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Automatic Modulation Recognition by Support Vector Machines Using Wavelet Kernel

机译:支持向量机使用小波内核的自动调制识别

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Automatic modulation identification plays a significant role in electronic warfare, electronic surveillance systems and electronic counter measure. The task of modulation recognition of communication signals is to determine the modulation type and signal parameters. In fact, automatic modulation identification can be range to an application of pattern recognition in communication field. The support vector machines (SVM) is a new universal learning machine which is widely used in the fields of pattern recognition, regression estimation and probability density. In this paper, a new method using wavelet kernel function was proposed, which maps the input vector xi into a high dimensional feature space F. In this feature space F, we can construct the optimal hyperplane that realizes the maximal margin in this space. That is to say, we can use SVM to classify the communication signals into two groups, namely analogue modulated signals and digitally modulated signals. In addition, computer simulation results are given at last, which show good performance of the method.
机译:自动调制识别在电子战,电子监控系统和电子计数器测量中起着重要作用。调制识别通信信号的任务是确定调制类型和信号参数。实际上,自动调制识别可以是在通信领域中的模式识别应用的范围。支持向量机(SVM)是一种新的通用学习机,广泛用于模式识别,回归估计和概率密度的领域。在本文中,提出了一种使用小波核功能的新方法,其将输入向量Xi映射到高维特征空间F.在此特征空间F中,我们可以构建最佳超平面,实现该空间中最大边距。也就是说,我们可以使用SVM将通信信号分为两组,即模拟调制信号和数字调制信号。此外,计算机仿真结果终于给出了该方法的良好性能。

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