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Variational Anonymous Quantum Sensing 变异无名量子传感
Muhammad Shohibul Ulum;Uman Khalid;Jason William Setiawan;Trung Q. Duong;Moe Z. Win;Hyundong Shin
QSNs (QSNs) incorporate quantum sensing and quantum communication to achieve Heisenberg precision and unconditional security by leveraging quantum properties such as superposition and entanglement. However, the QSNs deploying noisy intermediate-scale quantum (NISQ) devices face near-term practical challenges. In this paper, we employ variational quantum sensing (VQS) to optimize sensing configurations in noisy environments for the physical quantity of interest, e.g., magnetic-field sensing for navigation, localization, or detection. The VQS algorithm is variationally and evolutionarily optimized using a genetic algorithm for tailoring a variational or parameterized quantum circuit (PQC) structure that effectively mitigates quantum noise effects. This genetic VQS algorithm designs the PQC structure possessing the capability to create a variational probe state that metrologically outperforms the maximally entangled or product quantum state under bit-flip, dephasing, and amplitude-damping quantum noise for both single-parameter and multiparameter NISQ sensing, specifically as quantified by the quantum Fisher information. Furthermore, the quantum anonymous broadcast (QAB) shares the sensing information in the VQS network, ensuring anonymity and untraceability of sensing data. The broadcast bit error probability (BEP) is further analyzed for the QAB protocol under quantum noise, showing its robustness—i.e., error-free resilience—against bit-flip noise as well as the low-noise BEP behavior. This work provides a scalable framework for integrated quantum anonymous sensing and communication, particularly in a variational and untraceable manner.
量子安全网(QSN)结合了量子传感和量子通信,利用叠加和纠缠等量子特性实现海森堡精度和无条件安全。然而,部署噪声中量子(NISQ)器件的 QSNs 面临着近期的实际挑战。在本文中,我们采用变异量子传感(VQS)来优化噪声环境中相关物理量的传感配置,例如用于导航、定位或探测的磁场传感。VQS 算法采用遗传算法进行变异和进化优化,以定制可变或参数化量子电路(PQC)结构,从而有效缓解量子噪声效应。这种遗传 VQS 算法设计的 PQC 结构具有创建变异探测态的能力,在比特翻转、去相和振幅阻尼量子噪声条件下,该探测态的计量性能优于最大纠缠量子态或乘积量子态,适用于单参数和多参数 NISQ 传感,特别是通过量子费雪信息进行量化。此外,量子匿名广播(QAB)在 VQS 网络中共享传感信息,确保了传感数据的匿名性和不可追踪性。我们进一步分析了 QAB 协议在量子噪声下的广播比特错误概率(BEP),显示了它对比特翻转噪声以及低噪声 BEP 行为的鲁棒性(即无差错复原力)。这项工作为集成量子匿名传感和通信提供了一个可扩展的框架,特别是以可变和不可追踪的方式。
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引用次数: 0
Multiuser Association and Localization Over Doubly Dispersive Multipath Channels for Integrated Sensing and Communications 用于综合传感与通信的双分散多径信道上的多用户关联与定位
Haiying Zhang;Shuyi Chen;Weixiao Meng;Jinhong Yuan;Cheng Li
Supporting multiuser communication and localization is a typical scenario in Integrated sensing and communications (ISAC). However, the problem of multi-echo induced by multipath and multiuser makes it hard to determine the relationship between user equipments (UEs) and these echoes. Thus, applying traditional estimation algorithms at the radar receiver inevitably leads to weak communication and localization performances due to the mismatch between echoes and UEs. In this paper, aiming to achieve multiuser association and localization under doubly dispersive multipath channels, we construct an ISAC unified waveform based on the orthogonal delay-Doppler division multiplexing (ODDM) principle and develop an off-grid cluster sparse Bayesian learning estimation (OG-CSBL) algorithm. Particularly, we focus on the mono-static setup, where the base station (BS) expects to communicate with multiuser while sensing their locations. We utilize the high-resolution range profile (HRRP) to characterize the physical features of UEs and establish associations with their echoes by exploiting the inherent cluster structure. To estimate parameters, we design a hybrid Dirichlet process (DP)-Gaussian hierarchical prior distribution and propose a variational Bayesian inference (VBI)-EM strategy. Additionally, we develop a backtrack echo identification scheme to facilitate precise UE localization. Simulation results demonstrate that the proposed scheme achieves superior NMSE performance, offers meter-level localization accuracy, and obtains better BER performance in the complex multiuser coexistence scenario.
支持多用户通信和定位是综合传感与通信(ISAC)的典型应用场景。然而,由于多径和多用户引起的多回波问题,很难确定用户设备(UE)与这些回波之间的关系。因此,在雷达接收机上应用传统的估计算法,不可避免地会因回波和 UE 之间的不匹配而导致通信和定位性能减弱。本文以在双色散多径信道下实现多用户关联和定位为目标,基于正交延迟-多普勒分复用(ODDM)原理构建了一种 ISAC 统一波形,并开发了一种离网集群稀疏贝叶斯学习估计(OG-CSBL)算法。我们尤其关注单静态设置,即基站(BS)希望在感知多用户位置的同时与多用户通信。我们利用高分辨率测距轮廓(HRRP)来描述 UE 的物理特征,并通过利用固有的集群结构来建立与其回声的关联。为了估计参数,我们设计了一种混合的狄利克特过程(DP)-高斯分层先验分布,并提出了一种变异贝叶斯推理(VBI)-EM 策略。此外,我们还开发了一种回音回溯识别方案,以促进 UE 的精确定位。仿真结果表明,在复杂的多用户共存场景中,所提出的方案实现了卓越的 NMSE 性能,提供了米级定位精度,并获得了更好的误码率性能。
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引用次数: 0
Reconstructing Human Pose From Inertial Measurements: A Generative Model-Based Compressive Sensing Approach 从惯性测量重建人体姿态:基于生成模型的压缩传感方法
Nguyen Quang Hieu;Dinh Thai Hoang;Diep N. Nguyen;Mohammad Abu Alsheikh
The ability to sense, localize, and estimate the 3D position and orientation of the human body is critical in virtual reality (VR) and extended reality (XR) applications. This becomes more important and challenging with the deployment of VR/XR applications over the next generation of wireless systems such as 5G and beyond. In this paper, we propose a novel framework that can reconstruct the 3D human body pose of the user given sparse measurements from Inertial Measurement Unit (IMU) sensors over a noisy wireless environment. Specifically, our framework enables reliable transmission of compressed IMU signals through noisy wireless channels and effective recovery of such signals at the receiver, e.g., an edge server. This task is very challenging due to the constraints of transmit power, recovery accuracy, and recovery latency. To address these challenges, we first develop a deep generative model at the receiver to recover the data from linear measurements of IMU signals. The linear measurements of the IMU signals are obtained by a linear projection with a measurement matrix based on the compressive sensing theory. The key to the success of our framework lies in the novel design of the measurement matrix at the transmitter, which can not only satisfy power constraints for the IMU devices but also obtain a highly accurate recovery for the IMU signals at the receiver. This can be achieved by extending the set-restricted eigenvalue condition of the measurement matrix and combining it with an upper bound for the power transmission constraint. Our framework can achieve robust performance for recovering 3D human poses from noisy compressed IMU signals. Additionally, our pre-trained deep generative model achieves signal reconstruction accuracy comparable to an optimization-based approach, i.e., Lasso, but is an order of magnitude faster.
在虚拟现实(VR)和扩展现实(XR)应用中,感知、定位和估计人体三维位置和方向的能力至关重要。随着 VR/XR 应用在下一代无线系统(如 5G 及其他)上的部署,这种能力变得更加重要和具有挑战性。在本文中,我们提出了一个新颖的框架,该框架可以在嘈杂的无线环境中,根据来自惯性测量单元(IMU)传感器的稀疏测量值重建用户的三维人体姿态。具体来说,我们的框架能够通过嘈杂的无线信道可靠地传输压缩的 IMU 信号,并在接收器(如边缘服务器)上有效地恢复这些信号。由于发射功率、恢复精度和恢复延迟的限制,这项任务非常具有挑战性。为了应对这些挑战,我们首先在接收器上开发了一个深度生成模型,以便从 IMU 信号的线性测量中恢复数据。IMU 信号的线性测量是通过基于压缩传感理论的测量矩阵线性投影获得的。我们的框架成功的关键在于发射器测量矩阵的新颖设计,它不仅能满足 IMU 设备的功率约束,还能在接收器处获得高精度的 IMU 信号恢复。这可以通过扩展测量矩阵的集合限制特征值条件并将其与功率传输约束的上限相结合来实现。我们的框架可以从有噪声的压缩 IMU 信号中恢复三维人体姿态,从而实现稳健的性能。此外,我们的预训练深度生成模型实现了与基于优化的方法(即 Lasso)相当的信号重建精度,但速度却快了一个数量级。
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引用次数: 0
Surgical Strike on 5G Positioning: Selective-PRS-Spoofing Attacks and Its Defence 对 5G 定位的外科手术式打击:选择性-PRS-欺骗攻击及其防御
Kaixuan Gao;Huiqiang Wang;Hongwu Lv
As a solution for city-range integrated sensing and communication and intelligent positioning, 5G high-precision positioning is flooding into reality. Nevertheless, the underlying positioning security concerns have been overlooked, posing threats to more than a billion emerging 5G localization applications. In this work, we first identify a novel and far-reaching security vulnerability affecting current 5G positioning systems. Correspondingly, we introduce a threat model, called the selective-PRS-spoofing attack (SPS), which can cause substantial localization errors or even fully-hijacked positioning results at victims. The attacker first cracks the broadcast information of a 5G network and then poisons specific resource elements of the channel. Different from traditional communication-oriented 5G attacks, SPS targets the localization and exerts real-world threats. More seriously, we confirm that SPS attacks can evade multiple latest 3GPP R18 defense, and analyze its great stealthiness from its precise spoofing feature. To tackle this challenge, a Deep Learning-based defence method called in-phase quadrature intra-attention network (IQIA-Net) is proposed, which utilizes the hardware features of base stations to perform identification at the physical level, thereby thwarting SPS attacks on 5G positioning systems. Extensive experiments demonstrate the effectiveness of our method and its good robustness to noise.
作为城市范围内综合传感与通信和智能定位的解决方案,5G 高精度定位正涌入现实。然而,其背后的定位安全问题却一直被忽视,对超过十亿的新兴 5G 定位应用构成威胁。在这项工作中,我们首先发现了一个影响当前 5G 定位系统的新颖而深远的安全漏洞。相应地,我们引入了一种威胁模型,称为选择性-PRS-欺骗攻击(SPS),这种攻击会导致大量定位错误,甚至完全劫持受害者的定位结果。攻击者首先破解 5G 网络的广播信息,然后毒化信道中的特定资源元素。与传统的面向通信的 5G 攻击不同,SPS 以定位为目标,对现实世界造成威胁。更重要的是,我们证实了 SPS 攻击可以躲避多种最新的 3GPP R18 防御,并从其精确欺骗特性分析了其强大的隐蔽性。为了应对这一挑战,我们提出了一种基于深度学习的防御方法--同相正交内部注意网络(IQIA-Net),它利用基站的硬件特征在物理层进行识别,从而挫败针对5G定位系统的SPS攻击。大量实验证明了我们方法的有效性及其对噪声的良好鲁棒性。
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引用次数: 0
A Stochastic Particle Variational Bayesian Inference Inspired Deep-Unfolding Network for Sensing Over Wireless Networks 用于无线网络传感的随机粒子变异贝叶斯推理启发式深度展开网络
Zhixiang Hu;An Liu;Wenkang Xu;Tony Q. S. Quek;Minjian Zhao
Future wireless networks are envisioned to provide ubiquitous sensing services, driving a substantial demand for multi-dimensional non-convex parameter estimation. This entails dealing with non-convex likelihood functions containing numerous local optima. Variational Bayesian inference (VBI) provides a powerful tool for modeling complex estimation problems and leveraging prior information, but poses a long-standing challenge on computing intractable posterior distributions. Most existing variational methods depend on specific distribution assumptions for obtaining closed-form solutions, and are difficult to apply in practical scenarios. Given these challenges, firstly, we propose a parallel stochastic particle VBI (PSPVBI) algorithm. Due to innovations like particle approximation, added updates of particle positions, and parallel stochastic successive convex approximation (PSSCA), PSPVBI can flexibly drive particles to fit the posterior distribution with acceptable complexity, yielding high-precision estimates of the target parameters. Furthermore, additional speedup can be obtained by deep-unfolding this algorithm. Specifically, superior hyperparameters are learned to dramatically reduce iterations. In this PSPVBI-induced deep-unfolding network, some techniques related to gradient computation, data sub-sampling, differentiable sampling, and generalization ability are also employed to facilitate the practical deployment. Finally, we apply the learnable PSPVBI (LPSPVBI) to solve two important positioning/sensing problems over wireless networks. Simulations indicate that the LPSPVBI algorithm outperforms existing solutions.
未来的无线网络将提供无所不在的传感服务,这就对多维非凸参数估计提出了更高的要求。这就需要处理包含大量局部最优的非凸似然函数。变分贝叶斯推理(VBI)为复杂的估计问题建模和利用先验信息提供了强大的工具,但在计算难以处理的后验分布方面却提出了长期的挑战。现有的大多数变分方法依赖于特定的分布假设来获得闭式解,很难应用于实际场景。鉴于这些挑战,我们首先提出了一种并行随机粒子 VBI(PSPVBI)算法。由于采用了粒子近似、增加粒子位置更新和并行随机连续凸近似(PSSCA)等创新技术,PSPVBI 可以灵活地驱动粒子以可接受的复杂度拟合后验分布,从而获得高精度的目标参数估计。此外,通过深度折叠该算法还能获得额外的速度提升。具体来说,通过学习优秀的超参数,可以大大减少迭代次数。在这个由 PSPVBI 引发的深度折叠网络中,还采用了一些与梯度计算、数据子采样、可微分采样和泛化能力相关的技术,以方便实际部署。最后,我们将可学习的 PSPVBI(LPSPVBI)应用于解决两个重要的无线网络定位/传感问题。模拟结果表明,LPSPVBI 算法优于现有的解决方案。
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引用次数: 0
Cooperative Localization for Multi-Agents Based on Reinforcement Learning Compensated Filter 基于强化学习补偿滤波器的多代理合作定位系统
Ran Wang;Cheng Xu;Jing Sun;Shihong Duan;Xiaotong Zhang
In modern navigation and positioning systems, accurate location information is crucial for ensuring system performance and user experience. Particularly, in scenarios involving the use of multiple agents such as robots and drones for rescue operations in unknown complex environments, accurate localization is fundamental for subsequent actions. However, traditional filtering-based localization algorithms may exhibit suboptimal performance and are sensitive to initial estimates and system noise. To address these issues, this paper proposes a multi-agent collaborative localization algorithm based on reinforcement learning compensation filtering to tackle localization problems in complex environments and improve the robustness and accuracy. Specifically, this paper introduces a value decomposition-based reinforcement learning network for filtering compensation to reduce overall localization error and address the credit allocation problem in multi-agent reinforcement learning. The main contributions of this paper are as follows: Firstly, a local localization estimation method based on reinforcement learning compensation Extended Kalman Filter (EKF) is proposed, which further corrects the results of the EKF algorithm and eliminates initial estimation errors. Secondly, a global collaborative localization estimation algorithm (MARL_CF) based on credit allocation in multi-agent reinforcement learning is proposed, which maximizes the reduction of overall localization error through information sharing and global optimization. Finally, the effectiveness of the proposed algorithms is validated through both numerical simulation and physical experiments. The results demonstrate that the proposed MARL_CF significantly improve the accuracy and robustness of localization in complex environments.
在现代导航和定位系统中,准确的位置信息对于确保系统性能和用户体验至关重要。特别是在涉及使用机器人和无人机等多个代理在未知复杂环境中开展救援行动的场景中,准确的定位是后续行动的基础。然而,传统的基于滤波的定位算法可能会表现出次优性能,并且对初始估计和系统噪声很敏感。针对这些问题,本文提出了一种基于强化学习补偿滤波的多智能体协作定位算法,以解决复杂环境中的定位问题,并提高鲁棒性和准确性。具体来说,本文引入了基于值分解的强化学习网络进行滤波补偿,以降低整体定位误差,并解决多代理强化学习中的学分分配问题。本文的主要贡献如下:首先,提出了一种基于强化学习补偿扩展卡尔曼滤波器(EKF)的局部定位估计方法,进一步修正了 EKF 算法的结果,消除了初始估计误差。其次,提出了一种基于多代理强化学习中信用分配的全局协同定位估计算法(MARL_CF),通过信息共享和全局优化,最大限度地减少整体定位误差。最后,通过数值模拟和物理实验验证了所提算法的有效性。结果表明,所提出的 MARL_CF 能显著提高复杂环境中定位的准确性和鲁棒性。
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引用次数: 0
XFall: Domain Adaptive Wi-Fi-Based Fall Detection With Cross-Modal Supervision XFall:基于 Wi-Fi 的领域自适应跌倒检测与跨模式监督
Guoxuan Chi;Guidong Zhang;Xuan Ding;Qiang Ma;Zheng Yang;Zhenguo Du;Houfei Xiao;Zhuang Liu
Recent years have witnessed an increasing demand for human fall detection systems. Among all existing methods, Wi-Fi-based fall detection has become one of the most promising solutions due to its pervasiveness. However, when applied to a new domain, existing Wi-Fi-based solutions suffer from severe performance degradation caused by low generalizability. In this paper, we propose XFall, a domain-adaptive fall detection system based on Wi-Fi. XFall overcomes the generalization problem from three aspects. To advance cross-environment sensing, XFall exploits an environment-independent feature called speed distribution profile, which is irrelevant to indoor layout and device deployment. To ensure sensitivity across all fall types, an attention-based encoder is designed to extract the general fall representation by associating both the spatial and temporal dimensions of the input. To train a large model with limited amounts of Wi-Fi data, we design a cross-modal learning framework, adopting a pre-trained visual model for supervision during the training process. We implement and evaluate XFall on one of the latest commercial wireless products through a year-long deployment in real-world settings. The result shows XFall achieves an overall accuracy of 96.8%, with a miss alarm rate of 3.1% and a false alarm rate of 3.3%, outperforming the state-of-the-art solutions in both in-domain and cross-domain evaluation.
近年来,对人体跌倒检测系统的需求日益增长。在所有现有方法中,基于 Wi-Fi 的跌倒检测因其普遍性而成为最有前途的解决方案之一。然而,当应用到一个新的领域时,现有的基于 Wi-Fi 的解决方案因通用性低而导致性能严重下降。在本文中,我们提出了基于 Wi-Fi 的领域自适应跌倒检测系统 XFall。XFall 从三个方面克服了泛化问题。为了推进跨环境传感,XFall 利用了与环境无关的特征,即与室内布局和设备部署无关的速度分布曲线。为确保对所有跌倒类型的灵敏度,设计了一种基于注意力的编码器,通过关联输入的空间和时间维度来提取一般的跌倒表示。为了利用有限的 Wi-Fi 数据训练大型模型,我们设计了一个跨模态学习框架,在训练过程中采用预先训练好的视觉模型进行监督。通过在真实世界中长达一年的部署,我们在一款最新的商用无线产品上实现并评估了 XFall。结果表明,XFall 的总体准确率达到 96.8%,漏报率为 3.1%,误报率为 3.3%,在域内和跨域评估中均优于最先进的解决方案。
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引用次数: 0
Enhancing Location Awareness: A Perspective on Age of Information and Localization Precision 增强定位意识:信息时代的视角与定位精度
Zhuyin Li;Xu Zhu;Jie Cao
In the realm of industrial Internet of Things (IIoT), the concept of location awareness plays a crucial role in the integrated sensing and communication (ISAC) framework. This paper introduces an innovative methodology for assessing the location awareness of a mobile entity by combining the precision of the positioning algorithm and the timeliness of location estimations based on the age of information (AoI). The assessment employs a novel metric termed as the aging error of localization (AEoL), which encapsulates both the accuracy of localization and its evolution over the data packet lifecycle. This metric bridges a gap in existing research, which predominantly emphasizes geographical precision while neglecting the dynamic spatial attributes of a mobile entity, thereby offering valuable insights into both the precision and temporal aspects of location awareness. The study delves into the evaluation of AEoL under scenarios of perfect and imperfect localization algorithm precision. By considering a scenario where an automated guided vehicle (AGV) adheres to the uniform rectilinear motion (URM) and transmits radio signals via specific queuing models, analytical expressions for the time-average AEoL are derived across varying update rates. These expressions are subsequently validated through numerical simulations. Furthermore, for specific root mean square error (RMSE) scenarios, optimal update rates are recommended, through which the performance of location awareness can be enhanced by reducing the AEoL metric by 10% to 68% compared to the worst-case scenario.
在工业物联网(IIoT)领域,位置感知概念在集成传感与通信(ISAC)框架中发挥着至关重要的作用。本文介绍了一种创新方法,通过结合定位算法的精度和基于信息年龄(AoI)的位置估计的及时性,评估移动实体的位置感知能力。评估采用了一种称为定位老化误差(AEoL)的新指标,该指标囊括了定位精度及其在数据包生命周期中的演变。现有的研究主要强调地理精度,而忽视了移动实体的动态空间属性,这一指标弥补了这一空白,从而为位置感知的精度和时间方面提供了有价值的见解。本研究深入探讨了在定位算法精度完美和不完美的情况下对 AEoL 的评估。通过考虑自动导引车(AGV)坚持匀速直线运动(URM)并通过特定队列模型传输无线电信号的场景,得出了不同更新率下时间平均 AEoL 的分析表达式。随后通过数值模拟验证了这些表达式。此外,针对特定的均方根误差(RMSE)情况,推荐了最佳更新率,与最坏情况相比,可将 AEoL 指标降低 10%至 68%,从而提高位置感知性能。
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引用次数: 0
Indoor Periodic Fingerprint Collections by Vehicular Crowdsensing via Primal-Dual Multi-Agent Deep Reinforcement Learning 通过Primal-Dual多代理深度强化学习,利用车载人群感应进行室内周期性指纹采集
Haoming Yang;Qiran Zhao;Hao Wang;Chi Harold Liu;Guozheng Li;Guoren Wang;Jian Tang;Dapeng Wu
Indoor localization is drawing more and more attentions due to the growing demand of various location-based services, where fingerprinting is a popular data driven techniques that does not rely on complex measurement equipment, yet it requires site surveys which is both labor-intensive and time-consuming. Vehicular crowdsensing (VCS) with unmanned vehicles (UVs) is a novel paradigm to navigate a group of UVs to collect sensory data from certain point-of-interests periodically (PoIs, i.e., coverage holes in localization scenarios). In this paper, we formulate the multi-floor indoor fingerprint collection task with periodical PoI coverage requirements as a constrained optimization problem. Then, we propose a multi-agent deep reinforcement learning (MADRL) based solution, “MADRL-PosVCS”, which consists of a primal-dual framework to transform the above optimization problem into the unconstrained duality, with adjustable Lagrangian multipliers to ensure periodic fingerprint collection. We also propose a novel intrinsic reward mechanism consists of the mutual information between a UV’s observations and environment transition probability parameterized by a Bayesian Neural Network (BNN) for exploration, and a elevator-based reward to allow UVs to go cross different floors for collaborative fingerprint collections. Extensive simulation results on three real-world datasets in SML Center (Shanghai), Joy City (Hangzhou) and Haopu Fashion City (Shanghai) show that MADRL-PosVCS achieves better results over four baselines on fingerprint collection ratio, PoI coverage ratio for collection intervals, geographic fairness and average moving distance.
由于各种基于位置的服务的需求日益增长,室内定位越来越受到关注,其中指纹识别是一种流行的数据驱动技术,它不依赖于复杂的测量设备,但它需要现场勘测,既耗费人力又耗费时间。使用无人车(UVs)的车载群感(VCS)是一种新颖的范例,它可以引导一群无人车定期从某些兴趣点(PoIs,即定位场景中的覆盖孔)收集感知数据。在本文中,我们将具有周期性 PoI 覆盖要求的多楼层室内指纹采集任务表述为一个约束优化问题。然后,我们提出了一种基于多代理深度强化学习(MADRL)的解决方案--"MADRL-PosVCS",它包括一个将上述优化问题转化为无约束二元性的基元-二元框架,以及可调整的拉格朗日乘数,以确保周期性指纹采集。我们还提出了一种新颖的内在奖励机制,包括由贝叶斯神经网络(BNN)参数化的 UV 观察结果与环境转换概率之间的互信息,用于探索;以及基于电梯的奖励,允许 UV 穿过不同楼层,协同采集指纹。在上海 SML 中心、杭州大悦城和豪普时尚城三个真实世界数据集上进行的大量仿真结果表明,MADRL-PosVCS 在指纹采集率、采集间隔的 PoI 覆盖率、地理公平性和平均移动距离方面都比四种基线方法取得了更好的结果。
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引用次数: 0
MoiréTracker: Continuous Camera-to-Screen 6-DoF Pose Tracking Based on Moiré Pattern MoiréTracker:基于摩尔纹图案的相机到屏幕 6-DoF 连续姿势跟踪
Jingyi Ning;Lei Xie;Yi Li;Yingying Chen;Yanling Bu;Chuyu Wang;Sanglu Lu;Baoliu Ye
In the realm of AR applications and particularly camera-to-screen interactions, camera tracking stands as a crucial technology. However, the ever-increasing demand for tracking accuracy makes it essential to explore a six-degrees of freedom (6-DoF) tracking technology with ultra-high precision to facilitate micro-motion sensing. In this paper, we propose a novel sensing method MoiréTracker to achieve camera’s 6-DoF pose tracking with ultra-high precision. MoiréTracker outputs camera’s continuous 3-DoF trajectory and 3-DoF posture changes according to the captured moiré patterns, which can be produced by the superposition of camera’s Color Filter Array (CFA) and the projection of screen raster on the CFA plane. Thanks to moiré pattern’s high sensitivity to 6-DoF motions, we characterize the relationship between moiré features and camera’s micro pose changes, so as to realize the continuous 6-DoF pose tracking for camera with ultra-high precision. Moreover, our proposal involves a thumbnail-based method aimed at expanding the working range of MoiréTracker, enabling the pervasive camera-to-screen interactions. We implement a prototype system and evaluate its performance in real-world environments. Extensive experiment results show that MoiréTracker achieves the average trajectory error of 1.20 cm and the posture error of 1.07°.
在 AR 应用领域,尤其是摄像头与屏幕的交互中,摄像头跟踪是一项至关重要的技术。然而,由于对跟踪精度的要求越来越高,因此必须探索一种具有超高精度的六自由度(6-DoF)跟踪技术,以促进微运动感应。在本文中,我们提出了一种新型传感方法 MoiréTracker,以实现超高精度的摄像机六自由度姿态跟踪。MoiréTracker 可根据捕捉到的摩尔纹图案输出摄像机的连续 3-DoF 运动轨迹和 3-DoF 姿态变化,摩尔纹图案可由摄像机的彩色滤光片阵列(CFA)和屏幕光栅在 CFA 平面上的投影叠加产生。利用摩尔纹对 6-DoF 运动的高灵敏度,我们分析了摩尔纹特征与摄像机微观姿态变化之间的关系,从而实现了超高精度的连续 6-DoF 摄像机姿态跟踪。此外,我们还提出了一种基于缩略图的方法,旨在扩大 MoiréTracker 的工作范围,实现无处不在的摄像头与屏幕的交互。我们实现了一个原型系统,并评估了其在真实环境中的性能。广泛的实验结果表明,MoiréTracker 的平均轨迹误差为 1.20 厘米,姿态误差为 1.07°。
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引用次数: 0
期刊
IEEE journal on selected areas in communications : a publication of the IEEE Communications Society
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