首页> 外文会议>Conference on Image and Signal Processing for Remote Sensing VIII, Sep 24-27, 2002, Agia Pelagia, Crete, Greece >Context modeling for joint spectral and radiometric distortion minimization in pyramid-based fusion of MS and P image data
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Context modeling for joint spectral and radiometric distortion minimization in pyramid-based fusion of MS and P image data

机译:基于金字塔的MS和P图像数据融合中联合光谱和辐射失真最小化的上下文建模

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Data fusion based on multiresolution analysis requires the definition of a proper model establishing how the missing highpass information to be injected into the resampled multispectral (MS) bands is extracted from the panchromatic (P) band. Such a model can be global over the whole image or depend on the spatial context. Goal of the model is to make the fused bands the most similar to what the MS sensor would image if it had the same resolution as the broadband one. In this perspective, both radiometric and spectral distortions are jointly considered in the proposed model which has been set up through simulated SPOT 5 data (XS + P) of an urban area including vegetation. A space-varying equalization of sensors is achieved by multiplying the highpass pixel detail extracted from the P image by the ratio between the pixel values in the expanded XS and and in the lowpass version of the P band. Radiometric distortion (RMSE between true and fused XS bands) is abated by almost 20% with respect to the case in which as many scalar cross-gain factors as are the bands are employed. Spectral distortion is measured as the absolute angle between a pixel vector in the reference and fused bands. It can be perceived a change in color hues between the true and fused color-composite images. Thanks to the proposed injection model, the spectral angle of the fused product is identical to that measured between the true and resampled original data. Besides spectral distortions, also spatial distortions, e.g., ringing artifacts and aliasing impairments, which are typical of critically-subsampled multiresolution fusion schemes, are completely missing in this pyramid approach.
机译:基于多分辨率分析的数据融合需要定义适当的模型,该模型确定如何从全色(P)波段中提取要注入到重采样多光谱(MS)波段中的丢失的高通信息。这样的模型可以是整个图像的全局模型,也可以取决于空间上下文。该模型的目标是使融合频段与MS传感器在与宽带传感器具有相同分辨率的情况下成像的图像最为相似。从这个角度来看,在建议的模型中共同考虑了辐射和光谱畸变,该模型是通过模拟包括植被在内的城市地区的SPOT 5数据(XS + P)建立的。通过将从P图像提取的高通像素细节乘以扩展XS和P波段低通版本中像素值之间的比率,可以实现传感器的时空均等化。相对于采用与频带相同数量的标量交叉增益因子的情况,辐射失真(真实XS频带和融合XS频带之间的RMSE)降低了近20%。光谱失真被测量为参考频带和融合频带中像素矢量之间的绝对角度。可以感觉到真实和融合的彩色复合图像之间的色调变化。由于采用了建议的注入模型,所以融合产品的光谱角与真实和重新采样的原始数据之间的光谱角相同。在这种金字塔方法中,除了频谱失真之外,还严重丢失了空间失真,例如典型的关键二次采样多分辨率融合方案中的振铃伪影和混叠损伤。

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