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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Comparison of pixel unmixing models in the evaluation of post-fire forest resilience based on temporal series of satellite imagery at moderate and very high spatial resolution
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Comparison of pixel unmixing models in the evaluation of post-fire forest resilience based on temporal series of satellite imagery at moderate and very high spatial resolution

机译:基于颞型卫星图像的颞型卫星图像在中等和非常高空间分辨率下对火林弹性评估中的像素解密模型的比较

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摘要

In Mediterranean fire-prone ecosystems, shifts in fire regime as a consequence of global change could modify the resilience of vegetation communities. In this paper, we aim to compare the efficiency of high and moderate spatial resolution satellite imagery in the evaluation of resilience in a fire-prone landscape under different fire regime categories using two pixel unmixing techniques. A time series of Landsat (ETM + and OLI; spatial resolution of 30 m) and WorldView-2 (spatial resolution of 2 m) imagery collected between 2011 (pre-fire conditions) and 2016 were used to estimate the temporal variation of fractional vegetation cover (FVC) as a quantitative measure of forest resilience. For this time series, FVC was computed under four fire-regime categories of recurrence and severity using two approaches: dimidiate pixel model and multiple endmember spectral mixture analysis (MESMA). The dimidiate pixel model was computed using NDVI as spectral response for the case of Landsat imagery and NDVI and red-edge NDVI (RENDVI) for WorldView-2. MESMA was applied to unmix WorldView-2 and Landsat imagery into four fraction images: photosynthetic vegetation (PV), non-photo-synthetic vegetation (NPV), soil and shade. The PV shade normalized fraction corresponds to the FVC. In summer of 2016 we established 85 30 x 30 m field plots and 360 2 x 2 m field plots to measure the percentage of total vegetation cover in order to validate the FVC estimates made from remote sensing data. The FVC time series showed the same general pattern with both spatial scales and modeling approaches, high fire recurrence categories registering the highest resilience. The accuracy of the dimidiate pixel model was significantly higher for WorldView-2 based estimates (RMSE: 5-10%) than for Landsat (RMSE: 10-15%). The dimidiate pixel model computed from NDVI for both Landsat and WorldView-2 underestimated FVC at high field-sampled vegetation cover, while MESMA estimations were accurate for the entire range of vegetation cover for both satellites. The fraction of photosynthetic vegetation calculated using WorldView-2 had a higher performance (RMSE: 4-6%) than that quantified from Landsat (RMSE: 6-8%). The linear relationships assumed for validation purposes were statistically significant for both sensors and modeling approaches. Our study demonstrates the highest performance of very high spatial resolution satellite imagery and MESMA models in the quantitative estimation of FVC as a measure of post-fire resilience.
机译:在地中海火灾易发的生态系统中,由于全球变革的后果,消防政权的转变可以改变植被社区的恢复力。在本文中,我们的目标是使用两个像素解密技术在不同的消防制度类别下的易受静态景观中的复原力评估中的高度空间分辨率卫星图像的效率。 LANDSAT(ETM +和OLI; 30米的空间分辨率的时间序列和2011年间的WorldView-2(2米的空间分辨率)图像,用于估计分数植被的时间变化封面(FVC)作为森林复原力的定量衡量标准。对于此时间序列,使用两种方法,在四个火灾制度类别和严重程度下计算FVC:解开像素模型和多个终点谱混合分析(Mesma)。使用NDVI计算二维像素模型,作为Landsat Imagery和NDVI和WorldView-2的NDVI和RED-EDGE NDVI(Rendvi)的频谱响应。 MESMA被应用于Unbix WorldView-2和Landsat Imagery分为四个分数图片:光合植被(PV),非照片综合植被(NPV),土壤和阴影。 PV Shade归一化级分对应于FVC。 2016年夏天,我们建立了85 30 x 30米的场地图,360 2 x 2 m字段图,以测量总植被覆盖的百分比,以验证由遥感数据进行的FVC估计。 FVC时间序列显示出与空间尺度和建模方法相同的一般模式,高火复发类别注册最高弹性。基于WorldView-2的估计(RMSE:5-10%)比Landsat(RMSE:10-15%)显着更高。在高场采样植被覆盖下,从LANDSAT和WorldView-2的NDVI计算的分布像素模型,而MESMA估计对于两颗卫星的整个植被覆盖范围是准确的。使用WorldView-2计算的光合植被的分数比Landsat(RMSE:6-8%)量化更高的性能(RMSE:4-6%)。假定用于验证目的的线性关系对于传感器和建模方法来说是统计学意义的。我们的研究表明,非常高空间分辨率卫星图像和MESMA模型的最高性能,以估计FVC作为火灾后恢复性的量度。

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