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Adaptive frequency prior for frequency selective reconstruction of images from non-regular subsampling

机译:自适应频率先验,用于从非常规子采样中对图像进行频率选择性重建

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Image signals typically are defined on a rectangular two-dimensional grid. However, there exist scenarios where this is not fulfilled and where the image information only is available for a non-regular subset of pixel position. For processing, transmitting or displaying such an image signal, a re-sampling to a regular grid is required. Recently, Frequency Selective Reconstruction (FSR) has been proposed as a very effective sparsity-based algorithm for solving this under-determined problem. For this, FSR iteratively generates a model of the signal in the Fourier-domain. In this context, a fixed frequency prior inspired by the optical transfer function is used for favoring low-frequency content. However, this fixed prior is often too strict and may lead to a reduced reconstruction quality. To resolve this weakness, this paper proposes an adaptive frequency prior which takes the local density of the available samples into account. The proposed adaptive prior allows for a very high reconstruction quality, yielding gains of up to 0.6 dB PSNR over the fixed prior, independently of the density of the available samples. Compared to other state-of-the-art algorithms, visually noticeable gains of several dB are possible.
机译:图像信号通常在矩形二维网格上定义。但是,在某些情况下,这可能无法实现,并且图像信息仅可用于像素位置的非常规子集。为了处理,发送或显示这样的图像信号,需要重新采样到规则的网格。近来,频率选择性重建(FSR)已被提出作为一种非常有效的基于稀疏性的算法,用于解决该不确定的问题。为此,FSR迭代生成傅立叶域中的信号模型。在这种情况下,受光学传递函数启发的固定频率先验用于偏爱低频内容。但是,这种固定的先验通常过于严格,并且可能导致重建质量降低。为了解决这一弱点,本文提出了一种自适应频率,该频率先考虑了可用样本的局部密度。所提出的自适应先验技术具有很高的重建质量,与固定先验技术相比,可获得高达0.6 dB的PSNR增益,而与可用样本的密度无关。与其他最新算法相比,可以在视觉上看到几分贝的增益。

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