Detection and mapping of burnt areas from time series of MODIS-derived NDVI data in a Mediterranean region

Miguel A. García, J. A. Alloza, A. Mayor, S. Bautista, Francisco Rodríguez
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引用次数: 5

Abstract

Moderate resolution remote sensing data, as provided by MODIS, can be used to detect and map active or past wildfires from daily records of suitable combinations of reflectance bands. The objective of the present work was to develop and test simple algorithms and variations for automatic or semiautomatic detection of burnt areas from time series data of MODIS biweekly vegetation indices for a Mediterranean region. MODIS-derived NDVI 250m time series data for the Valencia region, East Spain, were subjected to a two-step process for the detection of candidate burnt areas, and the results compared with available fire event records from the Valencia Regional Government. For each pixel and date in the data series, a model was fitted to both the previous and posterior time series data. Combining drops between two consecutive points and 1-year average drops, we used discrepancies or jumps between the pre and post models to identify seed pixels, and then delimitated fire scars for each potential wildfire using an extension algorithm from the seed pixels. The resulting maps of the detected burnt areas showed a very good agreement with the perimeters registered in the database of fire records used as reference. Overall accuracies and indices of agreement were very high, and omission and commission errors were similar or lower than in previous studies that used automatic or semiautomatic fire scar detection based on remote sensing. This supports the effectiveness of the method for detecting and mapping burnt areas in the Mediterranean region.
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从modis衍生的地中海地区NDVI数据的时间序列中检测和绘制烧伤区域
MODIS提供的中等分辨率遥感数据可用于根据适当的反射波段组合的每日记录来探测和绘制活跃或过去的野火。本工作的目的是开发和测试简单的算法和变种,以便从MODIS双周植被指数的时间序列数据自动或半自动地检测地中海地区的烧伤地区。modis衍生的西班牙东部瓦伦西亚地区的NDVI 250m时间序列数据经过两步处理,以检测候选烧伤区域,并将结果与瓦伦西亚地区政府提供的火灾事件记录进行比较。对于数据序列中的每个像素和日期,对前验和后验时间序列数据进行模型拟合。结合两个连续点之间的下降和1年平均下降,我们使用前后模型之间的差异或跳跃来识别种子像素,然后使用种子像素的扩展算法划分每个潜在野火的火灾疤痕。检测到的燃烧区域的地图与作为参考的火灾记录数据库中登记的周长非常吻合。总体精度和一致性指数非常高,遗漏和委托误差与以前使用遥感自动或半自动火灾疤痕探测的研究相似或更低。这支持了在地中海区域探测和绘制烧伤地区地图的方法的有效性。
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Central European Journal of Geosciences
Central European Journal of Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
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