As the Internet of Things (IoT) continues to grow, ensuring the security of systems that rely on wireless IoT devices has become critically important. Deep learning-based passive physical layer transmitter authorization systems have been introduced recently for this purpose, as they accommodate the limited computational and power budget of such devices. These systems have been shown to offer excellent outlier detection accuracies when trained and tested on a fixed authorized transmitter set. However in a real-life deployment, a need may arise for transmitters to be added and removed as the authorized set of transmitters changes. In such cases, the system could experience long down-times, as retraining the underlying deep learning model is often a time-consuming process. In this paper, we draw inspiration from information retrieval to address this problem: by utilizing feature vectors as RF fingerprints, we first demonstrate that training could be simplified to indexing those feature vectors into a database using locality sensitive hashing (LSH). Then we show that approximate nearest neighbor search could be performed on the database to perform transmitter authorization that matches the accuracy of deep learning models, while allowing for more than 100x faster retraining. Furthermore, dimensionality reduction techniques are used on the feature vectors to show that the authorization latency of our technique could be reduced to approach that of traditional deep learning-based systems.
翻译:随着物的互联网(IOT)的继续发展,确保依赖无线IOT装置的系统的安全已变得至关重要。最近为此目的引进了深层次的基于学习的被动物理层发射机授权系统,因为该系统能容纳这些装置有限的计算和功率预算。这些系统显示,在用固定授权发射机进行训练和测试时,这些系统提供了极好的超能检测孔;然而,在实际部署过程中,可能需要随着授权的发射机的改变而增加和删除发射机。在这种情况下,该系统可能会经历长时间的停机期,因为深层学习模型的再培训往往是一个耗时的过程。在本文件中,我们从信息检索中得到灵感,以解决这一问题:利用特性矢量作为RF的指纹,我们首先表明培训可以简化,将这些特性矢量输入数据库,使用地点敏感感应(LSH)进行索引。然后,我们表明,可以在数据库上进行近距离的邻居搜索,以便进行与深层学习模型的准确性能匹配的发射机授权,同时允许进行超过100x的深深层再培训。此外,我们从信息检索中得到启发的灵感回的灵感的方法可以减少。此外,在学习系统上,可以减少对等矢量的方法可以使用。