Adaptive Selection of Sampling-Reconstruction in Fourier Compressed Sensing

Seongmin Hong, Jaehyeok Bae, Jongho Lee, Se Young Chun
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Abstract

Compressed sensing (CS) has emerged to overcome the inefficiency of Nyquist sampling. However, traditional optimization-based reconstruction is slow and can not yield an exact image in practice. Deep learning-based reconstruction has been a promising alternative to optimization-based reconstruction, outperforming it in accuracy and computation speed. Finding an efficient sampling method with deep learning-based reconstruction, especially for Fourier CS remains a challenge. Existing joint optimization of sampling-reconstruction works (H1) optimize the sampling mask but have low potential as it is not adaptive to each data point. Adaptive sampling (H2) has also disadvantages of difficult optimization and Pareto sub-optimality. Here, we propose a novel adaptive selection of sampling-reconstruction (H1.5) framework that selects the best sampling mask and reconstruction network for each input data. We provide theorems that our method has a higher potential than H1 and effectively solves the Pareto sub-optimality problem in sampling-reconstruction by using separate reconstruction networks for different sampling masks. To select the best sampling mask, we propose to quantify the high-frequency Bayesian uncertainty of the input, using a super-resolution space generation model. Our method outperforms joint optimization of sampling-reconstruction (H1) and adaptive sampling (H2) by achieving significant improvements on several Fourier CS problems.
傅立叶压缩传感中采样-重构的自适应选择
压缩传感(CS)的出现克服了奈奎斯特采样的低效率问题。然而,传统的基于优化的重建速度较慢,在实际应用中无法生成精确的图像。基于深度学习的重构是基于优化的重构的一个很有前途的替代方案,在精确度和计算速度上都优于优化重构。寻找一种高效的采样方法与基于深度学习的重建相结合,特别是对于傅立叶CS,仍然是一个挑战。现有的采样-重建联合优化方法(H1)可以优化采样掩码,但由于不能适应每个数据点,因此潜力不大。自适应采样(H2)也存在优化困难和帕累托次优的缺点。在这里,我们提出了一个新颖的自适应选择采样-重建(H1.5)框架,它能为每个输入数据选择最佳的采样掩码和重建网络。我们提供的定理表明,我们的方法比 H1 具有更高的潜力,并且通过为不同的采样掩码使用不同的重建网络,有效地解决了采样-重建中的帕累托次优化问题。为了选择最佳采样掩码,我们建议使用超分辨率空间生成模型量化输入的高频贝叶斯不确定性。我们的方法通过在多个傅立叶 CS 问题上取得显著改进,实现了采样重建(H1)和自适应采样(H2)的联合优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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