Abstract
The IoT (Internet of Things) technology has been widely adopted in recent years and has profoundly changed the people's daily lives. However, in the meantime, such a fast-growing technology has also introduced new privacy issues, which need to be better understood and measured. In this work, we look into how private information can be leaked from network traffic generated in the smart home network. Although researchers have proposed techniques to infer IoT device types or user behaviors under clean experiment setup, the effectiveness of such approaches become questionable in the complex but realistic network environment, where common techniques like Network Address and Port Translation (NAPT) and Virtual Private Network (VPN) are enabled. To this aim, we propose a traffic analysis framework based on sequence-learning techniques like LSTM and leveraged the temporal relations between packets for the attack of device identification. We evaluated it under different environment settings (e.g., pure-IoT and noisy environment with multiple non-IoT devices). The results showed our framework was able to differentiate device types with a high accuracy. This result suggests IoT network communications pose prominent challenges to users' privacy, even when they are protected by encryption and morphed by the network gateway. As such, new privacy protection methods on IoT traffic need to be developed towards mitigating this new issue.
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CITATION STYLE
Dong, S., Li, Z., Tang, D., Chen, J., Sun, M., & Zhang, K. (2020). Your Smart Home Can’t Keep a Secret: Towards Automated Fingerprinting of IoT Traffic. In Proceedings of the 15th ACM Asia Conference on Computer and Communications Security, ASIA CCS 2020 (pp. 47–59). Association for Computing Machinery, Inc. https://doi.org/10.1145/3320269.3384732
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