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A neural network associative memory for handwritten character recognition using multiple Chua characters

机译:用于多个Chua字符的手写字符识别的神经网络关联存储器

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A neural network architecture and learning algorithm for associative memory storage of analog patterns, continuous sequences, and chaotic attractors in the same network is described. System performance using many different chaotic attractors from the family of Chua attractors implemented by the Chua hardware circuit is investigated in an application to the problem of real time handwritten digit recognition. Several of these attractors outperform the previously studied Lorenz attractor system in terms of accuracy and speed of convergence. In the normal form projection algorithm, which was developed at Berkeley for associative memory storage of dynamic attractors, a matrix inversion determines network weights, given prototype patterns to be stored. There are N units of capacity in an N node network with 3N/sup 2/ weights. It costs one unit per static attractor, two per Fourier component of each periodic trajectory, and at least three per chaotic attractor. There are no spurious attractors, and for periodic attractors there is a Lyapunov function in a special coordinate system which governs the approach of transient states to stored trajectories. Unsupervised or supervised incremental learning algorithms for pattern classification, such as competitive learning or boot-strap Widrow-Hoff can easily be implemented. The architecture can be "folded" into a recurrent network with higher order weights that can be used as a model of cortex that stores oscillatory and chaotic attractors by a Hebb rule. A novel computing architecture has been constructed of recurrently interconnected associative memory modules of this type. Architectural variations employ selective synchronization of modules with chaotic attractors that communicate by broadspectrum chaotic signals to control the flow of computation.
机译:描述了用于在同一网络中对模拟模式,连续序列和混沌吸引子进行关联存储的神经网络架构和学习算法。在针对实时手写数字识别问题的应用中,研究了使用由Chua硬件电路实现的Chua吸引子系列中的许多不同混沌吸引子的系统性能。这些吸引子中的几个在准确性和收敛速度方面优于先前研究的Lorenz吸引子系统。在伯克利(Berkeley)开发的用于动态吸引子的关联存储器存储的标准形式投影算法中,矩阵反演确定了网络权重(给定要存储的原型模式)。 N节点网络中的N个容量单位为3N / sup 2 /权重。每个静态吸引子花费一个单位,每个周期轨迹的每个傅立叶分量花费两个,每个混沌吸引子花费至少三个。没有伪吸引子,对于周期性吸引子,在特殊坐标系中具有Lyapunov函数,该函数控制瞬态到存储轨迹的逼近。可以很容易地实现用于模式分类的无监督或有监督的增量学习算法,例如竞争性学习或自举Widrow-Hoff。该体系结构可以“折叠”到具有更高阶权重的循环网络中,可以用作按Hebb规则存储振荡和混沌吸引子的皮质模型。已经构造了这种类型的循环互连的关联存储模块的新颖的计算架构。体系结构的变化采用具有混沌吸引子的模块的选择性同步,该吸引子通过广谱混沌信号进行通信以控制计算流程。

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