In this paper, we optimize a faster region-based convolutional neural network (FRCNN) for 1-dimensional (1D) signal processing and electromagnetic spectrum sensing. We target a cluttered radio frequency (RF) environment, where multiple RF transmission can be present at various frequencies with different bandwidths. The challenge is to accurately and quickly detect and localize each signal with minimal prior information of the signal within a band of interest. As the number of wireless devices grow, and devices become more complex from advances such as software defined radio (SDR), this task becomes increasingly difficult. It is important for sensing devices to keep up with this change, to ensure optimal spectrum usage, to monitor traffic over-the-air for security concerns, and for identifying devices in electronic warfare. Machine learning object detection has shown to be effective for spectrum sensing, however current techniques can be slow and use excessive resources. FRCNN has been applied to perform spectrum sensing using 2D spectrograms, however is unable to be applied directly to 1D signals. We optimize FRCNN to handle 1D signals, including fast Fourier transform (FFT) for spectrum sensing. Our results show that our method has better localization performance, and is faster than the 2D equivalent. Additionally, we show a use case where the modulation type of multiple uncooperative transmissions is identified. Finally, we prove our method generalizes to real world scenarios, by testing it over-the-air using SDR.
翻译:在本文中,我们优化了一个基于1维(1D)信号处理和电磁频谱感测的基于区域更快速的共变神经网络(FRCNN),用于1维(1D)信号处理和电磁波频谱感测。我们的目标是一个四分五裂的无线电频(RF)环境,在这个环境中,不同带宽的不同频率可以出现多发RF的传输。我们面临的挑战是准确和快速地检测每个信号,并在最小的事先信息中将信号放在一个利益范围内。随着无线装置数量的增长,而且设备由于软件定义的无线电(SDR)等进步而变得更加复杂,这项任务变得日益困难。我们优化FRCNN处理1D信号的重要性在于跟上这一变化,确保最优化频谱的使用,监测安全关切的空中交通,以及识别电子战中的装置。机器学习对象的探测显示对频谱感测有效,尽管目前技术可以缓慢,而且使用过多的资源。FRRCNN被用于使用2光谱图,但无法直接应用于1D信号。我们优化了FRN处理1D信号的本地化信号,包括快速的四变换速度(FFT),用于谱感测频感测。最后,我们采用的方式是更快速地测试。我们所采用的方法是更快速地展示。我们所采用的方式是更快速地测试。我们所采用的方式,通过多式的测试。