Generalized k-level cutset sampling and reconstruction

Shengxin Zha, T. Pappas
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引用次数: 2

Abstract

We propose a family of cutset sampling schemes and a generalized k-level image reconstruction approach formulated under a minimum mean squared error (MMSE) framework. The k-level reconstruction approach is a direct generalization of the recently proposed pattern-based approach, and can be applied to periodic samples either on a cutset or on a grid. Our experimental results indicate that the generalization of the k-level reconstruction approach results in only a small performance loss. For rectangular cutsets, we show that the proposed approach outperforms the cutset-MRF approach as well as two inpainting approaches. Moreover, we show that combining the cutset sampling with an additional point sample inside the periodic structure outperforms k-level reconstruction from cutset sampling and point sampling under comparable sampling densities.
广义k级割集采样与重构
我们提出了一组割集采样方案和在最小均方误差(MMSE)框架下制定的广义k级图像重建方法。k级重建方法是最近提出的基于模式的方法的直接推广,可以应用于割集或网格上的周期性样本。我们的实验结果表明,k级重构方法的泛化只导致很小的性能损失。对于矩形切割集,我们表明所提出的方法优于切割集- mrf方法以及两种涂漆方法。此外,我们表明,在相同的采样密度下,将割集采样与周期结构内的附加点样本相结合的k级重构效果优于割集采样和点采样。
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