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SoK: Security Evaluation of Wi-Fi CSI Biometrics: Attacks, Metrics, and Open Challenges

Braga, Gioliano de Oliveira, Rocha, Pedro Henrique dos Santos, Paixão, Rafael Pimenta de Mattos, da Costa, Giovani Hoff, Morais, Gustavo Cavalcanti, Júnior, Lourenço Alves Pereira

arXiv.org Artificial Intelligence

Wi-Fi Channel State Information (CSI) has been repeatedly proposed as a biometric modality, often with reports of high accuracy and operational feasibility. However, the field lacks a consolidated understanding of its security properties, adversarial resilience, and methodological consistency. This Systematization of Knowledge (SoK) examines CSI-based biometric authentication through a security lens, analyzing how existing works diverge in sensing infrastructure, signal representations, feature pipelines, learning models, and evaluation methodologies. Our synthesis reveals systemic inconsistencies: reliance on aggregate accuracy metrics, limited reporting of FAR/FRR/EER, absence of per-user risk analysis, and scarce consideration of threat models or adversarial feasibility. To this end, we construct a unified evaluation framework to expose these issues empirically and demonstrate how security-relevant metrics such as per-class EER, Frequency Count of Scores (FCS), and the Gini Coefficient uncover risk concentration that remains hidden under traditional reporting practices. The resulting analysis highlights concrete attack surfaces--including replay, geometric mimicry, and environmental perturbation--and shows how methodological choices materially influence vulnerability profiles. Based on these findings, we articulate the security boundaries of current CSI biometrics and provide guidelines for rigorous evaluation, reproducible experimentation, and future research directions. This SoK offers the security community a structured, evidence-driven reassessment of Wi-Fi CSI biometrics and their suitability as an authentication primitive.


Distributed satellite information networks: Architecture, enabling technologies, and trends

Zhang, Qinyu, Xu, Liang, Huang, Jianhao, Yang, Tao, Jiao, Jian, Wang, Ye, Shi, Yao, Zhang, Chiya, Zhang, Xingjian, Zhang, Ke, Gong, Yupeng, Deng, Na, Zhao, Nan, Gao, Zhen, Han, Shujun, Xu, Xiaodong, You, Li, Wang, Dongming, Jiang, Shan, Zhao, Dixian, Zhang, Nan, Hu, Liujun, He, Xiongwen, Li, Yonghui, Gao, Xiqi, You, Xiaohu

arXiv.org Artificial Intelligence

Driven by the vision of ubiquitous connectivity and wireless intelligence, the evolution of ultra-dense constellation-based satellite-integrated Internet is underway, now taking preliminary shape. Nevertheless, the entrenched institutional silos and limited, nonrenewable heterogeneous network resources leave current satellite systems struggling to accommodate the escalating demands of next-generation intelligent applications. In this context, the distributed satellite information networks (DSIN), exemplified by the cohesive clustered satellites system, have emerged as an innovative architecture, bridging information gaps across diverse satellite systems, such as communication, navigation, and remote sensing, and establishing a unified, open information network paradigm to support resilient space information services. This survey first provides a profound discussion about innovative network architectures of DSIN, encompassing distributed regenerative satellite network architecture, distributed satellite computing network architecture, and reconfigurable satellite formation flying, to enable flexible and scalable communication, computing and control. The DSIN faces challenges from network heterogeneity, unpredictable channel dynamics, sparse resources, and decentralized collaboration frameworks. To address these issues, a series of enabling technologies is identified, including channel modeling and estimation, cloud-native distributed MIMO cooperation, grant-free massive access, network routing, and the proper combination of all these diversity techniques. Furthermore, to heighten the overall resource efficiency, the cross-layer optimization techniques are further developed to meet upper-layer deterministic, adaptive and secure information services requirements. In addition, emerging research directions and new opportunities are highlighted on the way to achieving the DSIN vision.


Multi-Modal Transformer and Reinforcement Learning-based Beam Management

Ghassemi, Mohammad, Zhang, Han, Afana, Ali, Sediq, Akram Bin, Erol-Kantarci, Melike

arXiv.org Artificial Intelligence

Beam management is an important technique to improve signal strength and reduce interference in wireless communication systems. Recently, there has been increasing interest in using diverse sensing modalities for beam management. However, it remains a big challenge to process multi-modal data efficiently and extract useful information. On the other hand, the recently emerging multi-modal transformer (MMT) is a promising technique that can process multi-modal data by capturing long-range dependencies. While MMT is highly effective in handling multi-modal data and providing robust beam management, integrating reinforcement learning (RL) further enhances their adaptability in dynamic environments. In this work, we propose a two-step beam management method by combining MMT with RL for dynamic beam index prediction. In the first step, we divide available beam indices into several groups and leverage MMT to process diverse data modalities to predict the optimal beam group. In the second step, we employ RL for fast beam decision-making within each group, which in return maximizes throughput. Our proposed framework is tested on a 6G dataset. In this testing scenario, it achieves higher beam prediction accuracy and system throughput compared to both the MMT-only based method and the RL-only based method.


Optimizing Vehicular Networks with Variational Quantum Circuits-based Reinforcement Learning

Yan, Zijiang, Tanikella, Ramsundar, Tabassum, Hina

arXiv.org Artificial Intelligence

In vehicular networks (VNets), ensuring both road safety and dependable network connectivity is of utmost importance. Achieving this necessitates the creation of resilient and efficient decision-making policies that prioritize multiple objectives. In this paper, we develop a Variational Quantum Circuit (VQC)-based multi-objective reinforcement learning (MORL) framework to characterize efficient network selection and autonomous driving policies in a vehicular network (VNet). Numerical results showcase notable enhancements in both convergence rates and rewards when compared to conventional deep-Q networks (DQNs), validating the efficacy of the VQC-MORL solution.


Resource Allocation for Semantic Communication under Physical-layer Security

Li, Yang, Zhou, Xinyu, Zhao, Jun

arXiv.org Artificial Intelligence

Semantic communication is deemed as a revolution of Shannon's paradigm in the six-generation (6G) wireless networks. It aims at transmitting the extracted information rather than the original data, which receivers will try to recover. Intuitively, the larger extracted information, the longer latency of semantic communication will be. Besides, larger extracted information will result in more accurate reconstructed information, thereby causing a higher utility of the semantic communication system. Shorter latency and higher utility are desirable objectives for the system, so there will be a trade-off between utility and latency. This paper proposes a joint optimization algorithm for total latency and utility. Moreover, security is essential for the semantic communication system. We incorporate the secrecy rate, a physical-layer security method, into the optimization problem. The secrecy rate is the communication rate at which no information is disclosed to an eavesdropper. Experimental results demonstrate that the proposed algorithm obtains the best joint optimization performance compared to the baselines.


UAV-assisted Semantic Communication with Hybrid Action Reinforcement Learning

Si, Peiyuan, Zhao, Jun, Lam, Kwok-Yan, Yang, Qing

arXiv.org Artificial Intelligence

To keep as FFHQ dataset (image size 1024 1024). Nouveau VAE the Metaverse up-to-date, uplink data collection for object (NVAE) proposed by Vahdat et al. [10] further improved the modeling and updating are essential for VR applications. The performance of VAE and achieved satisfying results on various efficiency of data transmission has a direct impact on user high-quality image datasets. Li et al. [11] found that devices experience once there are demands to update the VR background, can select different scales of sub-models that requires less which is different from the traditional VR applications computational energy at the cost of reconstruction quality, and whose contents are not frequently updated. The 3-D modeling formulated the relationship between them. of remote area VR backgrounds including buildings (indoor and outdoor), roads, and natural environments are based on To cope with the challenge of wireless network coverage numerous photos taken on location, e.g., more than 1500 in remote areas, UAV-assisted data collection is considered as images with the average size of 10Mb are required to model a practical solution to set up flexible wireless networks for an area with historic buildings [?]. The data collection with heterogeneous user requirements [?], especially the research such large size poses requirements for both high transmission on UAV-enabled communication resource allocation, trajectory efficiency and wide network coverage.


Multiagent Reinforcement Learning with an Attention Mechanism for Improving Energy Efficiency in LoRa Networks

Zhang, Xu, Lin, Ziqi, Gong, Shimin, Gu, Bo, Niyato, Dusit

arXiv.org Artificial Intelligence

Long Range (LoRa) wireless technology, characterized by low power consumption and a long communication range, is regarded as one of the enabling technologies for the Industrial Internet of Things (IIoT). However, as the network scale increases, the energy efficiency (EE) of LoRa networks decreases sharply due to severe packet collisions. To address this issue, it is essential to appropriately assign transmission parameters such as the spreading factor and transmission power for each end device (ED). However, due to the sporadic traffic and low duty cycle of LoRa networks, evaluating the system EE performance under different parameter settings is time-consuming. Therefore, we first formulate an analytical model to calculate the system EE. On this basis, we propose a transmission parameter allocation algorithm based on multiagent reinforcement learning (MALoRa) with the aim of maximizing the system EE of LoRa networks. Notably, MALoRa employs an attention mechanism to guide each ED to better learn how much ''attention'' should be given to the parameter assignments for relevant EDs when seeking to improve the system EE. Simulation results demonstrate that MALoRa significantly improves the system EE compared with baseline algorithms with an acceptable degradation in packet delivery rate (PDR).


Heterogeneous 360 Degree Videos in Metaverse: Differentiated Reinforcement Learning Approaches

Yu, Wenhan, Zhao, Jun

arXiv.org Artificial Intelligence

Advanced video technologies are driving the development of the futuristic Metaverse, which aims to connect users from anywhere and anytime. As such, the use cases for users will be much more diverse, leading to a mix of 360-degree videos with two types: non-VR and VR 360-degree videos. This paper presents a novel Quality of Service model for heterogeneous 360-degree videos with different requirements for frame rates and cybersickness. We propose a frame-slotted structure and conduct frame-wise optimization using self-designed differentiated deep reinforcement learning algorithms. Specifically, we design two structures, Separate Input Differentiated Output (SIDO) and Merged Input Differentiated Output (MIDO), for this heterogeneous scenario. We also conduct comprehensive experiments to demonstrate their effectiveness.


Communication Load Balancing via Efficient Inverse Reinforcement Learning

Konar, Abhisek, Wu, Di, Xu, Yi Tian, Jang, Seowoo, Liu, Steve, Dudek, Gregory

arXiv.org Artificial Intelligence

Communication load balancing aims to balance the load between different available resources, and thus improve the quality of service for network systems. After formulating the load balancing (LB) as a Markov decision process problem, reinforcement learning (RL) has recently proven effective in addressing the LB problem. To leverage the benefits of classical RL for load balancing, however, we need an explicit reward definition. Engineering this reward function is challenging, because it involves the need for expert knowledge and there lacks a general consensus on the form of an optimal reward function. In this work, we tackle the communication load balancing problem from an inverse reinforcement learning (IRL) approach. To the best of our knowledge, this is the first time IRL has been successfully applied in the field of communication load balancing. Specifically, first, we infer a reward function from a set of demonstrations, and then learn a reinforcement learning load balancing policy with the inferred reward function. Compared to classical RL-based solution, the proposed solution can be more general and more suitable for real-world scenarios. Experimental evaluations implemented on different simulated traffic scenarios have shown our method to be effective and better than other baselines by a considerable margin.