泛锐化应用的多波段半盲反卷积

G. Vivone, R. Restaino, M. Mura, J. Chanussot
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引用次数: 3

摘要

泛锐化是将多光谱(MS)图像与全色(PAN)图像融合,以共同保持前者的光谱多样性和后者的几何丰富性。在泛锐化算法中,细节提取是至关重要的一步。这个问题通常是通过二维高斯滤波器与MS传感器的调制传递函数(MTF)相匹配来解决的。然而,有几个问题会影响这种特性(例如,MTF在奈奎斯特频率上的增益可能不可用或不可靠)。因此,在本文中,我们提出了一种基于盲图像去模糊的技术,通过考虑MS空间特征沿频带的可能变异性,来估计频带相关的空间细节提取滤波器。利用IKONOS和QuickBird传感器获得的两个真实数据集进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-band semiblind deconvolution for pansharpening applications
Pansharpening consists of fusing a multispectral (MS) image together with a panchromatic (PAN) image with the aim of jointly preserving the spectral diversity of the former and the geometric richness of the latter. A crucial step in pansharpening algorithms is the detail extraction. This problem is usually addressed by the means of 2D Gaussian filters matched with the MS sensor's modulation transfer function (MTF). Nevertheless, several issues can affect this characterization (e.g. the MTF's gains at the Nyquist frequency could be not available or unreliable). Thus, in this paper we propose a technique based on blind image deblurring in order to estimate band-dependent spatial detail extraction filters by taking into consideration the possible variability of the MS spatial features along bands. The validation is carried out exploiting two real datasets acquired by the IKONOS and the QuickBird sensors.
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