We present a neural network architecture able to efficiently detect modulation scheme in a portion of I/Q signals. This network is lighter by up to two orders of magnitude than other state-of-the-art architectures working on the same or similar tasks. Moreover, the number of parameters does not depend on the signal duration, which allows processing stream of data, and results in a signal-length invariant network. In addition, we have generated a dataset based on the simulation of impairments that the propagation channel and the demodulator can bring to recorded I/Q signals: random phase shifts, delays, roll-off, sampling rates, and frequency offsets. We benefit from this dataset to train our neural network to be invariant to impairments and quantify its accuracy at disentangling between modulations under realistic real-life conditions. Data and code to reproduce the results are made publicly available.
翻译:我们提出了一个神经网络结构,能够在I/Q信号的一部分中有效检测调制方案。这个网络比从事相同或类似任务的其他最先进的结构轻两个数量级。此外,参数的数量并不取决于信号持续时间,因为信号允许处理数据流,结果形成一个信号长的变异网络。此外,我们还根据传播频道和降压器可以带入记录I/Q信号的缺陷模拟生成了一个数据集:随机阶段转移、延迟、滚动、抽样率和频率抵消。我们从这个数据集中受益,以训练我们的神经网络不易受损,并在现实现实生活条件下的调制之间脱钩时量化其准确性。复制结果的数据和代码可以公开提供。