FlowPrint: Semi-Supervised Mobile-App Fingerprinting on Encrypted Network Traffic 论文
2020引用 297
Internet Traffic Analysis and Secure E-votingNetwork Security and Intrusion DetectionHate Speech and Cyberbullying Detection
摘要
Mobile-application fingerprinting of network traffic is valuable for many security solutions as it provides insights into the apps active on a network. Unfortunately, existing techniques require prior knowledge of apps to be able to recognize them. However, mobile environments are constantly evolving, i.e., apps are regularly installed, updated, and uninstalled. Therefore, it is infeasible for existing fingerprinting approaches to cover all apps that may appear on a network. Moreover, most mobile traffic is encrypted, shows similarities with other apps, e.g., due to common libraries or the use of content delivery networks, and depends on user input, further complicating the fingerprinting process.