Recent deep neural network-based device classification studies show that complex-valued neural networks (CVNNs) yield higher classification accuracy than real-valued neural networks (RVNNs). Although this improvement is (intuitively) attributed to the complex nature of the input RF data (i.e., IQ symbols), no prior work has taken a closer look into analyzing such a trend in the context of wireless device identification. Our study provides a deeper understanding of this trend using real LoRa and WiFi RF datasets. We perform a deep dive into understanding the impact of (i) the input representation/type and (ii) the architectural layer of the neural network. For the input representation, we considered the IQ as well as the polar coordinates both partially and fully. For the architectural layer, we considered a series of ablation experiments that eliminate parts of the CVNN components. Our results show that CVNNs consistently outperform RVNNs counterpart in the various scenarios mentioned above, indicating that CVNNs are able to make better use of the joint information provided via the in-phase (I) and quadrature (Q) components of the signal.
翻译:最近深入的神经网络设备分类研究表明,复杂价值的神经网络(CVNN)的分类准确性高于实际价值的神经网络(RVNN),尽管这一改进(直觉)归因于输入RF数据的复杂性(即IQ符号),但先前没有更仔细地研究在无线装置识别方面分析这种趋势。我们的研究利用真实的LoRa和WiFi RFS数据集对这一趋势进行了更深入的了解。我们进行了深入的潜水,以了解(一) 输入表示/类型和(二) 神经网络的建筑层的影响。关于输入表示,我们考虑了IQ 和极坐标的局部和完整。关于建筑层,我们考虑了一系列消除CVNN组成部分部分的模拟实验。我们的结果显示,CVNNs始终超越上述各种情景中对应的RVNNs,表明CVNs能够更好地利用通过中段和方形信号组成部分提供的联合信息。(Q)。