Deep Learning-based Intrusion Detection and Impulsive Event Classification for Distributed Acoustic Sensing across Telecom Networks
Publication Date: 6/15/2024
Event: IEEE Journal of Lightwave Technology
Reference: 42(12):4167-4176, 2024
Authors: Shaobo Han, NEC Laboratories America, Inc.; Ming-Fang Huang, NEC Laboratories America, Inc.; Tingfeng Li, NEC Laboratories America, Inc.; Jian Fang, NEC Laboratories America, Inc.; Zhuocheng Jiang, NEC Laboratories America, Inc.; Ting Wang, NEC Laboratories America, Inc.
Abstract: We introduce two pioneering applications leveraging Distributed Fiber Optic Sensing (DFOS) and Machine Learning (ML) technologies. These innovations offer substantial benefits forfortifying telecom infrastructures and public safety. By harnessing existing telecom cables, our solutions excel in perimeter intrusion detection via buried cables and impulsive event classification through aerial cables. To achieve comprehensive intrusion detection, we introduce a label encoding strategy for multitask learning and evaluate the generalization performance of the proposed approach across various domain shifts. For accurate recognition of impulsive acoustic events, we compare several standard choices of representations for raw waveform data and neural network architectures, including convolutional neural networks (ConvNets) and vision transformers (ViT).We also study the effectiveness of the built-in inductive biases under both high- and low-fidelity sensing conditions and varying amounts of labeled training data. All computations are executed locally through edge computing, ensuring real-time detection capabilities. Furthermore, our proposed system seamlessly integrates with cameras for video analytics, significantly enhancing overall situation awareness of the surrounding environment.
Publication Link: https://ieeexplore.ieee.org/stamp/stamp.jsp?arnumber=10530902