wiki:Other/Summer/2023/SecurityAI

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Security in Aritificial Intelligence

    Security in Artificial Intelligence

    WINLAB Summer Internship 2023

    Advisors: Tianfang Zhang, Changming Li, Hong Li

    Group Members: Rut Mehta, Jacob Morin, Ethan Lung, Damon Lin

    Project Objective

    Artificial intelligence techniques have been widely integrated into mobile and IoT devices, enabling various functionalities based on vision (e.g., face recognition, speech recognition, and speaker identification). The extended pipeline of building deep neural networks (DNN) produces new attack surfaces, such as attacks during the data collection, model training, and model update stages. Recent research studies discovered an effective yet stealthy attack, called a backdoor attack, which trains a hidden trigger pattern into the DNNs. The backdoored DNNs will misclassify an input as an adversary-specified label if the trigger pattern appears, behaving normally otherwise, making it difficult to be detected. Backdoor attacks originate from the image domain, and recent studies have started investigating audio-domain backdoor attacks (e.g., against voice assistant systems). This project aims to study the vulnerabilities of backdoor attacks in the image and audio domains and develop techniques for attack mitigation.

    Week 1

    Summary

    Resources

    https://venturebeat.com/security/adversarial-attacks-in-machine-learning-what-they-are-and-how-to-stop-them/

    https://www.engati.com/blog/ai-for-cybersecurity#:~:text=AI%20in%20cybersecurity%20eliminates%20time,on%20more%20critical%20security%20tasks.

    Week 2

    Summary

    • Familiarized ourselves with PyTorch
    • Started researching papers about Smart User Authentication (WiFi-enabled IOT)
    • Explored into attack mitigation

    Resources

    https://pytorch.org/tutorials/beginner/basics/intro.html

    https://www.hypr.com/security-encyclopedia/iot-authentication#:~:text=IoT%20(Internet%20of%20Things)%20Authentication,%2C%20transportation%20hubs%2C%20and%20workplaces

    Week 3

    Summary

    • Continued learning advanced PyTorch functions for IoT interference data.
    • Set up experiments to collect interference data from mobile devices
    • Examined Channel State Information (CSI) Amplitudes

    Resources

    http://tns.thss.tsinghua.edu.cn/wst/docs/pre/

    https://www.mdpi.com/1099-4300/23/9/1164#:~:text=The%20physical%20meaning%20of%20CSI,fading%20%5B26%2C27%5D

    Week 4

    Summary

    • Set up Linux virtual machine through VirtualBox (Ubuntu)
    • Familiarized ourselves with Linux Terminal
    • Installed Nexmon (Channel State Information tool, Extract CSI from phone)
    • Used Android Phones (Nexus 5 & Nexus 6) to perform experiments

    Resources

    https://github.com/seemoo-lab/nexmon_csi#getting-started

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