论文标题
通过测量条件生成模型压缩感测
Compressed Sensing via Measurement-Conditional Generative Models
论文作者
论文摘要
预先训练的发电机在压缩传感(CS)中经常被采用,因为它能够有效估算NNS的有效信号。为了进一步完善基于NN的先验,我们提出了一个框架,该框架允许发电机从给定的测量中利用其他信息进行事先学习,从而对信号产生更准确的预测。由于我们的框架具有简单的形式,因此使用预训练的发电机很容易应用于现有的CS方法。我们通过广泛的实验证明,我们的框架通过大幅度表现出统一的出色性能,并且可以将重建误差降低到某些应用的数量级。我们还通过表明我们的框架可以稍微放松严格的信号存在状态来解释理论上的实验成功,这是确保信号恢复成功所必需的。
A pre-trained generator has been frequently adopted in compressed sensing (CS) due to its ability to effectively estimate signals with the prior of NNs. In order to further refine the NN-based prior, we propose a framework that allows the generator to utilize additional information from a given measurement for prior learning, thereby yielding more accurate prediction for signals. As our framework has a simple form, it is easily applied to existing CS methods using pre-trained generators. We demonstrate through extensive experiments that our framework exhibits uniformly superior performances by large margin and can reduce the reconstruction error up to an order of magnitude for some applications. We also explain the experimental success in theory by showing that our framework can slightly relax the stringent signal presence condition, which is required to guarantee the success of signal recovery.