DeviceRadar: Online IoT Device Fingerprinting in ISPs Using Programmable Switches

IF 3.6 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE/ACM Transactions on Networking Pub Date : 2024-03-17 DOI:10.1109/TNET.2024.3398778
Ruoyu Li;Qing Li;Tao Lin;Qingsong Zou;Dan Zhao;Yucheng Huang;Gareth Tyson;Guorui Xie;Yong Jiang
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Abstract

Device fingerprinting can be used by Internet Service Providers (ISPs) to identify vulnerable IoT devices for early prevention of threats. However, due to the wide deployment of middleboxes in ISP networks, some important data, e.g., 5-tuples and flow statistics, are often obscured, rendering many existing approaches invalid. It is further challenged by the high-speed traffic of hundreds of terabytes per day in ISP networks. This paper proposes DeviceRadar, an online IoT device fingerprinting framework that achieves accurate, real-time processing in ISPs using programmable switches. We innovatively exploit “key packets” as a basis of fingerprints only using packet sizes and directions, which appear periodically while exhibiting differences across different IoT devices. To utilize them, we propose a packet size embedding model to discover the spatial relationships between packets. Meanwhile, we design an algorithm to extract the “key packets” of each device, and propose an approach that jointly considers the spatial relationships and the key packets to produce a neighboring key packet distribution, which can serve as a feature vector for machine learning models for inference. Last, we design a model transformation method and a feature extraction process to deploy the model on a programmable data plane within its constrained arithmetic operations and memory to achieve line-speed processing. Our experiments show that DeviceRadar can achieve state-of-the-art accuracy across 77 IoT devices with 40 Gbps throughput, and requires only 1.3% of the processing time compared to GPU-accelerated approaches.
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DeviceRadar:利用可编程交换机在互联网服务提供商中进行在线物联网设备指纹识别
互联网服务提供商(ISP)可利用设备指纹识别技术来识别易受攻击的物联网设备,从而及早防范威胁。然而,由于互联网服务提供商(ISP)网络中广泛部署了中间件,一些重要数据(如 5 图元和流量统计)往往被掩盖,导致许多现有方法失效。而 ISP 网络中每天数百 TB 的高速流量又进一步挑战了这一难题。本文提出的 DeviceRadar 是一种在线物联网设备指纹识别框架,可在 ISP 中使用可编程交换机实现准确、实时的处理。我们创新性地利用 "关键数据包 "作为指纹的基础,只使用数据包的大小和方向,这些数据包会周期性地出现,同时在不同的物联网设备之间表现出差异。为了利用这些数据包,我们提出了数据包大小嵌入模型,以发现数据包之间的空间关系。同时,我们设计了一种算法来提取每个设备的 "关键数据包",并提出了一种联合考虑空间关系和关键数据包的方法,以生成邻近关键数据包分布,作为机器学习模型的特征向量进行推理。最后,我们设计了一种模型转换方法和特征提取流程,以便在受限的算术运算和内存范围内将模型部署在可编程数据平面上,实现线速处理。我们的实验表明,DeviceRadar 可以在 77 台物联网设备上以 40 Gbps 的吞吐量实现最先进的准确性,与 GPU 加速方法相比,仅需 1.3% 的处理时间。
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来源期刊
IEEE/ACM Transactions on Networking
IEEE/ACM Transactions on Networking 工程技术-电信学
CiteScore
8.20
自引率
5.40%
发文量
246
审稿时长
4-8 weeks
期刊介绍: The IEEE/ACM Transactions on Networking’s high-level objective is to publish high-quality, original research results derived from theoretical or experimental exploration of the area of communication/computer networking, covering all sorts of information transport networks over all sorts of physical layer technologies, both wireline (all kinds of guided media: e.g., copper, optical) and wireless (e.g., radio-frequency, acoustic (e.g., underwater), infra-red), or hybrids of these. The journal welcomes applied contributions reporting on novel experiences and experiments with actual systems.
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