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Securing Connected and Automated Surveillance Systems Against Network Intrusions and Adversarial Attacks

In the recent years, connected surveillance systems have been witnessing an unprecedented
evolution owing to the advancements in internet of things and deep learning technologies. However,
vulnerabilities to various kinds of attacks both at the cyber network-level and at the physical worldlevel are also rising. This poses danger not only to the devices but also to human life and property. The goal of this thesis is to enhance the security of an internet of things, focusing on connected video-based surveillance systems, by proposing multiple novel solutions to address security issues at the cyber network-level and to defend such systems at the physical world-level.
In order to enhance security at the cyber network-level, this thesis designs and develops solutions to detect network intrusions in an internet of things such as surveillance cameras. The first solution is a novel method for network flow features transformation, named TempoCode. It introduces a temporal codebook-based encoding of flow features based on capturing the key patterns of benign traffic in a learnt temporal codebook. The second solution takes an unsupervised learning-based approach and proposes four methods to build efficient and adaptive ensembles of neural networks-based autoencoders for intrusion detection in internet of things such as surveillance cameras.
To address the physical world-level attacks, this thesis studies, for the first time to the best of
our knowledge, adversarial patches-based attacks against a convolutional neural network (CNN)-
based surveillance system designed for vehicle make and model recognition (VMMR). The connected video-based surveillance systems that are based on deep learning models such as CNNs
are highly vulnerable to adversarial machine learning-based attacks that could trick and fool the
surveillance systems. In addition, this thesis proposes and evaluates a lightweight defense solution
called SIHFR to mitigate the impact of such adversarial-patches on CNN-based VMMR systems,
leveraging the symmetry in vehicles’ face images.
The experimental evaluations on recent realistic intrusion detection datasets prove the effectiveness of the developed solutions, in comparison to state-of-the-art, in detecting intrusions of various
types and for different devices. Moreover, using a real-world surveillance dataset, we demonstrate
the effectiveness of the SIHFR defense method which does not require re-training of the target
VMMR model and adds only a minimal overhead. The solutions designed and developed in this
thesis shall pave the way forward for future studies to develop efficient intrusion detection systems
and adversarial attacks mitigation methods for connected surveillance systems such as VMMR.

Identiferoai:union.ndltd.org:uottawa.ca/oai:ruor.uottawa.ca:10393/42345
Date30 June 2021
CreatorsSiddiqui, Abdul Jabbar
ContributorsBoukerche, Azzedine
PublisherUniversité d'Ottawa / University of Ottawa
Source SetsUniversité d’Ottawa
LanguageEnglish
Detected LanguageEnglish
TypeThesis
Formatapplication/pdf

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