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Quality Assessment for Multitemporal and Multi Sensor Image Fusion

机译:多时相和多传感器图像融合的质量评估

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Generally, image fusion methods are classified into three levels: pixel level (iconic), feature level (symbolic) and knowledge or decision level. In this paper we focus on iconic techniques for image fusion. There exist a number of established fusion techniques that can be used to merge high spatial resolution panchromatic and lower spatial resolution multispectral images that are simultaneously recorded by one sensor. This is done to create high resolution multispectral image datasets (pansharpening). In most cases, these techniques provide very good results, i.e. they retain the high spatial resolution of the panchromatic image and the spectral information from the multispectral image. These techniques, when applied to multitemporal and/or multisensoral image data, still create spatially enhanced datasets but usually at the expense of the spectral consistency. In this study, a series of nine multitemporal multispectral remote sensing images (seven SPOT scenes and one FORMOSAT scene) is fused with one panchromatic Ikonos image. A number of techniques are employed to analyze the quality of the fusion process. The images are visually and quantitatively evaluated for spectral characteristics preservation and for spatial resolution improvement. Overall, the Ehlers fusion which was developed for spectral characteristics preservation for multi-date and multi-sensor fusion showed the best results. It could not only be proven that the Ehlers fusion is superior to all other tested algorithms but also the only one that guarantees an excellent color preservation for all dates and sensors.
机译:通常,图像融合方法分为三个级别:像素级别(标志性),特征级别(符号)和知识或决策级别。在本文中,我们专注于图像融合的标志性技术。存在许多已建立的融合技术,这些融合技术可用于合并由一个传感器同时记录的高空间分辨率全色和较低空间分辨率的多光谱图像。这样做是为了创建高分辨率多光谱图像数据集(锐化)。在大多数情况下,这些技术提供了很好的结果,即它们保留了全色图像的高空间分辨率和来自多光谱图像的光谱信息。这些技术在应用于多时相和/或多传感器图像数据时,仍会创建空间增强的数据集,但通常以频谱一致性为代价。在这项研究中,将一系列九幅多时相多光谱遥感图像(七个SPOT场景和一个FORMOSAT场景)与一个全色Ikonos图像融合在一起。采用多种技术来分析融合过程的质量。对图像进行视觉和定量评估以保留光谱特征并改善空间分辨率。总体而言,为保留多日期和多传感器融合的光谱特性而开发的Ehlers融合显示了最佳结果。不仅可以证明Ehlers融合优于所有其他经过测试的算法,而且是唯一一种可以确保所有日期和传感器均具有出色色彩保存的算法。

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