,仅低估了 7%。本研究提出的方法估算出的烧毁面积(337.5 平方公里)比参考值高出 12%,与 MapBiomas Fogo 产品相比差异较小(BA 高出 18%)。这些差异可以解释为用于检测烧毁区域的数据集和方法不同。在区域研究中采用全球产品可能会低估敏感地区的总烧毁面积。我们的研究强调了开发旨在提高当前全球产品准确性的方法的必要性,而开发区域烧毁面积产品可能更适合这一目的。我们提出的基于 WFI 数据立方体的方法在生成更准确的区域烧毁面积地图方面具有很大的潜力,可以完善亚马逊地区的 BA 估计值。
Regional-Scale Assessment of Burn Scar Mapping in Southwestern Amazonia Using Burned Area Products and CBERS/WFI Data Cubes
Fires are one of the main sources of disturbance in fire-sensitive ecosystems such as the Amazon. Any attempt to characterize their impacts and establish actions aimed at combating these events presupposes the correct identification of the affected areas. However, accurate mapping of burned areas in humid tropical forest regions remains a challenging task. In this paper, we evaluate the performance of four operational BA products (MCD64A1, Fire_cci, GABAM and MapBiomas Fogo) on a regional scale in the southwestern Amazon and propose a new approach to BA mapping using fraction images extracted from data cubes of the Brazilian orbital sensors CBERS-4/WFI and CBERS-4A/WFI. The methodology for detecting burned areas consisted of applying the Linear Spectral Mixture Model to the images from the CBERS-4/WFI and CBERS-4A/WFI data cubes to generate shadow fraction images, which were then segmented and classified using the ISOSEG non-supervised algorithm. Regression and similarity analyses based on regular grid cells were carried out to compare the BA mappings. The results showed large discrepancies between the mappings in terms of total area burned, land use and land cover affected (forest and non-forest) and spatial location of the burned area. The global products MCD64A1, GABAM and Fire_cci tended to underestimate the area burned in the region, with Fire_cci underestimating BA by 88%, while the regional product MapBiomas Fogo was the closest to the reference, underestimating by only 7%. The burned area estimated by the method proposed in this work (337.5 km2) was 12% higher than the reference and showed a small difference in relation to the MapBiomas Fogo product (18% more BA). These differences can be explained by the different datasets and methods used to detect burned areas. The adoption of global products in regional studies can be critical in underestimating the total area burned in sensitive regions. Our study highlights the need to develop approaches aimed at improving the accuracy of current global products, and the development of regional burned area products may be more suitable for this purpose. Our proposed approach based on WFI data cubes has shown high potential for generating more accurate regional burned area maps, which can refine BA estimates in the Amazon.