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An expert target recognition system using a genetic wavelet neural network

机译:使用遗传小波神经网络的专家目标识别系统

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In this paper, a target recognition system is presented for target recognition using target echo signals of High Range Resolution (HRR) radars. This paper especially deals with a combination of an adaptive feature extraction and classification using optimum wavelet entropy parameter values. The features are obtained from measured target echo signals using a X-band pulse radar. A genetic wavelet neural network model is developed for target recognition. This model consists of three layers. These layers are genetic algorithm, wavelet analysis and multi-layer perceptron respectively. The genetic algorithm layer is used for selecting the feature extraction method and obtaining the optimum wavelet entropy parameter values. Here, the optimal one of four different feature extraction methods is selected by using a genetic algorithm. The proposed four feature extraction methods are: (i) standard wavelet decomposition, (ii) wavelet decomposition--short-time Fourier transform, (iii) wavelet decomposition--Born-Jordan time-frequency representation, (iv) wavelet decomposition--Choi-Williams time-frequency representation. The wavelet layer is used for optimum feature extraction in the time-frequency domain. It is composed of wavelet decomposition and wavelet entropies. The multi layer perception is used for evaluating the fitness function of the genetic algorithm and for classifying radar targets. The performance of the developed system is evaluated by using noisy radar target echo signals. The test results show that this system is effective in rating real radar target echo signals. The correct classification rate is about 90% for target subjects.
机译:在本文中,提出了一种目标识别系统,用于使用高分辨力(HRR)雷达的目标回波信号进行目标识别。本文特别讨论了使用最佳小波熵参数值的自适应特征提取和分类的组合。这些特征是使用X波段脉冲雷达从测得的目标回波信号获得的。遗传小波神经网络模型被开发用于目标识别。该模型由三层组成。这些层分别是遗传算法,小波分析和多层感知器。遗传算法层用于选择特征提取方法并获得最优的小波熵参数值。在此,通过使用遗传算法选择四种不同特征提取方法中的最佳方法。提出的四种特征提取方法是:(i)标准小波分解,(ii)小波分解-短时傅立叶变换,(iii)小波分解-Born-Jordan时频表示,(iv)小波分解-崔威廉斯的时频表示。小波层用于时频域中的最佳特征提取。它由小波分解和小波熵组成。多层感知器用于评估遗传算法的适应度函数以及对雷达目标进行分类。通过使用带噪声的雷达目标回波信号来评估开发系统的性能。测试结果表明,该系统可有效地对真实雷达目标回波信号进行评级。目标对象的正确分类率约为90%。

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