首页> 外文会议>International Symposium on Neural Networks(ISNN 2006) pt.2; 20060528-0601; Chengdu(CN) >An Edge Preserving Regularization Model for Image Restoration Based on Hopfield Neural Network
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An Edge Preserving Regularization Model for Image Restoration Based on Hopfield Neural Network

机译:基于Hopfield神经网络的图像边缘保留正则化模型。

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This paper designs an edge preserving regularization model for image restoration. First, we propose a generalized form of Digitized Total Variation (DTV), and then introduce it into restoration model as the regularization term. To minimize the proposed model, we map digital image onto network, and then develop energy descending schemes based on Hopfield neural network. Experiments show that our model can significantly better preserve the edges of image compared with the commonly used Laplacian regularization (with constant and adaptive coefficient). We also study the effects of neighborhood and gaussian parameter on the proposed model through experiments.
机译:本文设计了一种边缘保留正则化模型进行图像复原。首先,我们提出一种广义形式的数字化总变化量(DTV),然后将其作为正则项引入到恢复模型中。为了最小化提出的模型,我们将数字图像映射到网络上,然后基于Hopfield神经网络开发能量下降方案。实验表明,与常用的Laplacian正则化(具有常数和自适应系数)相比,我们的模型可以更好地保留图像的边缘。我们还通过实验研究了邻域和高斯参数对提出的模型的影响。

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