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Internet of Things (IoT) Discovery Using Deep Neural Networks

机译:使用深度神经网络发现物联网(IoT)

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We present a novel approach to Internet of Things (IoT) discovery using Deep Neural Network (DNN) based object detection. Traditional methods of IoT discovery are based on either manual or automated monitoring of predetermined channel frequencies. Our method takes the spectrogram images that a human analyst visually scans for manual spectrum exploration and applies the state-of-the-art You Only Look Once (YOLO) object detection algorithm to detect and localize signal objects in time and frequency. We focus specifically on the class of signals that employ the Long Range (LoRa) modulation scheme, which uses chirp spread spectrum technology to provide high network efficiency and robustness against both in- and out-of-band interference. Our detection system is designed with scalability for real or near real-time processing capabilities and achieves 81.82% mAP in real-time on a fourth generation mobile Intel CPU without GPU support. Lastly, we present preliminary detection results for other IoT signals including Zigbee, Bluetooth, and Wi-Fi.
机译:我们提出了一种使用基于深度神经网络(DNN)的对象检测进行物联网(IoT)发现的新颖方法。物联网发现的传统方法基于对预定信道频率的手动或自动监视。我们的方法采用人类分析师可视化扫描的频谱图图像进行手动频谱探索,并应用最先进的“一次只看一次”(YOLO)对象检测算法来检测和定位时间和频率上的信号对象。我们特别关注采用远程(LoRa)调制方案的信号类别,该方案使用线性调频扩频技术来提供高网络效率和鲁棒性,以应对带内和带外干扰。我们的检测系统具有实时或近实时处理能力的可扩展性,在不支持GPU的第四代移动Intel CPU上实时达到81.82%的mAP。最后,我们介绍了其他物联网信号(包括Zigbee,蓝牙和Wi-Fi)的初步检测结果。

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