Abstract
The growing use of indoor localization systems (ILS) in essential applications, including healthcare, smart buildings, and logistics, has created serious security and privacy concerns. This paper thoroughly analyzes the existing security and privacy concerns in ILS, emphasizing risks such as spoofing, signal jamming, and adversarial attacks. We explore defense strategies, such as federated learning, adversarial machine learning, and cryptographic protocols, emphasizing their efficacy and constraints. The study examines the trade-offs among privacy, accuracy, and efficiency in ILS while tackling significant difficulties such as non-Independent and Identically Distributed (non-IID) data, energy efficiency, and scalability in practical applications. This review provides a comprehensive overview of the state of the art in protecting ILS against growing adversarial threats by integrating major trends and approaches from the last five years. This survey paper will help researchers and industry professionals gain a deeper understanding of privacy and security concerns in ILS.