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Empirically Accelerating Scaled Gradient Projection Using Deep Neural Network for Inverse Problems in Image Processing

机译:使用深神经网络进行凭证加速缩放梯度投影,以实现图像处理中的逆问题

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Recently, deep neural networks (DNNs) have shown advantages in accelerating optimization algorithms. One approach is to unfold finite number of iterations of conventional optimization algorithms and to learn parameters in the algorithms. However, these are forward methods and are indeed neither iterative nor convergent. Here, we present a novel DNN-based convergent iterative algorithm that accelerates conventional optimization algorithms. We train a DNN to yield parameters in scaled gradient projection method. So far, these parameters have been chosen heuristically, but have shown to be crucial for good empirical performance. In simulation results, the proposed method significantly improves the empirical convergence rate over conventional optimization methods for various large-scale inverse problems in image processing.
机译:最近,深度神经网络(DNN)在加速优化算法方面表现出优势。 一种方法是展开传统优化算法的有限数量的迭代,并在算法中学习参数。 但是,这些是前进方法,确实既不迭代也不会聚。 这里,我们提出了一种基于DNN的迭代算法,其加速了传统优化算法。 我们在缩放梯度投影方法中训练DNN以产生参数。 到目前为止,这些参数已启发式选择,但已对良好的经验表现表明对良好的实证性能至关重要。 在仿真结果中,该方法显着提高了在图像处理中各种大规模逆问题的传统优化方法的经验收敛速度。

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