Combining MODIS and AMSR-E-based vegetation moisture retrievals for improved fire risk monitoring

S. Dasgupta, J. Qu
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引用次数: 10

Abstract

Research has shown that remote sensing in both the optical and microwave domain has the capability of estimating vegetation water content (VWC). Though lower in spatial resolution than MODIS optical bands, AMSR-E microwave measurements are typically less affected by clouds, water vapor, aerosol or solar illumination, making them complementary to MODIS real time measurements over regions of clouds and haze. In this study we explored a wavelet based approach for combining vegetation water content observations derived from higher spatial resolution MODIS and lower spatial resolution AMSR-E microwave measurements. Regression analysis between AMSR-E VWC and spatially aggregated MODIS NDII (Normalized Difference Infrared Index) was first used to scale MODIS NDII to MODIS VWC products. Our approach for combining information from the two sensors resorts to multiresolution wavelet decomposition of MODIS VWC into a set of detail images and a single approximation image at AMSR-E resolution. The substitution method of image fusion is then undertaken, in which the approximation image is replaced by AMSR-E VWC image, prior to using inverse wavelet transform to construct a merged VWC product. The merged VWC product thus has information from both MODIS and AMSR-E measurements. The technique is applied over low vegetation regions in Texas grasslands to obtain merged VWC products at intermediate resolutions of ~1.5km. Apart from offering a way to calibrate MODIS VWC content products to AMSR-E observations, the technique has the potential for downscaling AMSR-E VWC to higher spatial resolution over moderately cloudy or hazy regions where MODIS reflective bands become contaminated by the atmosphere. During such situations when contaminated MODIS signals cannot be used to obtain the wavelet detail images, MODIS detail images from a preceding time step is used to downscale the current AMSR-E VWC to higher resolutions. This approach of using detail images from the recent past would be justified if the detail images containing the high frequency components of the image change slowly. Correlation analysis of detail images from consecutive time steps shows that this is approximately true, at-least for the low spatial resolution detail images. Our approach yields accuracy of around 77% on the average over the selected study region and temporal period. This technique thus has the potential for ensuring the data continuity of high spatial resolution VWC products, a requirement essential for fire risk monitoring.
结合MODIS和基于amsr的植被湿度反演,改进火灾风险监测
研究表明,遥感在光域和微波域都具有估算植被含水量的能力。虽然空间分辨率低于MODIS光学波段,但AMSR-E微波测量通常受云、水蒸气、气溶胶或太阳光照的影响较小,使其与MODIS在云和雾霾区域的实时测量相补充。本研究探索了一种基于小波变换的高空间分辨率MODIS和低空间分辨率AMSR-E微波植被含水量观测数据相结合的方法。首先利用AMSR-E VWC与空间聚合MODIS NDII(归一化红外指数)之间的回归分析,将MODIS NDII与MODIS VWC产品进行比例化。我们将两个传感器的信息结合起来的方法是将MODIS VWC的多分辨率小波分解成一组细节图像和一个AMSR-E分辨率的近似图像。然后采用图像融合的替代方法,将近似图像替换为AMSR-E VWC图像,然后利用小波反变换构造合并后的VWC积。因此,合并的VWC产品同时具有MODIS和AMSR-E测量的信息。该技术应用于德克萨斯州草原的低植被区,以获得1.5km的中等分辨率合并VWC产品。除了提供一种将MODIS VWC含量产品校准到AMSR-E观测值的方法外,该技术还具有在MODIS反射带被大气污染的中度阴天或雾霾地区将AMSR-E VWC降至更高空间分辨率的潜力。在无法利用受污染的MODIS信号获取小波细节图像的情况下,利用前一时间步长的MODIS细节图像将当前AMSR-E VWC降阶到更高分辨率。如果包含图像高频成分的细节图像变化缓慢,那么使用最近的细节图像的方法是合理的。对连续时间步长的细节图像的相关分析表明,至少对于低空间分辨率的细节图像来说,这是近似正确的。我们的方法在选定的研究区域和时间期间平均产生约77%的准确性。因此,该技术有可能确保高空间分辨率VWC产品的数据连续性,这是火灾风险监测的基本要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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