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An optimized algorithm for recognition of complex patterns based on artificial neural network

机译:基于人工神经网络的复杂模式识别优化算法

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The paper presents an optimized algorithm for the recognition of complex and noisy patterns. The system, based on the backpropagation neural network (NN), can be used in numerous applications. One of them is pattern recognition in biomedical signals, used for example in wireless body area networks. In the paper the efficiency of the system has been verified with data set composed of letters with not typical shapes, additionally covered by a noise. The subject of the optimization process was the network sizes i.e. the number of neurons and the number of layers, as well as different learning parameters. The proposed system has been written in Java language. It can be used as a model of a real system that in the next step will be realized in hardware, for example, as an ASIC. The system enables creation of NNs with different parameters, and a full learning process that also includes the testing phase. It is equipped with the editor of both the raster and matrix patterns.
机译:本文提出了一种用于识别复杂和嘈杂模式的优化算法。该系统基于反向传播神经网络(NN),可用于众多应用中。其中之一是生物医学信号中的模式识别,例如用于无线人体局域网中。在本文中,系统的效率已经通过数据集验证,该数据集由字母组成,这些字母不具有典型的形状,而且还被噪声覆盖。优化过程的主题是网络大小,即神经元的数量和层的数量,以及不同的学习参数。所提出的系统已用Java语言编写。它可以用作实际系统的模型,在下一步中将以硬件形式实现,例如以ASIC形式。该系统支持创建具有不同参数的NN,以及一个完整的学习过程,其中还包括测试阶段。它配备了光栅图样和矩阵图样的编辑器。

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