IoT Device Fingerprint using Deep Learning
Sandhya Aneja, Nagender Aneja, Md Shohidul Islam

TL;DR
This paper proposes a novel device fingerprinting method using deep learning on IAT graphs, achieving 86.7% accuracy in identifying devices without relying on traditional identifiers.
Contribution
It introduces a new approach of plotting IAT graphs and applying CNN for device identification, improving efficiency over statistical methods.
Findings
Achieved 86.7% accuracy in device identification.
Utilized CNN on IAT graphs for improved fingerprinting.
Demonstrated feasibility with Raspberry Pi as a router.
Abstract
Device Fingerprinting (DFP) is the identification of a device without using its network or other assigned identities including IP address, Medium Access Control (MAC) address, or International Mobile Equipment Identity (IMEI) number. DFP identifies a device using information from the packets which the device uses to communicate over the network. Packets are received at a router and processed to extract the information. In this paper, we worked on the DFP using Inter Arrival Time (IAT). IAT is the time interval between the two consecutive packets received. This has been observed that the IAT is unique for a device because of different hardware and the software used for the device. The existing work on the DFP uses the statistical techniques to analyze the IAT and to further generate the information using which a device can be identified uniquely. This work presents a novel idea of DFP by…
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