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Algorithm for optimizing bipolar interconnection weights with applications in associative memories and multitarget classification

机译:优化双极互连权重的算法及其在关联存储器和多目标分类中的应用

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摘要

An algorithm for optimizing a bipolar interconnection weight matrix with the Hopfield network is proposed. The effectiveness of this algorithm is demonstrated by computer simulation and Optical implementation. In the optical implementation of the neural network the interconnection weights are biased to yield a nonnegative weight matrix. Moreover, a threshold subchannel is added so that the system can realize, in real time, the bipolar weighted summation in a single channel. Preliminary experimental results obtained from the applications in associative memories and multitarget classification with rotation invariance are shown.
机译:提出了一种用Hopfield网络优化双极性互连权矩阵的算法。通过计算机仿真和光学实现证明了该算法的有效性。在神经网络的光学实现中,互连权重被偏置以产生非负权重矩阵。而且,增加了阈值子信道,使得系统可以实时地在单个信道中实现双极加权求和。显示了在联想记忆和具有旋转不变性的多目标分类中的应用获得的初步实验结果。

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