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Two Matrix-Type Projection Neural Networks for Matrix-Valued Optimization with Application to Image Restoration

机译:用于矩阵值优化的两个矩阵型投影神经网络,应用于图像恢复

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摘要

In recent years, matrix-valued optimization algorithms have been studied to enhance the computational performance of vector-valued optimization algorithms. This paper presents two matrix-type projection neural networks, continuous-time and discrete-time ones, for solving matrix-valued optimization problems. The proposed continuous-time neural network may be viewed as a significant extension to the vector-type double projection neural network. More importantly, the proposed discrete-time projection neural network is suitable for parallel implementation in terms of matrix state spaces. Under pseudo-monotonicity and Lipschitz continuous conditions, the proposed two matrix-type projection neural networks are guaranteed to be globally convergent to the optimal solution. Finally, the proposed matrix-type projection neural network is effectively applied to image restoration. Computed examples show that the two proposed matrix-type projection neural networks are much superior to the vector-type projection neural networks in terms of computation speed.
机译:近年来,研究了矩阵值优化算法,以提高矢量值优化算法的计算性能。本文介绍了两个矩阵型投影神经网络,连续时间和离散时间,以解决矩阵值优化问题。所提出的连续时间神经网络可以被视为向量型双投影神经网络的显着扩展。更重要的是,所提出的离散时间投影神经网络适用于矩阵状态空间方面的并行实现。在伪单调性和Lipschitz的连续条件下,所提出的两个矩阵型投影神经网络被保证全局收敛到最佳解决方案。最后,所提出的矩阵型投影神经网络被有效地应用于图像恢复。计算的例子表明,在计算速度方面,这两个建议的矩阵型投影神经网络与矢量型投影神经网络很高。

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