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Modulation Classification of Underwater Communication with Deep Learning Network

机译:深度学习网络的水下通信调制分类

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摘要

Automatic modulation recognition has successfully used various machine learning methods and achieved certain results. As a subarea of machine learning, deep learning has made great progress in recent years and has made remarkable progress in the field of image and language processing. Deep learning requires a large amount of data support. As a communication field with a large amount of data, there is an inherent advantage of applying deep learning. However, the extensive application of deep learning in the field of communication has not yet been fully developed, especially in underwater acoustic communication. In this paper, we mainly discuss the modulation recognition process which is an important part of communication process by using the deep learning method. Different from the common machine learning methods that require feature extraction, the deep learning method does not require feature extraction and obtains more effects than common machine learning.
机译:自动调制识别已成功使用各种机器学习方法,并取得了一定的成果。作为机器学习的一个子领域,深度学习近年来取得了长足的进步,并且在图像和语言处理领域也取得了显着进步。深度学习需要大量的数据支持。作为具有大量数据的通信领域,应用深度学习具有固有的优势。但是,深度学习在通信领域的广泛应用尚未得到充分发展,尤其是在水下声学通信中。在本文中,我们主要讨论使用深度学习方法的调制识别过程,该过程是通信过程的重要组成部分。与需要特征提取的常见机器学习方法不同,深度学习方法不需要特征提取,并且比常见的机器学习获得更多的效果。

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