157 research outputs found
Secured and Cooperative Publish/Subscribe Scheme in Autonomous Vehicular Networks
In order to save computing power yet enhance safety, there is a strong
intention for autonomous vehicles (AVs) in future to drive collaboratively by
sharing sensory data and computing results among neighbors. However, the
intense collaborative computing and data transmissions among unknown others
will inevitably introduce severe security concerns. Aiming at addressing
security concerns in future AVs, in this paper, we develop SPAD, a secured
framework to forbid free-riders and {promote trustworthy data dissemination} in
collaborative autonomous driving. Specifically, we first introduce a
publish/subscribe framework for inter-vehicle data transmissions{. To defend
against free-riding attacks,} we formulate the interactions between publisher
AVs and subscriber AVs as a vehicular publish/subscribe game, {and incentivize
AVs to deliver high-quality data by analyzing the Stackelberg equilibrium of
the game. We also design a reputation evaluation mechanism in the game} to
identify malicious AVs {in disseminating fake information}. {Furthermore, for}
lack of sufficient knowledge on parameters of {the} network model and user cost
model {in dynamic game scenarios}, a two-tier reinforcement learning based
algorithm with hotbooting is developed to obtain the optimal {strategies of
subscriber AVs and publisher AVs with free-rider prevention}. Extensive
simulations are conducted, and the results validate that our SPAD can
effectively {prevent free-riders and enhance the dependability of disseminated
contents,} compared with conventional schemes
Collaborative Honeypot Defense in UAV Networks: A Learning-Based Game Approach
The proliferation of unmanned aerial vehicles (UAVs) opens up new
opportunities for on-demand service provisioning anywhere and anytime, but also
exposes UAVs to a variety of cyber threats. Low/medium interaction honeypots
offer a promising lightweight defense for actively protecting mobile Internet
of things, particularly UAV networks. While previous research has primarily
focused on honeypot system design and attack pattern recognition, the incentive
issue for motivating UAV's participation (e.g., sharing trapped attack data in
honeypots) to collaboratively resist distributed and sophisticated attacks
remains unexplored. This paper proposes a novel game-theoretical collaborative
defense approach to address optimal, fair, and feasible incentive design, in
the presence of network dynamics and UAVs' multi-dimensional private
information (e.g., valid defense data (VDD) volume, communication delay, and
UAV cost). Specifically, we first develop a honeypot game between UAVs and the
network operator under both partial and complete information asymmetry
scenarios. The optimal VDD-reward contract design problem with partial
information asymmetry is then solved using a contract-theoretic approach that
ensures budget feasibility, truthfulness, fairness, and computational
efficiency. In addition, under complete information asymmetry, we devise a
distributed reinforcement learning algorithm to dynamically design optimal
contracts for distinct types of UAVs in the time-varying UAV network. Extensive
simulations demonstrate that the proposed scheme can motivate UAV's cooperation
in VDD sharing and improve defensive effectiveness, compared with conventional
schemes.Comment: Accepted Aug. 28, 2023 by IEEE Transactions on Information Forensics
& Security. arXiv admin note: text overlap with arXiv:2209.1381
RetouchingFFHQ: A Large-scale Dataset for Fine-grained Face Retouching Detection
The widespread use of face retouching filters on short-video platforms has
raised concerns about the authenticity of digital appearances and the impact of
deceptive advertising. To address these issues, there is a pressing need to
develop advanced face retouching techniques. However, the lack of large-scale
and fine-grained face retouching datasets has been a major obstacle to progress
in this field. In this paper, we introduce RetouchingFFHQ, a large-scale and
fine-grained face retouching dataset that contains over half a million
conditionally-retouched images. RetouchingFFHQ stands out from previous
datasets due to its large scale, high quality, fine-grainedness, and
customization. By including four typical types of face retouching operations
and different retouching levels, we extend the binary face retouching detection
into a fine-grained, multi-retouching type, and multi-retouching level
estimation problem. Additionally, we propose a Multi-granularity Attention
Module (MAM) as a plugin for CNN backbones for enhanced cross-scale
representation learning. Extensive experiments using different baselines as
well as our proposed method on RetouchingFFHQ show decent performance on face
retouching detection. With the proposed new dataset, we believe there is great
potential for future work to tackle the challenging problem of real-world
fine-grained face retouching detection.Comment: Under revie
Game Theoretic Resource Allocation in Media Cloud With Mobile Social Users
Due to the rapid increases in both the population of mobile social users and the demand for quality of experience (QoE), providing mobile social users with satisfied multimedia services has become an important issue. Media cloud has been shown to be an efficient solution to resolve the above issue, by allowing mobile social users to connect to it through a group of distributed brokers. However, as the resource in media cloud is limited, how to allocate resource among media cloud, brokers, and mobile social users becomes a new challenge. Therefore, in this paper, we propose a game theoretic resource allocation scheme for media cloud to allocate resource to mobile social users though brokers. First, a framework of resource allocation among media cloud, brokers, and mobile social users is presented. Media cloud can dynamically determine the price of the resource and allocate its resource to brokers. A mobile social user can select his broker to connect to the media cloud by adjusting the strategy to achieve the maximum revenue, based on the social features in the community. Next, we formulate the interactions among media cloud, brokers, and mobile social users by a four-stage Stackelberg game. In addition, through the backward induction method, we propose an iterative algorithm to implement the proposed scheme and obtain the Stackelberg equilibrium. Finally, simulation results show that each player in the game can obtain the optimal strategy where the Stackelberg equilibrium exists stably
Language Agents for Detecting Implicit Stereotypes in Text-to-image Models at Scale
The recent surge in the research of diffusion models has accelerated the
adoption of text-to-image models in various Artificial Intelligence Generated
Content (AIGC) commercial products. While these exceptional AIGC products are
gaining increasing recognition and sparking enthusiasm among consumers, the
questions regarding whether, when, and how these models might unintentionally
reinforce existing societal stereotypes remain largely unaddressed. Motivated
by recent advancements in language agents, here we introduce a novel agent
architecture tailored for stereotype detection in text-to-image models. This
versatile agent architecture is capable of accommodating free-form detection
tasks and can autonomously invoke various tools to facilitate the entire
process, from generating corresponding instructions and images, to detecting
stereotypes. We build the stereotype-relevant benchmark based on multiple
open-text datasets, and apply this architecture to commercial products and
popular open source text-to-image models. We find that these models often
display serious stereotypes when it comes to certain prompts about personal
characteristics, social cultural context and crime-related aspects. In summary,
these empirical findings underscore the pervasive existence of stereotypes
across social dimensions, including gender, race, and religion, which not only
validate the effectiveness of our proposed approach, but also emphasize the
critical necessity of addressing potential ethical risks in the burgeoning
realm of AIGC. As AIGC continues its rapid expansion trajectory, with new
models and plugins emerging daily in staggering numbers, the challenge lies in
the timely detection and mitigation of potential biases within these models
The relationship between triglyceride-glucose index and albuminuria in United States adults
PurposeTriglyceride-glucose (TyG) index is a simple and reliable indicator of metabolic dysfunction. We aimed to investigate a possible relationship between TyG index and albuminuria in the United States adult population.MethodsThis cross-sectional study was conducted among adults with complete TyG index and urinary albumin/urinary creatinine (UACR) from 2011-2018 National Health and Nutrition Examination Survey (NHANES). The independent relationship between TyG index and albuminuria (UACR>30mg/g) was evaluated. TyG index was compared with insulin resistance represented by homeostatic model assessment of insulin resistance (HOMA-IR), and metabolic syndrome. Subgroup analysis was also performed.ResultsA total of 9872 participants were included in this study, and the average TyG index was 8.53 ± 0.01. The proportion of albuminuria gradually increased with the increase of TyG index quartile interval. Elevated TyG index was independently associated with albuminuria, and this association persisted after additional adjustments for HOMA-IR or dichotomous metabolic syndrome. The area under the ROC curve (AUC) of TyG index was larger than that of log (HOMA-IR). Subgroup analysis suggested that the relationship between TyG index and albuminuria is of greater concern in age<60, overweight/obese, diabetic, and metabolic syndrome patients.ConclusionThe TyG index may be a potential epidemiological tool to quantify the role of metabolic dysfunction, rather than just insulin resistance, in albuminuria in the United States adult population. Further large-scale prospective studies are needed to confirm our findings
Simulation study on the optical processes at deep-sea neutrino telescope sites
The performance of a large-scale water Cherenkov neutrino telescope relies
heavily on the transparency of the surrounding water, quantified by its level
of light absorption and scattering. A pathfinder experiment was carried out to
measure the optical properties of deep seawater in South China Sea with
light-emitting diodes (LEDs) as light sources, photon multiplier tubes (PMTs)
and cameras as photon sensors. Here, we present an optical simulation program
employing the Geant4 toolkit to understand the absorption and scattering
processes in the deep seawater, which helps to extract the underlying optical
properties from the experimental data. The simulation results are compared with
the experimental data and show good agreements. We also verify the analysis
methods that utilize various observables of the PMTs and the cameras with this
simulation program, which can be easily adapted by other neutrino telescope
pathfinder experiments and future large-scale detectors.Comment: 27 pages, 11 figure
Lighting-Up Tumor for Assisting Resection via Spraying NIR Fluorescent Probe of γ-Glutamyltranspeptidas
For the precision resection, development of near-infrared (NIR) fluorescent probe based on specificity identification tumor-associated enzyme for lighting-up the tumor area, is urgent in the field of diagnosis and treatment. Overexpression of γ-glutamyltranspeptidase, one of the cell-membrane enzymes, known as a biomarker is concerned with the growth and progression of ovarian, liver, colon and breast cancer compared to normal tissue. In this work, a remarkable enzyme-activated NIR fluorescent probe NIR-SN-GGT was proposed and synthesized including two moieties: a NIR dicyanoisophorone core as signal reporter unit; γ-glutamyl group as the specificity identification site. In the presence of γ-GGT, probe NIR-SN-GGT was transformed into NIR-SN-NH2, the recovery of Intramolecular Charge Transfer (ICT), liberating the NIR fluorescence signal, which was firstly employed to distinguish tumor tissue and normal tissues via simple “spraying” manner, greatly promoting the possibility of precise excision. Furthermore, combined with magnetic resonance imaging by T2 weight mode, tumor transplanted BABL/c mice could be also lit up for first time by NIR fluorescence probe having a large stokes, which demonstrated that probe NIR-SN-GGT would be a useful tool for assisting surgeon to diagnose and remove tumor in clinical practice
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