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An Improved Spatiotemporal Fusion Approach Based on Multiple Endmember Spectral Mixture Analysis

机译:基于多端元谱混合分析的时空融合改进方法

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摘要

High spatial and temporal resolution remotely sensed data is of great significance for the extraction of land use/cover information and the quantitative inversion of biophysical parameters. However, due to the limitation of sensor performance and the influence of rain cloud weather, it is difficult to obtain remote sensing images with both high spatial and temporal resolution. The spatiotemporal fusion model is a crucial method to solve this problem. The spatial and temporal adaptive reflectivity fusion model (STARFM) and its improved models are the most widely used spatiotemporal adaptive fusion models. However, the existing spatiotemporal adaptive reflectivity fusion model and its improved models have great uncertainty in selecting neighboring similar pixels, especially in spatially heterogeneous areas. Therefore, it is difficult to effectively search and determine neighboring spectrally similar pixels in STARFM-like models, resulting in a decrease of imagery fusion accuracy. In this research, we modify the procedure of neighboring similar pixel selection of ESTARFM method and propose an improved ESTARFM method (I-ESTARFM). Based on the land cover endmember types and its fraction values obtained by spectral mixing analysis, the neighboring similar pixels can be effectively selected. The experimental results indicate that the I-ESTARFM method selects neighboring spectrally similar pixels more accurately than STARFM and ESTARFM models. Compared with the STARFM and ESTARFM, the correlation coefficients of the image fused by the I-ESTARFM with that of the actual image are increased and the mean square error is decreased, especially in spatially heterogeneous areas. The uncertainty of spectral similar neighborhood pixel selection is reduced and the precision of spatial-temporal fusion is improved.
机译:高时空分辨率的遥感数据对于土地利用/覆盖信息的提取以及生物物理参数的定量反演具有重要意义。然而,由于传感器性能的局限性以及雨云天气的影响,很难获得具有高时空分辨率的遥感图像。时空融合模型是解决这一问题的关键方法。时空自适应反射率融合模型(STARFM)及其改进模型是使用最广泛的时空自适应融合模型。然而,现有的时空自适应反射率融合模型及其改进的模型在选择相邻的相似像素,特别是在空间异质区域中具有很大的不确定性。因此,难以有效地搜索和确定类似STARFM的模型中相邻光谱相似的像素,从而导致图像融合精度降低。在这项研究中,我们修改了ESTARFM方法的相邻相似像素选择过程,并提出了一种改进的ESTARFM方法(I-ESTARFM)。基于土地覆盖物端构件的类型及其通过光谱混合分析获得的分数值,可以有效地选择相邻的相似像素。实验结果表明,与STARFM和ESTARFM模型相比,I-ESTARFM方法能够更准确地选择相邻光谱相似的像素。与STARFM和ESTARFM相比,I-ESTARFM与实际图像融合的图像的相关系数增加,并且均方误差减小,尤其是在空间异质区域。减少了光谱相似邻域像素选择的不确定性,提高了时空融合的精度。

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