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A fast fixed point learning method to implement associative memoryon CNNs

机译:在CNN上实现联想记忆的快速定点学习方法

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摘要

Cellular Neural Networks (CNNs) with space-varying interconnections are considered here to implement associative memories. A fast learning method is presented to compute the interconnection weights. The algorithm was carefully tested and compared to other methods. Storage capacity, noise immunity, and spurious state avoidance capability of the proposed system are discussed
机译:这里考虑具有时空互连的蜂窝神经网络(CNN),以实现关联存储器。提出了一种快速学习方法来计算互连权重。该算法经过仔细测试,并与其他方法进行了比较。讨论了所提出系统的存储容量,抗噪性和杂散状态避免能力

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