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首页> 外文期刊>IEICE Transactions on Communications >Robustness in Supervised Learning Based Blind Automatic Modulation Classification
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Robustness in Supervised Learning Based Blind Automatic Modulation Classification

机译:基于监督学习的盲自动调制分类的鲁棒性

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摘要

Automatic modulation classification (AMC) involves extracting a set of unique features from the received signal. Accuracy and uniqueness of the features along with the appropriate classification algorithm determine the overall performance of AMC systems. Accuracy of any modulation feature is usually limited by the blindness of the signal information such as carrier frequency, symbol rate etc. Most papers do not sufficiently consider these impairments and so do not directly target practical applications. The AMC system proposed herein is trained with probable input signals, and the appropriate decision tree should be chosen to achieve robust classification. Six unique features are used to classify eight analog and digital modulation schemes which are widely used by low frequency mobile emergency radios around the globe. The Proposed algorithm improves the classification performance of AMC especially for the low SNR regime.
机译:自动调制分类(AMC)涉及从接收到的信号中提取一组独特的特征。功能的准确性和唯一性以及适当的分类算法决定了AMC系统的整体性能。通常,任何调制功能的准确性都受到诸如载波频率,符号速率等信号信息的盲目性的限制。大多数论文都没有充分考虑这些损害,因此也没有直接针对实际应用。本文提出的AMC系统使用可能的输入信号进行训练,并且应该选择适当的决策树以实现稳健的分类。六个独特的功能用于对八种模拟和数字调制方案进行分类,这些方案已被全球范围内的低频移动应急无线电广泛使用。所提出的算法提高了AMC的分类性能,特别是在低SNR情况下。

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