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Hopfield neural network based algorithms for image restoration and reconstruction. I. Algorithms and simulations

机译:基于Hopfield神经网络的图像还原和重建算法。一,算法与仿真

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In our previous work, the eliminating-highest error (EHE) criterion was proposed for the modified Hopfield (1982) neural network (MHNN) for image restoration and reconstruction. The performance of the MHNN is considerably improved by the EHE criterion as shown in many simulations. In inspiration of revealing the insight of the EHE criterion, in this paper, we first present a generalized updating rule (GUR) of the MHNN for gray image recovery. The stability properties of the GUR are given. It is shown that the neural threshold set up in this GUR is necessary and sufficient for energy decrease with probability one at each update. The new fastest-energy-descent (FED) criterion is then proposed parallel to the EHE criterion. While the EHE criterion is shown to achieve the highest probability of correct transition, the FED criterion achieves the largest amount of energy descent. In image restoration, the EHE and FED criteria are equivalent. A group of new algorithms based on the EHE and FED criteria is set up. A new measure, the correct transition rate (CTR), is proposed for the performance of iterative algorithms. Simulation results for gray image restoration show that the EHE (FED) based algorithms obtained the best visual quality and highest SNR of recovered images, took much smaller number of iterations, and had higher CTR. The CTR is shown to be a rational performance measure of iterative algorithms and predict quality of recovered images.
机译:在我们以前的工作中,提出了针对改进的Hopfield(1982)神经网络(MHNN)进行图像恢复和重建的消除最高误差(EHE)准则。如许多仿真所示,通过EHE标准,MHNN的性能得到了显着改善。为了揭示EHE标准的见解,本文首先提出了MHNN的广义更新规则(GUR),用于灰度图像恢复。给出了GUR的稳定性。结果表明,在此GUR中设置的神经阈值对于能量的降低是必要的,并且在每次更新时概率为1。然后,与EHE标准并行提出了新的最快能量下降(FED)标准。虽然显示出EHE准则实现了正确过渡的最高可能性,但FED准则却实现了最大的能量下降。在图像恢复中,EHE和FED标准是等效的。建立了一组基于EHE和FED标准的新算法。针对迭代算法的性能,提出了一种新的方法,即正确的转换率(CTR)。灰度图像恢复的仿真结果表明,基于EHE(FED)的算法获得了最佳的视觉质量和恢复图像的最高SNR,迭代次数更少,点击率更高。 CTR被证明是迭代算法的合理性能指标,可以预测恢复图像的质量。

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