论文标题
关于插头和播放先验和随机梯度下降的最大左右估计
On Maximum-a-Posteriori estimation with Plug & Play priors and stochastic gradient descent
论文作者
论文摘要
贝叶斯求解成像逆问题的方法通常将显式数据可能性函数与先前的分布相结合,该分布明确模拟了解决方案的预期特性。文献中已经探索过许多先验,从表达本地性质的简单属性到以非本地规模利用图像冗余的更多参与性。在偏离明确建模的过程中,最近的几项作品提出并研究了使用图像denoising算法定义的隐式先验的使用。这种方法通常称为插头播放(PNP)正则化,可以提供非常准确的结果,尤其是与基于卷积神经网络的最先进的Denoisers结合使用时。但是,PNP贝叶斯模型和算法的理论分析很困难,并且在该主题上起作用通常依赖于对图像DeOiser属性的不现实假设。该论文研究了带有PNP先验的贝叶斯模型的最大a-posteriori(MAP)估计。我们首先考虑与存在,稳定性和适当性相关的问题,然后在使用的denoisers对使用的现实假设下,为PNP随机梯度下降(PNP-SGD)提供收敛证明,以通过PNP随机梯度下降(PNP-SGD)计算。我们报告了一系列的成像实验,以证明PNP-SGD以及与其他PNP方案的比较。
Bayesian methods to solve imaging inverse problems usually combine an explicit data likelihood function with a prior distribution that explicitly models expected properties of the solution. Many kinds of priors have been explored in the literature, from simple ones expressing local properties to more involved ones exploiting image redundancy at a non-local scale. In a departure from explicit modelling, several recent works have proposed and studied the use of implicit priors defined by an image denoising algorithm. This approach, commonly known as Plug & Play (PnP) regularisation, can deliver remarkably accurate results, particularly when combined with state-of-the-art denoisers based on convolutional neural networks. However, the theoretical analysis of PnP Bayesian models and algorithms is difficult and works on the topic often rely on unrealistic assumptions on the properties of the image denoiser. This papers studies maximum-a-posteriori (MAP) estimation for Bayesian models with PnP priors. We first consider questions related to existence, stability and well-posedness, and then present a convergence proof for MAP computation by PnP stochastic gradient descent (PnP-SGD) under realistic assumptions on the denoiser used. We report a range of imaging experiments demonstrating PnP-SGD as well as comparisons with other PnP schemes.