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Modeling Sparse Deviations for Compressed Sensing using Generative Models

机译:使用生成模型为压缩感知的稀疏偏差建模

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In compressed sensing, a small number of linear measurements can be used to reconstruct an unknown signal. Existing approaches leverage assumptions on the structure of these signals, such as sparsity or the availability of a generative model. A domain-specific generative model can provide a stronger prior and thus allow for recovery with far fewer measurements. However, unlike sparsity-based approaches, existing methods based on generative models guarantee exact recovery only over their support, which is typically only a small subset of the space on which the signals are defined. We propose Sparse-Gen, a framework that allows for sparse deviations from the support set, thereby achieving the best of both worlds by using a domain specific prior and allowing reconstruction over the full space of signals. Theoretically, our framework provides a new class of signals that can be acquired using compressed sensing, reducing classic sparse vector recovery to a special case and avoiding the restrictive support due to a generative model prior. Empirically, we observe consistent improvements in reconstruction accuracy over competing approaches, especially in the more practical setting of transfer compressed sensing where a generative model for a data-rich, source domain aids sensing on a data-scarce, target domain.
机译:在压缩感测中,少量的线性测量可用于重建未知信号。现有方法利用对这些信号的结构的假设,例如稀疏性或生成模型的可用性。特定领域的生成模型可以提供更强的先验性,因此可以用很少的测量值进行恢复。但是,与基于稀疏性的方法不同,基于生成模型的现有方法仅在其支持下才能保证准确恢复,通常仅是在其上定义信号的空间的一小部分。我们提出了Sparse-Gen框架,该框架允许与支持集的偏差很小,从而通过使用特定于域的先验并允许在整个信号空间上进行重构来实现两全其美。从理论上讲,我们的框架提供了一种新的信号类型,可以使用压缩感测来获取信号,从而将经典的稀疏向量恢复减少到特殊情况,并避免由于之前的生成模型而产生的限制性支持。从经验上讲,我们观察到与其他竞争方法相比,重建精度会不断提高,尤其是在传输压缩感知的更实际设置中,在该环境中,用于数据丰富的源域的生成模型有助于在数据稀少的目标域上进行感知。

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