The Plug-and-Play (PnP) framework allows integrating advanced image denoising priors into optimization algorithms, to efficiently solve a variety of image restoration tasks. The Plug-and-Play alternating direction method of multipliers (ADMM) and the Regularization by Denoising (RED) algorithms are two examples of such methods that made a breakthrough in image restoration. However, while the former method only applies to proximal algorithms, it has recently been shown that there exists no regularization that explains the RED algorithm when the denoisers lack Jacobian symmetry, which happen to be the case of most practical denoisers. To the best of our knowledge, there exists no method for training a network that directly represents the gradient of a regularizer, which can be directly used in Plug-and-Play gradient-based algorithms. We show that it is possible to train a denoiser along with a network that corresponds to the gradient of its regularizer. We use this gradient of the regularizer in gradient-based optimization methods and obtain better results comparing to other generic Plug-and-Play approaches. We also show that the regularizer can be used as a pre-trained network for unrolled gradient descent. Lastly, we show that the resulting denoiser allows for a quick convergence of the Plug-and-Play ADMM.
翻译:Plug- Play (PnP) 框架允许将高级图像解密前期整合到优化算法中, 从而有效解决各种图像恢复任务。 Plug- Play 交替方向法( ADMM ) 和 Denoising (RED) 正规化算法是这种方法在图像恢复方面实现突破的两个例子。 但是,虽然前一种方法只适用于准度算法,但最近已经表明,当Deloisers 缺乏Jacobian 的对称法时, 并不存在解释RED 算法的正规化法, 这恰好发生在最实用的 denoisers 的情况下。 根据我们的知识, Plug- Play 交替方向法( Adroad) 和 Denoiserg 交替方向法( Drug- Plug- Play) 交替方向法是直接用于 Plug- Plug- Play 的网络的梯度的梯度化方法, 而我们用这种定度法的精度比其他通用 Plug- Play- Play- Player 方法, 我们还可以显示用于快速化前的渐变压前 。