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Robust Fusion of Irregularly Sampled Data Using Adaptive Normalized Convolution

机译:使用自适应归一化卷积对不规则采样数据进行鲁棒融合

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We present a novel algorithm for image fusion from irregularly sampled data. The method is based on the framework of normalized convolution (NC), in which the local signal is approximated through a projection onto a subspace. The use of polynomial basis functions in this paper makes NC equivalent to a local Taylor series expansion. Unlike the traditional framework, however, the window function of adaptive NC is adapted to local linear structures. This leads to more samples of the same modality being gathered for the analysis, which in turn improves signal-to-noise ratio and reduces diffusion across discontinuities. A robust signal certainty is also adapted to the sample intensities to minimize the influence of outliers. Excellent fusion capability of adaptive NC is demonstrated through an application of super-resolution image reconstruction.
机译:我们提出了一种从不规则采样数据中融合图像的新颖算法。该方法基于归一化卷积(NC)框架,其中通过投影到子空间上来近似本地信号。本文使用多项式基函数使NC等效于局部泰勒级数展开。但是,与传统框架不同,自适应NC的窗口函数适用于局部线性结构。这导致收集了更多相同模式的样本进行分析,从而提高了信噪比并减少了在不连续点上的扩散。鲁棒的信号确定性也适用于样本强度,以最大程度地减少离群值的影响。通过超分辨率图像重建的应用,证明了自适应数控系统具有出色的融合能力。

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