Recent learning-based image classification and speech recognition approaches make extensive use of attention mechanisms to achieve state-of-the-art recognition power, which demonstrates the effectiveness of attention mechanisms. Motivated by the fact that the frequency and time information of modulated radio signals are crucial for modulation mode recognition, this paper proposes a time-frequency attention mechanism for a convolutional neural network (CNN)-based modulation recognition framework. The proposed time-frequency attention module is designed to learn which channel, frequency and time information is more meaningful in CNN for modulation recognition. We analyze the effectiveness of the proposed time-frequency attention mechanism and compare the proposed method with two existing learning-based methods. Experiments on an open-source modulation recognition dataset show that the recognition performance of the proposed framework is better than those of the framework without time-frequency attention and existing learning-based methods.
翻译:最近以学习为基础的图像分类和语音识别方法广泛利用关注机制,以实现最先进的识别能力,这显示了关注机制的有效性。受调制无线电信号的频率和时间信息对于调制式识别模式至关重要这一事实的驱动,本文件提议为以动态神经网络为基础的调制识别框架建立一个时间-频率关注机制。拟议的时间-频率关注模块旨在了解在CNN中哪些频道、频率和时间信息更有意义,以便进行调控识别。我们分析了拟议的时间-频率关注机制的有效性,并将拟议方法与现有的两种基于学习的方法进行比较。关于开放源的调制识别数据集的实验表明,对拟议框架的承认性能比没有时间-频率关注和现有基于学习的方法的框架的承认性强。