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首页> 外文期刊>Analog Integrated Circuits and Signal Processing >Automatic classification of multiple signals using 2D matching of magnitude-frequency density features
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Automatic classification of multiple signals using 2D matching of magnitude-frequency density features

机译:利用幅度频率密度特征的2D匹配自动分类多个信号

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摘要

Signal classification is an important function of modern communication systems in software defined radio applications. The ability to quickly recognize the type of received signals allows a system to automatically adapt the processor to properly decode the signals. Many classification techniques assume that the received signal space is occupied by only one signal, and that the frequency of operation is known. However, in some systems, the receiver may be completely blind to the number and characteristics of signals within the bandwidth of interest. The technique introduced in this study proposes the collapsing of localized magnitude peaks from consecutive short time discrete fourier transform bins into magnitude histograms to create a two dimensional image of the frequency-magnitude density of the received signal space. This image can be a useful visualization tool in the characterization of the signal space in user assisted modes of classification. Alternatively, the process could be automated by utilizing pattern recognition and image processing algorithms. Automatic signal classification is explored in this study.
机译:在软件定义的无线电应用中,信号分类是现代通信系统的重要功能。快速识别接收到的信号类型的能力使系统能够自动调整处理器以正确解码信号。许多分类技术假定接收到的信号空间仅被一个信号占据,并且工作频率是已知的。但是,在某些系统中,接收器可能完全不关心目标带宽内的信号数量和特性。在这项研究中引入的技术提出了将连续的短时间离散傅立叶变换仓中的局部幅度峰值折叠为幅度直方图,以创建接收信号空间的频率幅度密度的二维图像。在以用户辅助分类模式表征信号空间时,此图像可能是有用的可视化工具。可替代地,可以通过利用模式识别和图像处理算法来使该过程自动化。在这项研究中探索了自动信号分类。

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