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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Optimization of stochastic networks using simulated annealing for the storage and recalling of compressed images using SOM
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Optimization of stochastic networks using simulated annealing for the storage and recalling of compressed images using SOM

机译:使用模拟退火优化随机网络以使用SOM存储和调用压缩图像

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摘要

In this paper we are studying the optimization of Stochastic Hopfield neural network and the hybrid SOM-Hopfield neural network for the storage and recalling of fingerprint images. The feature extraction of these images has been performed using FFT, DWT and SOM. The feature vectors are stored in the Hopfield network with Hebbian learning and modified Pseudoinverse learning rules. The study explores the tolerance of Hopfield neural networks for reducing the effect of spurious minima in the recalling process by employing the Simulated annealing process. It is observed from the simulations that the capabilities of the Hopfield network can be sufficiently enhanced by making modifications in the feature extraction of the input data. DWT and SOM together can be used to significantly enhance the recall efficiency. The probability of error in recall in the form of spurious minima is minimized by adopting simulated annealing process in the pattern recalling process.
机译:在本文中,我们正在研究随机Hopfield神经网络和混合SOM-Hopfield神经网络的优化,用于存储和调用指纹图像。这些图像的特征提取已使用FFT,DWT和SOM执行。特征向量通过Hebbian学习和经过修改的伪逆学习规则存储在Hopfield网络中。该研究探索了Hopfield神经网络在模拟召回过程中在召回过程中减少伪造极小值影响的容限。从仿真中可以看出,通过修改输入数据的特征提取,可以充分增强Hopfield网络的功能。 DWT和SOM一起可以显着提高召回效率。通过在模式调用过程中采用模拟退火过程,可以将伪造极小值形式的调用中的错误概率降至最低。

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