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A modulation classification method in cognitive radios system using stacked denoising sparse autoencoder

机译:一种使用堆叠去噪稀疏自动化器的认知收音机系统的调制分类方法

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This paper proposes a modulation classification method based on Stacked Denoising Sparse Autoencoder (SDAE). This method can extract modulation features automatically, and classify input signals based on the features it extracts. The scenarios of rapid classification and high accuracy classification are considered. In the rapid classification scenario, a long symbols sequence is not attainable for this scenario. Moreover, expert features are not necessary for this scenario, simplifying the modulation classification procedure and rendering rapid classification more achievable. In addition, in the high accuracy classification scenario, the higher cumulants are used as expert features due to its advantage over other tries at noise resistance. Moreover, we use complex symbols rather than pulse shaped complex signals as network input, which simplifies the network topology and saves the calculation overhead. The results of the average classification accuracy and the execution time are presented, indicating significant performance advantages over the other methods.
机译:本文提出了一种基于堆积的去噪稀疏自动化器(SDAE)的调制分类方法。此方法可以自动提取调制功能,并根据其提取的功能对输入信号进行分类。考虑了快速分类和高精度分类的场景。在快速分类场景中,这种情况无法达到长符号序列。此外,这种情况不需要专家功能,简化调制分类程序,并更快速分类更加可实现。此外,在高精度的分类场景中,较高的累积剂被用作专家特征,因为它在抗噪声的其他尝试中的优势。此外,我们使用复杂的符号而不是脉冲形式的复杂信号作为网络输入,这简化了网络拓扑并节省了计算开销。提出了平均分类准确度和执行时间的结果,表明与其他方法的显着性能优势。

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