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Visual In-Context Learning for Underwater Image Restoration 水下图像恢复的视觉语境学习
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-23 DOI: 10.1109/LSP.2026.3667439
Guangqi Jiang;Ao Zhang;Yi Liu;Huibing Wang;Shoukun Xu
Underwater images often exhibit common visual degradations, such as color distortion, loss of details, and reduced sharpness, which inevitably compromise the effectiveness of underwater vision tasks. However, most underwater image restoration methods solely focus on learning degradation features from raw images, neglecting the incorporation of additional contextual information to guide restoration, which limits the capability of deep models to restore image quality. In this letter, we propose Visual In-Context Learning (VICL) for underwater image restoration, which leverages degradation information from context to improve image quality. In VICL, Degraded Context Extraction Block (DCEB) employs a self-attention mechanism to extract degradation information from context. In addition, Context Spatial Feature Fusion Block (CSFFB) consists of a Degraded Context Guidance Block (DCGB) and a Multi-Feature Fusion Block (MFFB). DCGB employs a cross-attention mechanism to fuse degraded context with spatial features for guiding underwater image restoration. MFFB replaces traditional encoder–decoder skip connections to better coordinate feature fusion. Extensive experiments on multiple underwater image benchmarks demonstrate that VICL outperforms state-of-the-art methods both quantitatively and visually.
水下图像往往表现出常见的视觉退化,如色彩失真,细节的损失,并降低清晰度,这不可避免地损害水下视觉任务的有效性。然而,大多数水下图像恢复方法只关注从原始图像中学习退化特征,而忽略了引入额外的上下文信息来指导恢复,这限制了深度模型恢复图像质量的能力。在这封信中,我们提出了用于水下图像恢复的视觉上下文学习(VICL),它利用来自上下文的退化信息来提高图像质量。在VICL中,退化上下文提取块(DCEB)采用自关注机制从上下文中提取退化信息。此外,上下文空间特征融合块(CSFFB)由退化上下文引导块(DCGB)和多特征融合块(MFFB)组成。DCGB采用交叉注意机制,将退化的语境与空间特征融合,指导水下图像恢复。MFFB取代了传统的编码器-解码器跳过连接,以更好地协调特征融合。对多个水下图像基准的广泛实验表明,VICL在定量和视觉上都优于最先进的方法。
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引用次数: 0
Physics-Aware Initialization Refinement in Code-Aided EM for Blind Channel Estimation 基于物理感知的编码辅助电磁盲信道估计初始化改进
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-23 DOI: 10.1109/LSP.2026.3666849
Chin-Hung Chen;Ivana Nikoloska;Wim van Houtum;Yan Wu;Alex Alvarado
This paper addresses the well-known local maximum problem of the expectation-maximization (EM) algorithm in blind inter-symbol interference (ISI) channel estimation. This problem primarily arises from phase and shift ambiguities due to poor initialization, which blind EM estimation is inherently unable to resolve. We propose an effective initialization refinement algorithm that utilizes the decoder output as a metric for model selection. Finite candidate models are generated based on the physical properties of the channel and modulation format, incorporating a joint detection of phase and shift ambiguities. Our results show that the proposed algorithm significantly reduces the number of local maximum cases to nearly one-third for a 3-tap ISI channel under highly uncertain initial conditions. The improvement becomes more pronounced as initial errors increase and the channel memory grows. When used in a turbo equalizer, the proposed algorithm is required only in the first turbo iteration, thereby limiting any increase in complexity in subsequent iterations.
本文解决了盲码间干扰信道估计中期望最大化(EM)算法的局部极大值问题。这个问题主要是由于初始化不良导致的相位和位移模糊,而盲EM估计本质上是无法解决的。我们提出了一种有效的初始化优化算法,利用解码器输出作为模型选择的度量。基于信道和调制格式的物理特性生成有限候选模型,结合相位和位移模糊的联合检测。研究结果表明,在初始条件高度不确定的情况下,该算法显著减少了3分路ISI信道的局部最大值,减少到近三分之一。随着初始错误的增加和通道内存的增加,改进变得更加明显。当在turbo均衡器中使用时,所提出的算法仅在第一次turbo迭代中需要,从而限制了后续迭代中复杂性的增加。
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引用次数: 0
WDE-SBL: Waveform Design for SBL-Based Low- SNR Target Parameter Estimation in RFPA Radar 基于sbl的RFPA雷达低信噪比目标参数估计波形设计
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-17 DOI: 10.1109/LSP.2026.3665633
Bingqi Shan;Ju Wang
Compressive sensing (CS)-based sparse Bayesian learning (SBL) algorithms for random frequency and pulse repetition interval agile (RFPA) radar exhibit poor robustness under low signal-to-noise ratio (SNR) conditions. To address this issue, this letter proposes a waveform-design-enhanced SBL (WDE-SBL) method. This method integrates waveform design into the SBL framework, which employs low-complexity complex Gaussian priors, without increasing the computational load. Specifically, for the first time, this letter derives the analytical expression of the grid energy associated with the SBL algorithm for RFPA radar, clearly revealing the contributions of individual components. Based on an in-depth analysis of this expression, the proposed WDE-SBL method constructs the objective function to suppress noise floor and designs the frequency-hopping sequence accordingly. Simulation results demonstrate that by incorporating waveform design, the proposed WDE-SBL can clearly identify targets and accurately estimate target parameters under low SNR conditions where other CS-based algorithms fail.
基于压缩感知(CS)的稀疏贝叶斯学习(SBL)算法在低信噪比(SNR)条件下对随机频率和脉冲重复间隔敏捷(RFPA)雷达的鲁棒性较差。为了解决这个问题,本文提出了一种波形设计增强SBL (WDE-SBL)方法。该方法将波形设计集成到SBL框架中,采用低复杂度的复杂高斯先验,不增加计算量。具体而言,本文首次导出了RFPA雷达与SBL算法相关的网格能量的解析表达式,清楚地揭示了各个组件的贡献。在深入分析该表达式的基础上,提出的WDE-SBL方法构建了抑制本底噪声的目标函数,并相应地设计了跳频序列。仿真结果表明,结合波形设计的WDE-SBL能够在低信噪比条件下清晰地识别目标并准确估计目标参数,这是其他基于cs的算法无法实现的。
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引用次数: 0
Generative Model-Aided Continual Learning for CSI Feedback in FDD mMIMO-OFDM Systems FDD mimo - ofdm系统中CSI反馈的生成模型辅助持续学习
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-17 DOI: 10.1109/LSP.2026.3665655
Guijun Liu;Yuwen Cao;Tomoaki Ohtsuki;Jiguang He;Shahid Mumtaz
Deep autoencoder (DAE) frameworks have demonstrated their effectiveness in reducing channel state information (CSI) feedback overhead in massive multiple-input multiple-output (mMIMO) orthogonal frequency division multiplexing (OFDM) systems. However, existing CSI feedback models struggle to adapt to dynamic environments caused by user mobility, requiring retraining when encountering new CSI distributions. Moreover, returning to previously encountered environments often leads to performance degradation due to catastrophic forgetting. Continual learning involves enabling models to incorporate new information while maintaining performance on previously learned tasks. To address these challenges, we propose a generative adversarial network (GAN)-based learning approach for CSI feedback. By using a GAN generator as a memory unit, our method preserves knowledge from past environments and ensures consistently high performance across diverse scenarios without forgetting. Simulation results show that the proposed approach enhances the generalization capability of the DAE framework while maintaining low memory overhead. Furthermore, it can be seamlessly integrated with other advanced CSI feedback models, highlighting its robustness and adaptability.
深度自编码器(DAE)框架在大规模多输入多输出(mMIMO)正交频分复用(OFDM)系统中有效地降低了信道状态信息(CSI)反馈开销。然而,现有的CSI反馈模型难以适应由用户移动性引起的动态环境,在遇到新的CSI分布时需要重新训练。此外,返回到以前遇到的环境通常会由于灾难性遗忘而导致性能下降。持续学习包括使模型能够在保持先前学习任务的性能的同时合并新的信息。为了解决这些挑战,我们提出了一种基于生成对抗网络(GAN)的CSI反馈学习方法。通过使用GAN发生器作为记忆单元,我们的方法保留了过去环境中的知识,并确保在不同场景下始终保持高性能而不会忘记。仿真结果表明,该方法提高了DAE框架的泛化能力,同时保持了较低的内存开销。此外,它可以与其他先进的CSI反馈模型无缝集成,突出了其鲁棒性和适应性。
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引用次数: 0
JFRFFNet: A Data–Model Co-Driven Graph Signal Denoising Model With Partial Prior Information 基于部分先验信息的数据模型协同驱动图信号去噪模型
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-17 DOI: 10.1109/LSP.2026.3665652
Ziqi Yan;Zhichao Zhang
Wiener filtering in the joint time–vertex fractional Fourier transform (JFRFT) domain has shown high effectiveness in denoising time-varying graph signals. Traditional filtering model uses grid search to determine the transform order pair and compute filter coefficients, while the learnable one employs gradient descent strategy to optimize them, both requiring complete prior information of graph signals. To overcome this shortcoming, this letter proposes a data–model co-driven denoising approach, termed neural network aided joint time-vertex fractional Fourier filtering (JFRFFNet), which embeds the JFRFT domain filtering model into the neural network and updates the transform order pair and filter coefficients through data-driven approach. This design enables effective denoising using only partial prior information. Experiments demonstrate that JFRFFNet achieves significant improvements in output signal-to-noise ratio compared with some state-of-the-arts.
在联合时间点分数傅里叶变换(JFRFT)域中的维纳滤波对时变图信号的去噪具有很高的有效性。传统滤波模型采用网格搜索确定变换阶对并计算滤波系数,可学习滤波模型采用梯度下降策略对其进行优化,两者都需要图信号的完整先验信息。为了克服这一缺点,本文提出了一种数据模型共同驱动的去噪方法,称为神经网络辅助联合时间顶点分数傅里叶滤波(JFRFFNet),该方法将JFRFT域滤波模型嵌入神经网络中,并通过数据驱动方法更新变换阶对和滤波系数。这种设计能够仅使用部分先验信息进行有效的去噪。实验表明,JFRFFNet在输出信噪比方面取得了显著的进步。
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引用次数: 0
MSVM-UNet: Multi-Scale Spatial Attention Enhanced Vision Mamba U-Net for Agricultural Disease Segmentation MSVM-UNet:多尺度空间关注增强视觉曼巴U-Net用于农业疾病分割
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-13 DOI: 10.1109/LSP.2026.3664272
Lin Shi;Xinyu Liu;Li Zhao;Haiyang Zhang;Zhanlin Ji
Agricultural diseased leaf image segmentation is a critical technology for precision agriculture and intelligent crop protection. To overcome the limitations of current segmentation methods—such as imprecise leaf edge extraction, difficulty in detecting small disease lesions, and insufficient robustness in complex backgrounds—this paper proposes an agricultural diseased leaf image segmentation method based on an enhanced visual state space model, named MSVM-UNet (Multi-Scale Spatial Attention Vision Mamba U-Net). This method employs an encoder-decoder framework and integrates improved Visual State Space (VSS) modules in both the encoder and decoder, enhancing long-range dependency modeling and local-global feature fusion. Simultaneously, a Multi-Scale Spatial Attention (MSSA) module is introduced in the skip connections to enhance cross-scale feature representation and capture fine boundary details of disease spots. To simulate real field imaging conditions, we perform random horizontal or vertical flips on the images and randomly adjust hue, saturation, and brightness before training. Experimental results demonstrate that, compared with mainstream methods, MSVM-UNet achieves significant performance improvement in agricultural diseased leaf segmentation tasks, reaching 80.44% mIoU and 92.56% Dice on the validation set, providing our solution for intelligent agricultural disease monitoring.
农业病叶图像分割是精准农业和智能植保的关键技术。为了克服当前分割方法中叶片边缘提取不精确、小病变检测困难、复杂背景下鲁棒性不足等局限性,本文提出了一种基于增强视觉状态空间模型的农业病叶图像分割方法,命名为MSVM-UNet (Multi-Scale Spatial Attention Vision Mamba U-Net)。该方法采用编码器-解码器框架,并在编码器和解码器中集成改进的视觉状态空间(VSS)模块,增强了远程依赖建模和局部-全局特征融合。同时,在跳跃连接中引入了多尺度空间注意(MSSA)模块,增强了跨尺度特征表示,捕获了病斑的精细边界细节。为了模拟真实的野外成像条件,我们在训练前对图像进行随机的水平或垂直翻转,并随机调整色调、饱和度和亮度。实验结果表明,与主流方法相比,MSVM-UNet在农业病叶分割任务上取得了显著的性能提升,在验证集上达到80.44%的mIoU和92.56%的Dice,为农业病害智能监测提供了解决方案。
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引用次数: 0
Adaptive Multi-Resolution Dynamic Mode Decomposition for Non-Stationary Signal Analysis 非平稳信号分析的自适应多分辨率动态模态分解
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-11 DOI: 10.1109/LSP.2026.3663968
Alavala Siva Sankar Reddy;Ram Bilas Pachori
Non-stationary signals with rapidly evolving and overlapping spectral components present challenges for obtaining accurate time–frequency distribution (TFD). Conventional dynamic mode decomposition (DMD) extracts mode frequencies and damping information but has difficulty in representing the TFD of highly non-stationary signals. Multi-resolution DMD (MR-DMD) partially addresses this limitation; however, employing a fixed embedding dimension across all scales may result in inadequate adaptation to local signal dynamics and reduced time–frequency resolution. This paper presents an adaptive MR-DMD (AMR-DMD) technique that automatically selects the embedding dimension at each decomposition level by jointly balancing spectral and temporal resolutions, guided by a time–frequency uncertainty criterion derived from the Heisenberg principle, for the analysis of real-valued signals. The method is further extended to complex-valued signals by separating positive and negative frequency components for complete spectral characterization. Hilbert spectral analysis (HSA) is applied to the modes obtained from AMR-DMD to generate the TFD.Experimental results on real, synthetic, and complex-valued signals demonstrate that the proposed AMR-DMD-based HSA method produces improved TFDs, offering sharper localization, lower reconstruction error, and higher quality reconstruction factor than existing method-based HSA techniques.
具有快速演变和重叠频谱分量的非平稳信号对精确时频分布(TFD)的获取提出了挑战。传统的动态模态分解(DMD)提取模态频率和阻尼信息,但难以表示高度非平稳信号的TFD。多分辨率DMD (MR-DMD)部分解决了这一限制;然而,在所有尺度上采用固定的嵌入维数可能导致对局部信号动态的适应不足,并降低时频分辨率。本文提出了一种自适应MR-DMD (AMR-DMD)技术,该技术在海森堡原理的时频不确定性准则的指导下,通过共同平衡频谱分辨率和时间分辨率,自动选择每个分解层次上的嵌入维数,用于实值信号的分析。将该方法进一步推广到复值信号中,通过分离正、负频率分量进行完整的频谱表征。利用希尔伯特谱分析(Hilbert spectrum analysis, HSA)对AMR-DMD得到的模态进行分析,生成TFD。对真实信号、合成信号和复杂值信号的实验结果表明,与现有的基于方法的HSA技术相比,基于amr - dmd的HSA方法产生了改进的tfd,具有更清晰的定位、更低的重建误差和更高的质量重建因子。
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引用次数: 0
An Off-Grid DOA Estimation Method Based on a Frequency-Domain ViT 基于频域ViT的离网DOA估计方法
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-09 DOI: 10.1109/LSP.2026.3662578
He Zheng;Guimei Zheng;Fangqing Wen;Yuwei Song;Feilong Lv
In this letter, we propose a deep learning-based off-grid Direction of Arrival (DOA) estimation method for low Signal-to-Noise Ratio (SNR) scenarios. Specifically, we develop a dual-branch neural network with residual connections that processes frequency-domain features, consisting of a coarse classification branch and a fine regression branch. The classification branch employs a multi-label approach to obtain on-grid results, while the regression branch predicts the residual between the classification outputs and ground-truth angles. This structural design effectively leverages classification results to avoid convergence difficulties associated with direct off-grid angle prediction, thereby enhancing DOA estimation accuracy. Simulation results demonstrate that under low SNR conditions, the proposed method outperforms existing approaches, including both classical model-based and other deep learning-based methods.
在这封信中,我们提出了一种基于深度学习的离网到达方向(DOA)估计方法,用于低信噪比(SNR)场景。具体来说,我们开发了一个带有残差连接的双分支神经网络,该网络由一个粗分类分支和一个细回归分支组成,用于处理频域特征。分类分支采用多标签方法获得网格上结果,而回归分支预测分类输出与地真角之间的残差。这种结构设计有效地利用了分类结果,避免了直接离网角度预测带来的收敛困难,从而提高了DOA估计精度。仿真结果表明,在低信噪比条件下,该方法优于现有的方法,包括经典的基于模型的方法和其他基于深度学习的方法。
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引用次数: 0
Optimal Hybrid Intrusion Schedule Against State Estimation for Cyber-Physical Systems 基于状态估计的网络物理系统最优混合入侵调度
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-06 DOI: 10.1109/LSP.2026.3661734
Zining Wang;Yao Li;Yancheng Li;Junjie Xu;Jianyong Zheng;Lu Sun
The security issues of wireless cyber-physical systems (CPSs) have attracted widespread attentions in the decade. Existing research mainly focuses on the specific attack paradigm of a single attacker or eavesdropper. In this letter, we consider a smart intruder which has two options including eavesdropping and DoS attack. The intruder can switch between these two options based on the global cost function which is constructed as a trade-off between the intruder's estimation error, energy consumption, and estimation error at the estimator side. By modeling it as a Markov decision process (MDP), we give some structural properties of the optimal schedule analytically and explicitly. It can be theoretically proved that there remains a threshold structure for the optimal intrusion scheduling when the holding time of estimator is fixed. Further more, when intruder's holding time is fixed, the optimal strategy consists of two cases, both of which follow a threshold structure, and they exhibit opposing forms of the optimal solution. Numerical examples and comparisons with the state-of-art methods are presented to demonstrate the correctness and effectiveness of our proposed results.
近十年来,无线网络物理系统(cps)的安全问题引起了广泛关注。现有的研究主要集中在单个攻击者或窃听者的特定攻击范式上。在这封信中,我们考虑一个智能入侵者有两种选择,包括窃听和DoS攻击。入侵者可以根据全局成本函数在这两种选择之间进行切换,全局成本函数是在入侵者的估计误差、能量消耗和估计误差之间进行权衡的。通过将其建模为马尔可夫决策过程(MDP),分析明确地给出了最优调度的一些结构性质。从理论上证明,当估计量保持时间一定时,最优入侵调度仍然存在阈值结构。此外,当入侵者持有时间一定时,最优策略包括两种情况,它们都遵循阈值结构,并且它们表现出相反的最优解形式。最后给出了数值算例,并与现有方法进行了比较,证明了所提结果的正确性和有效性。
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引用次数: 0
Geometric Deviation: An Information-Theoretic Health Indicator for Cross-Condition Prognostics 几何偏差:交叉条件预测的信息论健康指标
IF 3.9 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Pub Date : 2026-02-06 DOI: 10.1109/LSP.2026.3661739
Haibo Jin;Baokai Zhang
Generalization of prognostic models across varying operating conditions is a primary challenge for methods relying on transient signal morphology. We introduce the Geometric Deviation (GD), an information-theoretic health indicator derived from intrinsic system dynamics on a latent manifold. The GD quantifies the Kullback-Leibler divergence between the current state and a learned nominal trajectory, which is probabilistically modeled in stages on a manifold reconstructed via Isomap. Experimental results on the NASA battery dataset substantiate that the GD-based prognostic approach stands out from state-of-the-art deep learning baselines by a notable margin in cross-condition generalization.
预测模型在不同操作条件下的泛化是依赖于瞬态信号形态学方法的主要挑战。我们引入了几何偏差(GD),这是一个从潜在流形上的内在系统动力学推导出来的信息论健康指标。GD量化了当前状态和学习到的标称轨迹之间的Kullback-Leibler散度,该散度在Isomap重建的流形上分阶段进行概率建模。在NASA电池数据集上的实验结果证实,基于gd的预测方法在交叉条件泛化方面明显优于最先进的深度学习基线。
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引用次数: 0
期刊
IEEE Signal Processing Letters
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