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MULTISENSOR MULTITEMPORAL DATA FUSION USING THE WAVELET TRANSFORM

机译:使用小波变换的多传感器多立体数据融合

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Interest in data fusion, for remote-sensing applications, continues to grow due to the increasing importance of obtaining data in high resolution both spatially and temporally. Applications that will benefit from data fusion include ecosystem disturbance and recovery assessment, ecological forecasting, and others. This paper introduces a novel spatiotemporal fusion approach, the wavelet-based Spatiotemporal Adaptive Data Fusion Model (WSAD-FM). This new technique is motivated by the popular STARFM tool, which utilizes lower-resolution MODIS imagery to supplement Landsat scenes using a linear model. The novelty of WSAD-FM is twofold. First, unlike STARFM, this technique does not predict an entire new image in one linear step, but instead decomposes input images into separate "approximation" and "detail" parts. The different portions are fed into a prediction model that limits the effects of linear interpolation among images. Low-spatial-frequency components are predicted by a weighted mixture of MODIS images and low-spatial-frequency components of Landsat images that are neighbors in the temporal domain. Meanwhile, high-spatialfrequency components are predicted by a weighted average of high-spatial-frequency components of Landsat images alone. The second novelty is that the method has demonstrated good performance using only one input Landsat image and a pair of MODIS images. The technique has been tested using several Landsat and MODIS images for a study area from Central North Carolina (WRS-2 path/row 16/35 in Landsat and H/V11/5 in MODIS), acquired in 2001. NDVI images that were calculated from the study area were used as input to the algorithm. The technique was tested experimentally by predicting existing Landsat images, and we obtained R~2 values in the range 0.70 to 0.92 for estimated Landsat images in the red band, and 0.62 to 0.89 for estimated NDVI images.
机译:在数据融合的兴趣,为遥感应用,继续由于高分辨率空间和时间获取数据的重要性与日俱增增长。将从数据融合应用受益,包括生态系统的干扰和恢复评估,生态预测,等等。本文介绍了一种新颖的时空融合的方法中,基于小波的时空自适应数据融合模型(WSAD-FM)。这项新技术是由流行STARFM工具,它采用分辨率较低的MODIS图像,以补充陆地卫星使用线性模型场景的动机。 WSAD-FM的新颖之处是双重的。首先,与STARFM,该技术不在一个线性预测步骤的整个新图像,而是分解输入图像成单独的“近似”和“细节”的部件。不同部分被送入限制线性内插的图像中的影响的预测模型。低空间频率分量由MODIS图像和在时间域中相邻陆地卫星图像的低空间频率分量的加权预测的混合物。同时,高spatialfrequency组件由单独陆地卫星图像的高spatialfrequency分量的加权平均预测。第二新颖性在于,该方法已显示出良好的性能仅使用一个输入陆地卫星图像和一对MODIS图像。该技术已使用若干陆地卫星和MODIS图像从中部北卡罗来纳(在陆地卫星在MODIS WRS-2路径/行16/35和H / V11 / 5)一个研究领域,在2001年NDVI图像获取中计算测试从研究区域被用作输入算法中。这项技术是通过预测现有陆地卫星图像实验测试,并且我们在红光波段得到的R〜2个值的范围在0.70到0.92为估计陆地卫星图像,和0.62〜0.89为估计NDVI图像。

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