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Panther: Practical Secure Two-Party Neural Network Inference 豹:实用的安全两方神经网络推理
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2025-01-03 DOI: 10.1109/TIFS.2025.3526063
Jun Feng;Yefan Wu;Hong Sun;Shunli Zhang;Debin Liu
Secure two-party neural network (2P-NN) inference allows the server with a neural network model and the client with inputs to perform neural network inference without revealing their private data to each other. However, the state-of-the-art 2P-NN inference still suffers from large computation and communication overhead especially when used in ImageNet-scale deep neural networks. In this work, we design and build Panther, a lightweight and efficient secure 2P-NN inference system, which has great efficiency in evaluating 2P-NN inference while safeguarding the privacy of the server and the client. At the core of Panther, we have new protocols for 2P-NN inference. Firstly, we propose a customized homomorphic encryption scheme to reduce burdensome polynomial multiplications in the homomorphic encryption arithmetic circuit of linear protocols. Secondly, we present a more efficient and communication concise design for the millionaires’ protocol, which enables non-linear protocols with less communication cost. Our evaluations over three sought-after varying-scale deep neural networks show that Panther outperforms the state-of-the-art 2P-NN inference systems in terms of end-to-end runtime and communication overhead. Panther achieves state-of-the-art performance with up to $24.95times $ speedup for linear protocols and $6.40 times $ speedup for non-linear protocols in WAN when compared to prior arts.
安全的两方神经网络(2P-NN)推理允许具有神经网络模型的服务器和具有输入的客户端在不泄露彼此私有数据的情况下执行神经网络推理。然而,最先进的2P-NN推理仍然存在大量的计算和通信开销,特别是在imagenet规模的深度神经网络中使用时。在这项工作中,我们设计并构建了一个轻量级,高效的安全2P-NN推理系统Panther,该系统在评估2P-NN推理方面具有很高的效率,同时保护了服务器和客户端的隐私。在Panther的核心,我们有新的p2p - nn推理协议。首先,我们提出了一种自定义的同态加密方案,以减少线性协议同态加密算法电路中繁琐的多项式乘法。其次,我们提出了一种更高效和通信简洁的百万富翁协议设计,使非线性协议具有更低的通信成本。我们对三个广受欢迎的不同规模深度神经网络的评估表明,Panther在端到端运行时间和通信开销方面优于最先进的2P-NN推理系统。与现有技术相比,Panther实现了最先进的性能,线性协议加速高达24.95美元,WAN中的非线性协议加速高达6.40美元。
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引用次数: 0
Privacy-Preserving Coded Schemes for Multi-Server Federated Learning with Straggling Links 离散链路多服务器联邦学习的隐私保护编码方案
IF 6.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-30 DOI: 10.1109/tifs.2024.3524160
Kai Liang, Songze Li, Ming Ding, Feng Tian, Youlong Wu
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引用次数: 0
Enhancing Specific Emitter Identification: A Semi-Supervised Approach With Deep Cloud and Broad Edge Integration 增强特定发射器识别:深云和宽边缘集成的半监督方法
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-30 DOI: 10.1109/TIFS.2024.3524157
Yibin Zhang;Yuchao Liu;Juzhen Wang;Qi Xuan;Yun Lin;Guan Gui
Specific emitter identification (SEI) is crucial in the Internet of Everything (IoE). Over the past decade, deep learning (DL) and broad learning (BL)-enabled SEI technologies have emerged. Both DL- and BL-based SEI methods rely on extensive radio frequency (RF) signal samples and corresponding labels, but labeling unknown signals is a considerable overhead and costly task. Consequently, many researchers have begun exploring semi-supervised learning techniques to address the semi-supervised SEI (SS-SEI) problem with limited labeled RF signals. However, existing SS-SEI solutions often prioritize identification performance, leading to high computational overheads and lacking iterability and scalability. To overcome these challenges, this paper proposes a novel SS-SEI solution, termed deep cloud and broad edge (DCBE). This approach integrates a DL-based SEI method at the cloud server with an updatable BL-based SEI method at the edge node. Initially, several DL-based SEI models are trained using labeled historical data at the cloud server. Meanwhile, an updatable BL-based SEI method is deployed locally on the edge node to identify unlabelled signals. When the DCBE solution is operational, edge nodes capture real-time unlabelled RF signals. The pre-trained DL-based SEI method and the locally BL-based SEI method jointly identify these RF signals. The identification results, along with the new real-time RF signals, are then used to update the weights of the BL-based SEI method at the edge nodes. The DCBE SS-SEI solution is validated using an open-source, large-scale, real-world automatic dependent surveillance-broadcast (ADS-B) dataset. Experimental results demonstrate that the proposed DCBE solution offers significant advantages in terms of SS-SEI performance, reduced computational overhead without GPU dependency, and system robustness in complex environments.
特定发射器识别(SEI)在万物互联(IoE)中至关重要。在过去的十年中,深度学习(DL)和广泛学习(BL)支持的SEI技术已经出现。基于DL和bl的SEI方法都依赖于大量的射频(RF)信号样本和相应的标签,但是标记未知信号是一项相当大的开销和昂贵的任务。因此,许多研究人员已经开始探索半监督学习技术,以解决有限标记射频信号的半监督SEI (SS-SEI)问题。然而,现有的SS-SEI解决方案通常优先考虑识别性能,导致高计算开销,缺乏可迭代性和可伸缩性。为了克服这些挑战,本文提出了一种新的SS-SEI解决方案,称为深云和宽边缘(DCBE)。这种方法将云服务器上基于dl的SEI方法与边缘节点上可更新的基于bl的SEI方法集成在一起。最初,使用云服务器上标记的历史数据训练几个基于dl的SEI模型。同时,在边缘节点局部部署可更新的基于bl的SEI方法来识别未标记的信号。当DCBE解决方案运行时,边缘节点捕获实时未标记的RF信号。基于预训练dl的SEI方法和基于局部bl的SEI方法共同识别这些射频信号。识别结果与新的实时射频信号一起用于更新边缘节点上基于bl的SEI方法的权重。DCBE SS-SEI解决方案使用开源、大规模、真实世界的自动相关监视广播(ADS-B)数据集进行验证。实验结果表明,提出的DCBE解决方案在SS-SEI性能方面具有显著优势,在不依赖GPU的情况下降低了计算开销,并且在复杂环境下具有系统鲁棒性。
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引用次数: 0
Security-Enhanced Data Transmission with Fine-Grained and Flexible Revocation for DTWNs 基于dtwn的细粒度灵活撤销安全增强数据传输
IF 6.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-27 DOI: 10.1109/tifs.2024.3523765
Chenhao Wang, Yang Ming, Hang Liu, Yutong Deng, Yi Zhao, Songnian Zhang
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引用次数: 0
Blockchain-empowered Keyword Searchable Provable Data Possession for Large Similar Data 大型类似数据的区块链授权关键字可搜索可证明的数据占有
IF 6.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-27 DOI: 10.1109/tifs.2024.3516563
Ying Miao, Keke Gai, Jing Yu, Yu’an Tan, Liehuang Zhu, Weizhi Meng
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引用次数: 0
Reconnaissance-Strike Complex: A Network-layer Solution to the Natural Forking in Blockchain 侦察打击综合体:b区块链中自然分叉的网络层解决方案
IF 6.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-27 DOI: 10.1109/tifs.2024.3523767
Anlin Chen, Shengling Wang, Hongwei Shi, Yu Guo, Xiuzhen Cheng
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引用次数: 0
Gradient Inversion of Text-Modal Data in Distributed Learning 分布式学习中文本-模态数据的梯度反演
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-26 DOI: 10.1109/TIFS.2024.3522792
Zipeng Ye;Wenjian Luo;Qi Zhou;Yubo Tang;Zhenqian Zhu;Yuhui Shi;Yan Jia
Gradient inversion attacks (GIAs) pose significant challenges to the privacy-preserving paradigm of distributed learning. These attacks employ carefully designed strategies to reconstruct victim’s private training data from their shared gradients. However, existing work mainly focuses on attacks and defenses for image-modal data, while the study for text-modal data remains scarce. Furthermore, the performance of the limited attack researches on text-modal data is also unsatisfactory, which can be partially attributed to the finer granularity of text data compared to image. To bridge the existing research gap, we propose a high-fidelity attack method tailored for Transformer-based language models (LMs). In our method, we initially reconstruct the label space of the victim’s training data by leveraging the characteristics of the Transformer architecture. After that, we propose a shallow-to-deep paradigm to facilitate gradient matching, which can significantly improve the attack performance. Furthermore, we develop a weighted surrogate loss that resolves the consistent deviation issue present in current attack researches. A substantial number of experiments on Transformer-based LMs (e.g., Bert and GPT) demonstrate that our attack is competitive and significantly outperforms existing methods. In the final part of this paper, we investigate the influence of the inherent position embedding module within the Transformer architecture on attack performance, and based on the analysis results, we propose a countermeasure to alleviate part of the privacy leakage issue in distributed learning.
梯度反转攻击(GIAs)对分布式学习的隐私保护范式提出了重大挑战。这些攻击采用精心设计的策略,从他们共享的梯度重建受害者的私人训练数据。然而,现有的工作主要集中在图像模态数据的攻击和防御方面,而对文本模态数据的研究仍然很少。此外,针对文本-模态数据的有限攻击研究的性能也不尽人意,部分原因是文本数据比图像粒度更细。为了弥补现有的研究差距,我们提出了一种针对基于transformer的语言模型(LMs)量身定制的高保真攻击方法。在我们的方法中,我们最初通过利用Transformer体系结构的特征来重建受害者训练数据的标签空间。然后,我们提出了一种浅到深的模式来促进梯度匹配,可以显著提高攻击性能。此外,我们开发了一种加权代理损失,解决了当前攻击研究中存在的一致性偏差问题。在基于transformer的lm(例如Bert和GPT)上进行的大量实验表明,我们的攻击具有竞争力,并且显著优于现有方法。在本文的最后一部分,我们研究了Transformer架构中固有位置嵌入模块对攻击性能的影响,并根据分析结果提出了缓解分布式学习中部分隐私泄露问题的对策。
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引用次数: 0
Toward Robust Radio Frequency Fingerprint Identification via Adaptive Semantic Augmentation 基于自适应语义增强的鲁棒射频指纹识别
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-25 DOI: 10.1109/TIFS.2024.3522758
Zhenxin Cai;Yu Wang;Guan Gui;Jin Sha
Radio frequency fingerprint identification (RFFI) is regarded as one of the most promising techniques for managing and regulating Internet of Things (IoT) devices. This technology analyzes the unique electromagnetic signals emitted by wireless devices to enable precise identification and authentication. Most existing RFFI methods focus on RF signals collected in specific scenarios. However, in real-world applications, signals are often collected at different times or from varying deployment locations, leading to differences between the training and testing distributions. The study of RFFI methods under these conditions remains underexplored. To address this gap, this paper introduces a cross-domain RFFI framework centered on adaptive semantic augmentation (ASA). The framework integrates a computationally efficient multi-resolution spectrogram decomposition strategy with a feature-sensitive multi-scale network. The ASA method enhances RFFI accuracy in cross-domain settings by linearly interpolating between two distinct semantic features to create new semantics for further identification. The proposed approach leverages two-dimensional discrete wavelet transform (2D-DWT) to decompose the raw spectrogram into four sub-bands, followed by a multi-scale network to extract critical semantic features for the ASA method. Simulation results show that the proposed ASA method significantly improves Unmanned Aerial Vehicle (UAV) identification performance, achieving accuracies of 93.05% and 98.90% on two different cross-domain datasets, respectively, outperforming existing data augmentation (DA) methods. Furthermore, generalizability validation demonstrates that the proposed method performs outstandingly across other Internet of Things (IoT) applications.
射频指纹识别(RFFI)被认为是管理和调节物联网(IoT)设备最有前途的技术之一。该技术分析无线设备发出的独特电磁信号,以实现精确的识别和认证。大多数现有的RFFI方法侧重于在特定场景中收集的射频信号。然而,在真实的应用程序中,信号通常在不同的时间或从不同的部署位置收集,从而导致训练分布和测试分布之间的差异。在这些条件下,RFFI方法的研究仍未得到充分探索。为了解决这一问题,本文引入了一个以自适应语义增强(ASA)为中心的跨域RFFI框架。该框架将计算效率高的多分辨率谱图分解策略与特征敏感的多尺度网络相结合。ASA方法通过在两个不同的语义特征之间进行线性插值来创建新的语义以进一步识别,从而提高了跨域设置下RFFI的准确性。该方法利用二维离散小波变换(2D-DWT)将原始频谱图分解为四个子带,然后利用多尺度网络提取ASA方法的关键语义特征。仿真结果表明,该方法显著提高了无人机(UAV)识别性能,在两种不同的跨域数据集上分别达到93.05%和98.90%的准确率,优于现有的数据增强(DA)方法。此外,通用性验证表明,所提出的方法在其他物联网(IoT)应用中表现出色。
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引用次数: 0
Data-Importance-Aware Attack Strategy Design and Secure Control Countermeasure 数据重要性感知攻击策略设计与安全控制对策
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-25 DOI: 10.1109/TIFS.2024.3522770
Jiancun Wu;Engang Tian;Chen Peng;Zhiru Cao
This paper is concerned with the security issues related to integrated attack-defense strategy for a category of multi-sensor networked control systems with state saturation constraints. In general, existing denial-of-service (DoS) attack models typically conduct indiscriminate attacks on data packets, disregarding the significance of the attacked data packets to the system. Note that the measurement data from different sensor nodes possesses varying levels of importance. In light of this, we first propose a novel form of attack from the perspective of attack design, known as a data-importance-aware attack. The importance of data refers to the quantitative impact of the measured values at each sensor node on the stable and safe operation of the entire system. As such, the proposed attack has the awareness to launch attacks against critical sensor nodes, rendering data unable to be transmitted. Then, an attack-node-dependent security controller is devised from the defender’s perspective against the constructed attack, which can effectively resist the impact of attacks and stabilize the system. By employing the Lyapunov functional method, sufficient conditions are derived to ensure the asymptotic stability of the closed-loop system. Finally, the reliability and effectiveness of the node importance-aware attack strategy and control countermeasure are validated by numerical simulation.
研究一类具有状态饱和约束的多传感器网络控制系统集成攻防策略的安全问题。一般来说,现有的DoS (denial-of-service)攻击模型通常对数据包进行不加区分的攻击,而忽略了被攻击数据包对系统的重要性。请注意,来自不同传感器节点的测量数据具有不同的重要程度。鉴于此,我们首先从攻击设计的角度提出了一种新的攻击形式,称为数据重要性感知攻击。数据的重要性是指每个传感器节点的测量值对整个系统稳定安全运行的定量影响。因此,所提出的攻击具有对关键传感器节点发起攻击的意识,导致数据无法传输。然后,从防御者的角度出发,针对构造的攻击设计了一个依赖于攻击节点的安全控制器,可以有效抵御攻击的影响,使系统保持稳定。利用Lyapunov泛函方法,得到了保证闭环系统渐近稳定的充分条件。最后,通过数值仿真验证了节点重要性感知攻击策略和控制对策的可靠性和有效性。
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引用次数: 0
Cross-Optical Property Image Translation for Face Anti-Spoofing: From Visible to Polarization 人脸抗欺骗的交叉光学特性图像转换:从可见到偏振
IF 6.3 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Pub Date : 2024-12-25 DOI: 10.1109/TIFS.2024.3521323
Yu Tian;Kunbo Zhang;Yalin Huang;Leyuan Wang;Yue Liu;Zhenan Sun
Despite the development of spectral sensors and spectral data-driven learning methods which have led to significant advances in face anti-spoofing (FAS), the singular dimensionality of spectral information often results in poor robustness and weak generalization. Polarization, another fundamental property of light, can reveal intrinsic differences between genuine and fake faces with advantaged performance in precision, robustness, and generalizability. In this paper, we propose a facial image translation method from visible light (VIS) to polarization (VPT), capable of generating valuable polarimetric optical characteristics for facial presentation attack detection using VIS spectrum information input only. Specifically, the VPT method adopts a multi-stream network structure, comprising a main network and two branch networks, to translate VIS images into degree of polarization (DoP) images and Stokes polarization parameters ${S}_{1}$ and ${S}_{2}$ . To further improve image translation quality, we introduce a frequency-domain consistency loss as a complement to the existing spatial losses to narrow the gap in the frequency domain. The physical mapping relations for the DoP and Stokes parameters are employed, and the Stokes loss is designed to ensure that the generated polarization modalities conform to objective physical laws. Extensive experiments on the CASIA-Polar and CASIA-SURF datasets demonstrate the superiority of VPT over other baseline methods in terms of polarization image quality and its remarkable performance in the FAS task. This work leverages the inherent physical advantages of polarization information in material discrimination tasks while addressing hardware limitations in polarization image collection, proposing a novel solution for face recognition system security control.
尽管光谱传感器和光谱数据驱动学习方法的发展在人脸抗欺骗(FAS)方面取得了重大进展,但光谱信息的奇异性往往导致鲁棒性差和泛化能力弱。偏振是光的另一个基本特性,它可以揭示真假人脸的内在差异,具有精度、鲁棒性和泛化性等优点。在本文中,我们提出了一种从可见光(VIS)到偏振(VPT)的面部图像转换方法,能够仅使用VIS光谱信息输入生成有价值的偏振光学特征,用于面部呈现攻击检测。具体来说,VPT方法采用由一个主网络和两个分支网络组成的多流网络结构,将VIS图像转换为偏振度(DoP)图像和Stokes偏振参数${S}_{1}$和${S}_{2}$。为了进一步提高图像平移质量,我们引入了频域一致性损失作为现有空间损失的补充,以缩小频域的差距。利用DoP和Stokes参数的物理映射关系,设计Stokes损耗以保证产生的偏振模态符合客观物理规律。在CASIA-Polar和CASIA-SURF数据集上的大量实验表明,VPT在偏振图像质量方面优于其他基线方法,并且在FAS任务中表现出色。本研究利用极化信息在物质识别任务中固有的物理优势,同时解决极化图像采集的硬件限制,提出了一种新的人脸识别系统安全控制解决方案。
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引用次数: 0
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IEEE Transactions on Information Forensics and Security
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