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Deep Proximal Unrolling: Algorithmic Framework, Convergence Analysis and Applications

机译:深度近端展开:算法框架,收敛性分析和应用

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摘要

Deep learning models have gained great success in many real-world applications. However, most existing networks are typically designed in heuristic manners. thus these approaches lack rigorous mathematical derivations and clear interpretations. Several recent studies try to build deep models by unrolling a particular optimization model that involves task information. Unfortunately, due to the dynamic nature of network parameters, their resultant deep propagations do not possess the nice convergence property as the original optimization scheme does. In this work, we develop a generic paradigm to unroll nonconvex optimization for deep model design. Different from most existing frameworks, which just replace the iterations by network architectures, we prove in theory that the propagation generated by our proximally unrolled deep model can globally converge to the critical-point of the original optimization model. Moreover, even if the task information is only partially available (e.g., no prior regularization), we can still train convergent deep propagations. We also extend these theoretical investigations on the more general multi-block models and thus a lot of real-world applications can be successfully handled by the proposed framework. Finally, we conduct experiments on various low-level vision tasks (i.e., non-blind deconvolution, dehazing, and low-light image enhancement) and demonstrate the superiority of our proposed framework, compared with existing state-of-the-art approaches.
机译:深度学习模型在许多实际应用中都取得了巨大的成功。但是,大多数现有网络通常以启发式方式设计。因此,这些方法缺乏严格的数学推导和清晰的解释。最近的一些研究试图通过展开涉及任务信息的特定优化模型来构建深度模型。不幸的是,由于网络参数的动态性质,它们产生的深度传播不像原始优化方案那样具有良好的收敛性。在这项工作中,我们开发了一个通用范例来展开非凸优化以进行深层模型设计。与大多数现有的框架(仅通过网络体系结构代替迭代)不同,我们在理论上证明了由我们近端展开的深度模型产生的传播可以全局收敛到原始优化模型的临界点。而且,即使任务信息仅部分可用(例如,没有先验正则化),我们仍然可以训练收敛的深度传播。我们还将这些理论研究扩展到更通用的多块模型上,因此,所提出的框架可以成功地处理许多实际应用。最后,我们对各种低级视觉任务(即非盲反卷积,去雾和弱光图像增强)进行了实验,并证明了与现有的最新技术相比,我们提出的框架的优越性。

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