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Image fusion algorithms for color and gray level images based on LCLS method and novel artificial neural network

机译:基于LCLS方法和新型人工神经网络的彩色和灰度图像图像融合算法

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摘要

In this paper, two neural image fusion algorithms for color and gray level images are proposed. These algorithms are based on a linearly constrained least square (LCLS) method and a novel projection recurrent artificial neural network. The theoretical aspects of the model are based on KKT conditions and projection theorem. Compared with the existing fusion methods, the proposed algorithms do not require any analogs multiplier and their structures are simple for implementation. Existence of the unique solution, stability and global convergence of the related projection recurrent artificial neural network model are proved. Seven steps algorithms are described in detail, for implementation. Corresponding block diagram of the entire process verifies the simplicity of these algorithms. The proposed neural network is stable in the sense of Lyapunov and converges to the optimal vector solution in a few iterations. The implementation of these algorithms for both color and gray level images shows that the quality of noisy images can be enhanced efficiently.
机译:本文提出了两种用于彩色和灰度图像的神经图像融合算法。这些算法基于线性约束最小二乘法(LCLS)和新颖的投影递归人工神经网络。该模型的理论方面基于KKT条件和投影定理。与现有的融合方法相比,所提出的算法不需要任何模拟乘法器,并且其结构易于实现。证明了相关投影递归人工神经网络模型唯一解的存在性,稳定性和全局收敛性。为了实现,将详细描述七步算法。整个过程的相应框图证明了这些算法的简单性。所提出的神经网络在Lyapunov的意义上是稳定的,并且经过几次迭代即可收敛到最优矢量解。这些算法对彩色和灰度图像的实现都表明,可以有效地提高噪点图像的质量。

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