On-line recognition of handwritten Arabic characters using a Kohonen neural network

N. Mezghani, A. Mitiche, M. Cheriet
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引用次数: 59

Abstract

Neural networks have been applied to various pattern classification and recognition problems for their learning ability, discrimination power and generalization ability The neural network most referenced in the pattern recognition literature are the multi-layer perceptron, the Kohonen associative memory and the Capenter-Grossberg ART network. The Kohonen memory runs an unsupervised clustering algorithm. It is easily trained and has attractive properties such as topological ordering and good generalization. In this study an on-line system for the recognition of handwriting Arabic characters using a Kohonen network is investigated. The input of the neural network is a feature vector of elliptic Fourier coefficients extracted from the handwritten dynamic representation. Experimental results show that the network successfully recognizes both clearly and roughly written characters with good performance.
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基于Kohonen神经网络的手写阿拉伯文字在线识别
神经网络以其学习能力、判别能力和泛化能力被广泛应用于各种模式分类和识别问题,模式识别文献中引用最多的神经网络是多层感知器、Kohonen联想记忆和capter - grossberg ART网络。Kohonen内存运行一种无监督聚类算法。它易于训练,并且具有拓扑有序和良好泛化等吸引人的特性。本文研究了一种基于Kohonen网络的手写阿拉伯文在线识别系统。神经网络的输入是从手写动态表示中提取的椭圆傅里叶系数特征向量。实验结果表明,该网络既能识别清晰的汉字,又能识别粗略的汉字,并且具有良好的性能。
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