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Variational Pansharpening for Hyperspectral Imagery Constrained by Spectral Shape and Gram–Schmidt Transformation

机译:由光谱形状和克施密变换约束的高光谱图像的变分泛散

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摘要

Image pansharpening can generate a high-resolution hyperspectral (HS) image by combining a high-resolution panchromatic image and a HS image. In this paper, we propose a variational pansharpening method for HS imagery constrained by spectral shape and Gram⁻Schmidt (GS) transformation. The main novelties of the proposed method are the additional spectral and correlation fidelity terms. First, we design the spectral fidelity term, which utilizes the spectral shape feature of the neighboring pixels with a new weight distribution strategy to reduce spectral distortion caused by the change in spatial resolution. Second, we consider that the correlation fidelity term uses the result of GS adaptive (GSA) to constrain the correlation, thereby preventing the low correlation between the pansharpened image and the reference image. Then, the pansharpening is formulized as the minimization of a new energy function, whose solution is the pansharpened image. In comparative trials, the proposed method outperforms GSA, guided filter principal component analysis, modulation transfer function, smoothing filter-based intensity modulation, the classic and the band-decoupled variational methods. Compared with the classic variation pansharpening, our method decreases the spectral angle from 3.9795 to 3.2789, decreases the root-mean-square error from 309.6987 to 228.6753, and also increases the correlation coefficient from 0.9040 to 0.9367.
机译:通过组合高分辨率平面图像和HS图像,图像棕褐色可以通过组合来产生高分辨率高光谱(HS)图像。在本文中,我们提出了一种通过光谱形状和革兰氏素(GS)变换的HS图像的变分泛粉柱方法。所提出的方法的主要新奇是额外的光谱和相关保真术语。首先,我们设计利用相邻像素的光谱形状特征来设计具有新的重量分布策略,以降低由空间分辨率的变化引起的频谱失真。其次,我们认为相关保真度术语使用GS自适应(GSA)的结果来约束相关性,从而防止泛发光图像和参考图像之间的低相关性。然后,将Pansharpening作为最小化新能量函数的制定,其解决方案是粉刺图像。在比较试验中,所提出的方法优于GSA,引导滤波器主成分分析,调制传递函数,平滑滤波器的强度调制,经典和带分离的变分方法。与经典变化泛散,我们的方法从3.9795降至3.2789,从3.9795增加到3.2789,从309.6987到228.6753降低根均方误差,并且还将相关系数从0.9040增加到0.9367。

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