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Learning to Regularize Using Neumann Networks

机译:学习使用Neumann网络进行规范

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Many challenging image processing tasks can be described by an ill-posed linear inverse problem: deblurring, inpainting, compressed sensing, and superresolution all fit in this framework. Traditional inverse problem solvers minimize a cost function consisting of a data-fit term and a regularizer which promotes desirable properties in the solution. Recent advances have illustrated that it is often possible to learn a regularizer from training data that can outperform more traditional regularizers. We present an end-to-end, data-driven method, which directly solves the linear inverse problem with a data-driven nonlinear regularizer via a truncated Neumann series. This Neumann network architecture outperforms traditional inverse problem solution methods, model-free deep learning approaches, and state-of-the-art unrolled iterative methods on standard datasets. In addition, when the images belong to a union of subspaces, we prove under appropriate assumptions there exists a Neumann network configuration that well-approximates the optimal oracle estimator for the inverse problem.
机译:许多具有挑战性的图像处理任务可以通过造成的线性逆问题描述:去纹身,染色,压缩感测和超级度整理在该框架中。传统的逆问题溶解度最小化由数据配合项和促进溶液中所需性质的规范器的成本函数。最近的进步已经说明了,通常可以从培训数据中学习常规器,这些数据可以优于更加传统的校长。我们提出了一个端到端的数据驱动方法,它通过截短的Neumann系列直接用数据驱动的非线性规范器直接解决线性逆问题。此Neumann网络架构优于传统的逆问题解决方法,无模型的深度学习方法以及在标准数据集上的最先进的迭代方法。此外,当图像属于子空间的联合时,我们在适当的假设下证明存在Neumann网络配置,该网络配置很好地近似于逆问题的最佳Oracle估计器。

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