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Recognition of Huffman Codewords with a Genetic-Neural Hybrid System

机译:用遗传神经混合系统识别霍夫曼码字

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Character classification is known to be one of many basic applications in the field of artificial neural networks (ANN), while data transmission with low size is important in the field of source coding. In this paper, we constructed an alphabet of 36 letters which are encoded with the Huffman algorithm and then classified with a back-propagation Feed Forward artificial neural network. Since an ANN is initialized with random weights, the performance is not always optimal. Therefore, we designed a simple genetic algorithm (SGA) that choses an ANN and optimizes its architecture to improve the recognition accuracy. The performance evaluation is given to show the effectiveness of the procedure used, where we reached an accuracy of 100%.
机译:已知字符分类是人工神经网络(ANN)领域的许多基本应用之一,而具有低尺寸的数据传输在源编码领域是重要的。在本文中,我们构造了36个字母的字母,其与霍夫曼算法编码,然后用反向传播馈送前进人工神经网络进行分类。由于ANN初始化随机重量,因此性能并不总是最佳的。因此,我们设计了一种简单的遗传算法(SGA),开展了ANN并优化其架构以提高识别准确性。给出了性能评估,以显示所用程序的有效性,在那里我们达到了100%的准确性。

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