Building Trustworthy Artificial Intelligence of Things Systems in Adversarial Environments

dc.contributor.authorShi, Shanghaoen
dc.contributor.committeechairLou, Wenjingen
dc.contributor.committeechairShi, Yien
dc.contributor.committeememberCho, Jin-Heeen
dc.contributor.committeememberChen, Yingyingen
dc.contributor.committeememberJi, Boen
dc.contributor.committeememberHou, Yiwei Thomasen
dc.contributor.departmentComputer Science and#38; Applicationsen
dc.date.accessioned2025-08-14T08:00:43Zen
dc.date.available2025-08-14T08:00:43Zen
dc.date.issued2025-08-13en
dc.description.abstractThe recent decade has witnessed a great explosion of artificial intelligence and the Internet of Things technologies. They have revolutionized people's daily lives, improving convenience, efficiency, and connectivity in previously unimaginable ways. Among all broad topics related to AI and IoT, the Artificial Intelligence of Things, abbreviated as AIoT, focuses specifically on the convergence of these two exciting technologies, combining AI's intelligence with IoT's connectivity and data-gathering capabilities. Until now, numerous AIoT applications have been developed, such as smart homes, autonomous driving, smart wearable devices, and automated medical diagnosis. In this dissertation, we investigate the critical security and privacy problems in AIoT systems. Because the AIoT system comprises two fundamental components, including IoT networks and AI algorithms, we naturally decompose our research into two parts: IoT network security and AI security. For IoT security, we explore new network attacks against the critical IoT network protocols and propose defense mechanisms to enhance the IoT infrastructure. In Chapter 2, we propose a novel network timing attack that desynchronizes and disables the chosen victim nodes in the IoT networks. Our attack compromises the precision time protocol, which is the de facto network timing protocol in time-sensitive IoT networks. In this chapter, we also introduce a defense mechanism based on network redundancy to prevent minority malicious nodes. In Chapter 3, we present the design of a trustworthy and verifiable spectrum sharing system leveraging blockchain technology. This system aims to defend against malicious participants and securely record their behaviors. We focus on spectrum sharing as it promotes more efficient utilization of spectrum resources, thereby enhancing the communication infrastructure of IoT networks. For AI security, we first focus on federated learning, or FL, a leading distributed learning paradigm built upon decentralized networks. We investigate privacy attacks against FL from a red team perspective to better understand and expose potential system vulnerabilities. We then explore adversarial attacks on multimodal diffusion models, motivated by the growing popularity of generative AI technologies. In Chapter 4, we introduce our customized model inversion attack against the medical FL systems. Our attack can reconstruct sensitive real-life COVID-19 X-ray images, brain tumor MRI images, and clinical text records, demonstrating its applicability and severity on practical medical systems. In Chapter 5, we present our novel model inversion attack named Scale-MIA against secure FL systems. This attack can reverse the shared model updates between the FL server and clients back to local training samples, challenging the fundamental privacy-preserving property of the FL systems. In Chapter 6, we introduce our novel adversarial attacks against multimodal diffusion models. Our attack adds customized imperceptible perturbations to the image prompts and can mislead the diffusion model from generating any attacker-chosen content, including NSFW content. We hope this work can offer insights into the fundamental security and privacy research of the AIoT systems.en
dc.description.abstractgeneralThis work presents a Ph.D. dissertation on building trustworthy Artificial Intelligence of Things, or AIoT, systems in adversarial environments. Over the past decade, the AIoT, an emerging paradigm that integrates AI's decision-making capabilities with IoT's data collection and communication infrastructure, has led to innovations that are transforming our everyday life through improved convenience, efficiency, and connectivity. However, as AIoT systems become more prevalent, ensuring their security and privacy becomes increasingly critical. This research addresses these concerns by examining two foundational components of AIoT: IoT network infrastructure and AI algorithms. For IoT security, the work investigates novel attack vectors targeting essential communication protocols and proposes defense mechanisms to enhance system resilience. Chapter 2 introduces a new timing-based network attack that disrupts synchronization in time-sensitive IoT systems, along with a defense mechanism using network redundancy. Chapter 3 presents a blockchain-based spectrum sharing system designed to detect and deter malicious participants, ensuring transparent and efficient use of wireless spectrum resources. For AI security, the first focus is on federated learning, or FL, a distributed machine learning framework widely adopted in decentralized AIoT environments. Chapter 4 demonstrates a targeted attack on medical FL systems, successfully reconstructing sensitive information such as COVID-19 chest X-rays, brain tumor MRIs, and clinical text records. Chapter 5 describes Scale-MIA, a model inversion attack that reveals private training data from shared model updates, undermining the privacy guarantees of FL systems. Then we investigate the security of the emerging generative AI technology. Chapter 6 introduces our proposed adversarial attack against the multimodal diffusion models. Our attack can mislead the diffusion model from generating any attacker-chosen content, including NSFW images. Overall, this research aims to deepen the understanding of security and privacy risks in AIoT systems and to provide practical solutions for mitigating those risks.en
dc.description.degreeDoctor of Philosophyen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:44433en
dc.identifier.urihttps://hdl.handle.net/10919/137497en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsIn Copyrighten
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.subjectSecurity and Privacyen
dc.subjectMachine Learningen
dc.subjectInternet of Thingsen
dc.titleBuilding Trustworthy Artificial Intelligence of Things Systems in Adversarial Environmentsen
dc.typeDissertationen
thesis.degree.disciplineComputer Science & Applicationsen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.leveldoctoralen
thesis.degree.nameDoctor of Philosophyen

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