Automatic modulation recognition (AMR) is a promising technology for intelligent communication receivers to detect signal modulation schemes. Recently, the emerging deep learning (DL) research has facilitated high-performance DL-AMR approaches. However, most DL-AMR models only focus on recognition accuracy, leading to huge model sizes and high computational complexity, while some lightweight and low-complexity models struggle to meet the accuracy requirements. This letter proposes an efficient DL-AMR model based on phase parameter estimation and transformation, with convolutional neural network (CNN) and gated recurrent unit (GRU) as the feature extraction layers, which can achieve high recognition accuracy equivalent to the existing state-of-the-art models but reduces more than a third of the volume of their parameters. Meanwhile, our model is more competitive in training time and test time than the benchmark models with similar recognition accuracy. Moreover, we further propose to compress our model by pruning, which maintains the recognition accuracy higher than 90% while has less than 1/8 of the number of parameters comparing with state-of-the-art models.
翻译:自动调制识别(AMR)是智能通信接收器探测信号调制方案的一个很有希望的技术。最近,新兴的深层学习(DL)研究促进了高性能DL-AMR方法。然而,大多数DL-AMR模型只侧重于识别精确度,导致模型大小巨大和计算复杂程度高,而一些轻量和低复杂度模型则难以满足准确性要求。本信提出一个高效的DL-AMR模型,以阶段参数估计和转换为基础,以动态神经网络和门式经常单元(GRU)为特征提取层,可以达到与现有最新模型相当的高度识别精确度,但减少了其参数的三分之一以上。与此同时,我们的模型在培训时间和测试时间方面比基准模型具有类似的识别准确性,更具竞争力。此外,我们进一步提议通过运行压缩我们的模型,保持高于90%的识别准确度,而与最新模型相比的参数则少于1.8。