期刊文献+
共找到119篇文章
< 1 2 6 >
每页显示 20 50 100
Robust Principal Component Analysis Integrating Sparse and Low-Rank Priors
1
作者 Wei Zhai Fanlong Zhang 《Journal of Computer and Communications》 2024年第4期1-13,共13页
Principal Component Analysis (PCA) is a widely used technique for data analysis and dimensionality reduction, but its sensitivity to feature scale and outliers limits its applicability. Robust Principal Component Anal... Principal Component Analysis (PCA) is a widely used technique for data analysis and dimensionality reduction, but its sensitivity to feature scale and outliers limits its applicability. Robust Principal Component Analysis (RPCA) addresses these limitations by decomposing data into a low-rank matrix capturing the underlying structure and a sparse matrix identifying outliers, enhancing robustness against noise and outliers. This paper introduces a novel RPCA variant, Robust PCA Integrating Sparse and Low-rank Priors (RPCA-SL). Each prior targets a specific aspect of the data’s underlying structure and their combination allows for a more nuanced and accurate separation of the main data components from outliers and noise. Then RPCA-SL is solved by employing a proximal gradient algorithm for improved anomaly detection and data decomposition. Experimental results on simulation and real data demonstrate significant advancements. 展开更多
关键词 Robust Principal Component Analysis Sparse Matrix low-rank Matrix Hyperspectral Image
下载PDF
Low-Rank Multi-View Subspace Clustering Based on Sparse Regularization
2
作者 Yan Sun Fanlong Zhang 《Journal of Computer and Communications》 2024年第4期14-30,共17页
Multi-view Subspace Clustering (MVSC) emerges as an advanced clustering method, designed to integrate diverse views to uncover a common subspace, enhancing the accuracy and robustness of clustering results. The signif... Multi-view Subspace Clustering (MVSC) emerges as an advanced clustering method, designed to integrate diverse views to uncover a common subspace, enhancing the accuracy and robustness of clustering results. The significance of low-rank prior in MVSC is emphasized, highlighting its role in capturing the global data structure across views for improved performance. However, it faces challenges with outlier sensitivity due to its reliance on the Frobenius norm for error measurement. Addressing this, our paper proposes a Low-Rank Multi-view Subspace Clustering Based on Sparse Regularization (LMVSC- Sparse) approach. Sparse regularization helps in selecting the most relevant features or views for clustering while ignoring irrelevant or noisy ones. This leads to a more efficient and effective representation of the data, improving the clustering accuracy and robustness, especially in the presence of outliers or noisy data. By incorporating sparse regularization, LMVSC-Sparse can effectively handle outlier sensitivity, which is a common challenge in traditional MVSC methods relying solely on low-rank priors. Then Alternating Direction Method of Multipliers (ADMM) algorithm is employed to solve the proposed optimization problems. Our comprehensive experiments demonstrate the efficiency and effectiveness of LMVSC-Sparse, offering a robust alternative to traditional MVSC methods. 展开更多
关键词 CLUSTERING Multi-View Subspace Clustering low-rank Prior Sparse Regularization
下载PDF
Low-Rank Optimal Transport for Robust Domain Adaptation
3
作者 Bingrong Xu Jianhua Yin +2 位作者 Cheng Lian Yixin Su Zhigang Zeng 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2024年第7期1667-1680,共14页
When encountering the distribution shift between the source(training) and target(test) domains, domain adaptation attempts to adjust the classifiers to be capable of dealing with different domains. Previous domain ada... When encountering the distribution shift between the source(training) and target(test) domains, domain adaptation attempts to adjust the classifiers to be capable of dealing with different domains. Previous domain adaptation research has achieved a lot of success both in theory and practice under the assumption that all the examples in the source domain are welllabeled and of high quality. However, the methods consistently lose robustness in noisy settings where data from the source domain have corrupted labels or features which is common in reality. Therefore, robust domain adaptation has been introduced to deal with such problems. In this paper, we attempt to solve two interrelated problems with robust domain adaptation:distribution shift across domains and sample noises of the source domain. To disentangle these challenges, an optimal transport approach with low-rank constraints is applied to guide the domain adaptation model training process to avoid noisy information influence. For the domain shift problem, the optimal transport mechanism can learn the joint data representations between the source and target domains using a measurement of discrepancy and preserve the discriminative information. The rank constraint on the transport matrix can help recover the corrupted subspace structures and eliminate the noise to some extent when dealing with corrupted source data. The solution to this relaxed and regularized optimal transport framework is a convex optimization problem that can be solved using the Augmented Lagrange Multiplier method, whose convergence can be mathematically proved. The effectiveness of the proposed method is evaluated through extensive experiments on both synthetic and real-world datasets. 展开更多
关键词 Domain adaptation low-rank constraint noise corruption optimal transport
下载PDF
Multi-Modal Medical Image Fusion Based on Improved Parameter Adaptive PCNN and Latent Low-Rank Representation
4
作者 Zirui Tang Xianchun Zhou 《Instrumentation》 2024年第2期53-63,共11页
Multimodal medical image fusion can help physicians provide more accurate treatment plans for patients, as unimodal images provide limited valid information. To address the insufficient ability of traditional medical ... Multimodal medical image fusion can help physicians provide more accurate treatment plans for patients, as unimodal images provide limited valid information. To address the insufficient ability of traditional medical image fusion solutions to protect image details and significant information, a new multimodality medical image fusion method(NSST-PAPCNNLatLRR) is proposed in this paper. Firstly, the high and low-frequency sub-band coefficients are obtained by decomposing the source image using NSST. Then, the latent low-rank representation algorithm is used to process the low-frequency sub-band coefficients;An improved PAPCNN algorithm is also proposed for the fusion of high-frequency sub-band coefficients. The improved PAPCNN model was based on the automatic setting of the parameters, and the optimal method was configured for the time decay factor αe. The experimental results show that, in comparison with the five mainstream fusion algorithms, the new algorithm has significantly improved the visual effect over the comparison algorithm,enhanced the ability to characterize important information in images, and further improved the ability to protect the detailed information;the new algorithm has achieved at least four firsts in six objective indexes. 展开更多
关键词 image fusion improved parameter adaptive pcnn non-subsampled shear-wave transform latent low-rank representation
下载PDF
A Perturbation Analysis of Low-Rank Matrix Recovery by Schatten p-Minimization
5
作者 Zhaoying Sun Huimin Wang Zhihui Zhu 《Journal of Applied Mathematics and Physics》 2024年第2期475-487,共13页
A number of previous papers have studied the problem of recovering low-rank matrices with noise, further combining the noisy and perturbed cases, we propose a nonconvex Schatten p-norm minimization method to deal with... A number of previous papers have studied the problem of recovering low-rank matrices with noise, further combining the noisy and perturbed cases, we propose a nonconvex Schatten p-norm minimization method to deal with the recovery of fully perturbed low-rank matrices. By utilizing the p-null space property (p-NSP) and the p-restricted isometry property (p-RIP) of the matrix, sufficient conditions to ensure that the stable and accurate reconstruction for low-rank matrix in the case of full perturbation are derived, and two upper bound recovery error estimation ns are given. These estimations are characterized by two vital aspects, one involving the best r-approximation error and the other concerning the overall noise. Specifically, this paper obtains two new error upper bounds based on the fact that p-RIP and p-NSP are able to recover accurately and stably low-rank matrix, and to some extent improve the conditions corresponding to RIP. 展开更多
关键词 Nonconvex Schatten p-Norm low-rank Matrix Recovery p-Null Space Property the Restricted Isometry Property
下载PDF
Two exact first-order k-space formulations for low-rank viscoacoustic wave propagation on staggered grids 被引量:1
6
作者 Hong-Yu Zhou Yang Liu Jing Wang 《Petroleum Science》 SCIE EI CAS CSCD 2023年第3期1521-1531,共11页
Wave propagation in the viscoacoustic media is physically dispersive and dissipated.Completely excluding the numerical dispersion error from the physical dispersion in the viscoacoustic wave simu-lation is indispensab... Wave propagation in the viscoacoustic media is physically dispersive and dissipated.Completely excluding the numerical dispersion error from the physical dispersion in the viscoacoustic wave simu-lation is indispensable to understanding the intrinsic property of the wave propagation in attenuated media for the petroleum exploration geophysics.In recent years,a viscoacoustic wave equation char-acterized by fractional Laplacian gains wide attention in geophysical community.However,the first-order form of the viscoacoustic wave equation,often solved by the conventional staggered-grid pseu-dospectral method,suffers from the numerical dispersion error in time due to the low-order finite-difference approximation.It is challenging to completely eliminate the error because the viscoacoustic wave equation contains two temporal derivatives,which stem from the time stepping and the amplitude attenuation terms,respectively.To tackle the issue,we derive two exact first-order k-space viscoacoustic formulations that can fully exclude the numerical error from the physical dispersion.For the homoge-neous case,two formulations agree with the viscoacoustic analytical solution very well and have the same efficiency.For the heterogeneous case,our second k-space formulation is more efficient than the first one because the second formulation significantly reduces the number of the wavenumber-space mixed-domain operators,which are the expensive part of the viscoacoustic k-space simulation.Nu-merical cases validate that the two first-order k-space formulations are effective and efficient alternatives to the current staggered-grid pseudospectral formulation for the viscoacoustic wave simulation. 展开更多
关键词 Viscoacoustic K-SPACE Staggered-grid low-rank
下载PDF
Synergistic effects of dodecane-castor oil acid mixture on the flotation responses of low-rank coal:A combined simulation and experimental study 被引量:1
7
作者 Fen Xu Shiwei Wang +1 位作者 Rongjie Kong Chengyong Wang 《International Journal of Mining Science and Technology》 SCIE EI CAS CSCD 2023年第5期649-658,共10页
The utilization of an appropriate collector or surfactant is crucial for the beneficiation of low-rank coal.However,in previous studies,the selection of surfactants was primarily based on flotation procedures,which hi... The utilization of an appropriate collector or surfactant is crucial for the beneficiation of low-rank coal.However,in previous studies,the selection of surfactants was primarily based on flotation procedures,which hinders the understanding of the interaction mechanism between surfactant groups and oxygen-containing functional groups at the surface of low-rank coal.In this study,we investigate the flotation of low-rank coal in the presence of a composite collector by using a combined theoretical and experimental approach.The maximum flotation mass recovery achieved was 82.89%using a 3:1 mixture of dodecane and castor oil acid.Fourier-transform infrared and X-ray photoelectron spectroscopic analyses showed that castor oil acid was effectively adsorbed onto the surface of low-rank coal,enhancing the hydrophobicity of the coal.In addition,the diffusion coefficient of water molecules in the water-composite collector-coal system was greater than that in the dodecane system.Moreover,due to the presence of castor oil acid in the flotation process,the adsorption distance of dodecane and low-rank coal became shorter.Molecular dynamics simulations revealed that the diffusion and interaction of surfactant molecules at the interface of low-rank coal particles and water was enhanced because the adsorption of the dodecane-castor oil acid mixture is primarily controlled by hydrogen bonds and electrostatic attraction.Based on these results,a better surfactant for flotation of low-rank coal is also proposed. 展开更多
关键词 low-rank coal FLOTATION Castor oil acid Surface hydrophobicity Molecular dynamics simulation
下载PDF
Multimodal Medical Image Fusion Based on Parameter Adaptive PCNN and Latent Low-rank Representation 被引量:1
8
作者 WANG Wenyan ZHOU Xianchun YANG Liangjian 《Instrumentation》 2023年第1期45-58,共14页
Medical image fusion has been developed as an efficient assistive technology in various clinical applications such as medical diagnosis and treatment planning.Aiming at the problem of insufficient protection of image ... Medical image fusion has been developed as an efficient assistive technology in various clinical applications such as medical diagnosis and treatment planning.Aiming at the problem of insufficient protection of image contour and detail information by traditional image fusion methods,a new multimodal medical image fusion method is proposed.This method first uses non-subsampled shearlet transform to decompose the source image to obtain high and low frequency subband coefficients,then uses the latent low rank representation algorithm to fuse the low frequency subband coefficients,and applies the improved PAPCNN algorithm to fuse the high frequency subband coefficients.Finally,based on the automatic setting of parameters,the optimization method configuration of the time decay factorαe is carried out.The experimental results show that the proposed method solves the problems of difficult parameter setting and insufficient detail protection ability in traditional PCNN algorithm fusion images,and at the same time,it has achieved great improvement in visual quality and objective evaluation indicators. 展开更多
关键词 Image Fusion Non-subsampled Shearlet Transform Parameter Adaptive PCNN Latent low-rank Representation
下载PDF
Research on infrared dim and small target detection algorithm based on low-rank tensor recovery
9
作者 LIU Chuntong WANG Hao 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2023年第4期861-872,共12页
In order to rapidly and accurately detect infrared small and dim targets in the infrared image of complex scene collected by virtual prototyping of space-based downward-looking multiband detection,an improved detectio... In order to rapidly and accurately detect infrared small and dim targets in the infrared image of complex scene collected by virtual prototyping of space-based downward-looking multiband detection,an improved detection algorithm of infrared small and dim target is proposed in this paper.Firstly,the original infrared images are changed into a new infrared patch tensor mode through data reconstruction.Then,the infrared small and dim target detection problems are converted to low-rank tensor recovery problems based on tensor nuclear norm in accordance with patch tensor characteristics,and inverse variance weighted entropy is defined for self-adaptive adjustment of sparseness.Finally,the low-rank tensor recovery problem with noise is solved by alternating the direction method to obtain the sparse target image,and the final small target is worked out by a simple partitioning algorithm.The test results in various spacebased downward-looking complex scenes show that such method can restrain complex background well by virtue of rapid arithmetic speed with high detection probability and low false alarm rate.It is a kind of infrared small and dim target detection method with good performance. 展开更多
关键词 complex scene infrared block tensor tensor kernel norm low-rank tensor restoration weighted inverse entropy alternating direction method
下载PDF
基于光易变性低秩正交先验的高光谱解混
10
作者 马飞 李树雪 +1 位作者 杨飞霞 徐光宪 《激光与红外》 CAS CSCD 北大核心 2024年第4期642-653,共12页
高光谱解混是通过图像分解提取端元及丰度特征的过程,然而由光照、大气等因素引起的光谱类内易变性,或者由环境变化、设备等非线性因素导致的谱间易变性,会导致特征提取精度下降。为了全面考虑解混过程中光谱变化的问题,本文引入光谱易... 高光谱解混是通过图像分解提取端元及丰度特征的过程,然而由光照、大气等因素引起的光谱类内易变性,或者由环境变化、设备等非线性因素导致的谱间易变性,会导致特征提取精度下降。为了全面考虑解混过程中光谱变化的问题,本文引入光谱易变性的低秩正交先验提出了一种增强型的光谱解混优化模型。首先,在线性解混模型基础上引入易变性数据拟合项来同时考虑光谱类内和类间变化,利用缩放因子来解决光谱类内易变性,同时增加光谱易变性扰动矩阵来解决谱间易变性。其次,该模型利用正交先验约束来实现原光谱字典与易变性项的空间低相干性,通过采用核范数对数松弛来强化丰度矩阵的低秩特性,抑制微小分量及噪声。最后,采用交替优化法及向量-矩阵算子降低求解算法复杂度。通过模拟数据集和真实数据集仿真测试结果表明,本文所提算法取得了优于对比算法的良好性能,验证了该优化模型的有效性。 展开更多
关键词 高光谱解混 光谱易变性 低秩 正交先验 稀疏性
下载PDF
Accurate simulations of pure-viscoacoustic wave propagation in tilted transversely isotropic media 被引量:1
11
作者 Qiang Mao Jian-Ping Huang +2 位作者 Xin-Ru Mu Ji-Dong Yang Yu-Jian Zhang 《Petroleum Science》 SCIE EI CAS CSCD 2024年第2期866-884,共19页
Forward modeling of seismic wave propagation is crucial for the realization of reverse time migration(RTM) and full waveform inversion(FWI) in attenuating transversely isotropic media. To describe the attenuation and ... Forward modeling of seismic wave propagation is crucial for the realization of reverse time migration(RTM) and full waveform inversion(FWI) in attenuating transversely isotropic media. To describe the attenuation and anisotropy properties of subsurface media, the pure-viscoacoustic anisotropic wave equations are established for wavefield simulations, because they can provide clear and stable wavefields. However, due to the use of several approximations in deriving the wave equation and the introduction of a fractional Laplacian approximation in solving the derived equation, the wavefields simulated by the previous pure-viscoacoustic tilted transversely isotropic(TTI) wave equations has low accuracy. To accurately simulate wavefields in media with velocity anisotropy and attenuation anisotropy, we first derive a new pure-viscoacoustic TTI wave equation from the exact complex-valued dispersion formula in viscoelastic vertical transversely isotropic(VTI) media. Then, we present the hybrid finite-difference and low-rank decomposition(HFDLRD) method to accurately solve our proposed pure-viscoacoustic TTI wave equation. Theoretical analysis and numerical examples suggest that our pure-viscoacoustic TTI wave equation has higher accuracy than previous pure-viscoacoustic TTI wave equations in describing q P-wave kinematic and attenuation characteristics. Additionally, the numerical experiment in a simple two-layer model shows that the HFDLRD technique outperforms the hybrid finite-difference and pseudo-spectral(HFDPS) method in terms of accuracy of wavefield modeling. 展开更多
关键词 Pure-viscoacoustic TTI wave equation Attenuation anisotropy Seismic modeling low-rank decomposition method
下载PDF
基于深度先验和小波变换的遥感图像复原算法
12
作者 李喆 吕慧 +1 位作者 成丽波 贾小宁 《计算机仿真》 2024年第2期212-217,共6页
针对各种退化因素导致遥感图像模糊的问题,在混合即插即用(Hybrid Plug-and-Play,H-PNP)模型的基础上,设计了基于深度先验和小波变换的模糊遥感图像复原算法。首先,利用导向滤波对模糊图像进行预处理,再构建结合非局部相似块低秩先验、... 针对各种退化因素导致遥感图像模糊的问题,在混合即插即用(Hybrid Plug-and-Play,H-PNP)模型的基础上,设计了基于深度先验和小波变换的模糊遥感图像复原算法。首先,利用导向滤波对模糊图像进行预处理,再构建结合非局部相似块低秩先验、深度先验和小波变换的模糊遥感图像复原模型,最后利用交替迭代法求解模型,复原出清晰的图像。考虑到惩罚因子对图像复原的影响,在深度去噪器中引入相对残差自适应原则更新惩罚因子。实验结果表明,上述算法对于叠加模糊和噪声的退化图像具有良好效果,选取GSR算法、NSCR算法和H-PNP算法进行对比实验,在主观视觉效果、峰值信噪比、特征相似性和结构相似性方面均优于对比算法。 展开更多
关键词 低秩先验 导向滤波 深度先验 小波变换 交替方向乘子法
下载PDF
Improved fuzzy clustering for image segmentation based on a low-rank prior 被引量:4
13
作者 Xiaofeng Zhang Hua Wang +3 位作者 Yan Zhang Xin Gao Gang Wang Caiming Zhang 《Computational Visual Media》 EI CSCD 2021年第4期513-528,共16页
Image segmentation is a basic problem in medical image analysis and useful for disease diagnosis.However,the complexity of medical images makes image segmentation difficult.In recent decades,fuzzy clustering algorithm... Image segmentation is a basic problem in medical image analysis and useful for disease diagnosis.However,the complexity of medical images makes image segmentation difficult.In recent decades,fuzzy clustering algorithms have been preferred due to their simplicity and efficiency.However,they are sensitive to noise.To solve this problem,many algorithms using non-local information have been proposed,which perform well but are inefficient.This paper proposes an improved fuzzy clustering algorithm utilizing nonlocal self-similarity and a low-rank prior for image segmentation.Firstly,cluster centers are initialized based on peak detection.Then,a pixel correlation model between corresponding pixels is constructed,and similar pixel sets are retrieved.To improve efficiency and robustness,the proposed algorithm uses a novel objective function combining non-local information and a low-rank prior.Experiments on synthetic images and medical images illustrate that the algorithm can improve efficiency greatly while achieving satisfactory results. 展开更多
关键词 image segmentation fuzzy clustering nonlocal information low-rank prior medical images
原文传递
基于Low-rank一步法波场延拓的黏声各向异性介质纯qP波正演模拟 被引量:6
14
作者 顾汉明 张奎涛 +1 位作者 刘春成 王建花 《石油地球物理勘探》 EI CSCD 北大核心 2020年第4期733-746,699-700,共16页
各向异性介质纯qP波正演模拟及逆时偏移近年受到广泛关注,但它虽考虑了地下介质的各向异性特征,却忽略了黏滞性特征,使得最终偏移结果中噪声增加、分辨率降低。常规拟声波方程存在伪横波干扰、受模型参数限制(ε≥δ)、传播不稳定等因... 各向异性介质纯qP波正演模拟及逆时偏移近年受到广泛关注,但它虽考虑了地下介质的各向异性特征,却忽略了黏滞性特征,使得最终偏移结果中噪声增加、分辨率降低。常规拟声波方程存在伪横波干扰、受模型参数限制(ε≥δ)、传播不稳定等因素影响,极大地限制了其应用。为此,引入一步法波场延拓方法,推导了黏声介质方程在空间—波数域的表达形式;结合空间—波数域各向异性介质延拓算子,构建一种适用于黏声各向异性介质的空间—波数域纯qP波波场延拓算子;引入Low-rank分解算法,实现基于Low-rank一步法波场延拓的黏声各向异性介质纯qP波正演模拟。数值模拟结果表明:①地震波场能同时表现出各向异性特征和黏滞性特征,更符合实际地下介质情况;②该方法克服了拟声波方程的局限性,消除了伪横波干扰,不受模型参数限制且地震波场能稳定传播;③在适当增大时间步长情形下无数值频散现象,所提算法能同时兼顾计算效率和计算精度,是一种稳定、高效的正演模拟方法,为基于Q补偿的各向异性介质逆时偏移提供了理论依据。 展开更多
关键词 黏声各向异性 纯qP波 low-rank分解 一步法波场延拓 正演模拟
下载PDF
A reweighted damped singular spectrum analysis method for robust seismic noise suppression
15
作者 Wei-Lin Huang Yan-Xin Zhou +2 位作者 Yang Zhou Wei-Jie Liu Ji-Dong Li 《Petroleum Science》 SCIE EI CAS CSCD 2024年第3期1671-1682,共12页
(Multichannel)Singular spectrum analysis is considered as one of the most effective methods for seismic incoherent noise suppression.It utilizes the low-rank feature of seismic signal and regards the noise suppression... (Multichannel)Singular spectrum analysis is considered as one of the most effective methods for seismic incoherent noise suppression.It utilizes the low-rank feature of seismic signal and regards the noise suppression as a low-rank reconstruction problem.However,in some cases the seismic geophones receive some erratic disturbances and the amplitudes are dramatically larger than other receivers.The presence of this kind of noise,called erratic noise,makes singular spectrum analysis(SSA)reconstruction unstable and has undesirable effects on the final results.We robustify the low-rank reconstruction of seismic data by a reweighted damped SSA(RD-SSA)method.It incorporates the damped SSA,an improved version of SSA,into a reweighted framework.The damping operator is used to weaken the artificial disturbance introduced by the low-rank projection of both erratic and random noise.The central idea of the RD-SSA method is to iteratively approximate the observed data with the quadratic norm for the first iteration and the Tukeys bisquare norm for the rest iterations.The RD-SSA method can suppress seismic incoherent noise and keep the reconstruction process robust to the erratic disturbance.The feasibility of RD-SSA is validated via both synthetic and field data examples. 展开更多
关键词 Singular spectrum analysis Damping operator Seismic erratic noise Seismic signal processing Robust low-rank reconstruction
下载PDF
Multidomain Correlation-Based Multidimensional CSI Tensor Generation for Device-FreeWi-Fi Sensing
16
作者 Liufeng Du Shaoru Shang +3 位作者 Linghua Zhang Chong Li JianingYang Xiyan Tian 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第2期1749-1767,共19页
Due to the fine-grained communication scenarios characterization and stability,Wi-Fi channel state information(CSI)has been increasingly applied to indoor sensing tasks recently.Although spatial variations are explici... Due to the fine-grained communication scenarios characterization and stability,Wi-Fi channel state information(CSI)has been increasingly applied to indoor sensing tasks recently.Although spatial variations are explicitlyreflected in CSI measurements,the representation differences caused by small contextual changes are easilysubmerged in the fluctuations of multipath effects,especially in device-free Wi-Fi sensing.Most existing datasolutions cannot fully exploit the temporal,spatial,and frequency information carried by CSI,which results ininsufficient sensing resolution for indoor scenario changes.As a result,the well-liked machine learning(ML)-based CSI sensing models still struggling with stable performance.This paper formulates a time-frequency matrixon the premise of demonstrating that the CSI has low-rank potential and then proposes a distributed factorizationalgorithm to effectively separate the stable structured information and context fluctuations in the CSI matrix.Finally,a multidimensional tensor is generated by combining the time-frequency gradients of CSI,which containsrich and fine-grained real-time contextual information.Extensive evaluations and case studies highlight thesuperiority of the proposal. 展开更多
关键词 Wi-Fi sensing device-free CSI low-rank matrix factorization
下载PDF
基于混沌吸引子重构和Low-rank聚类的跳频信号电台分选 被引量:4
17
作者 眭萍 郭英 +1 位作者 李红光 王宇宙 《电子与信息学报》 EI CSCD 北大核心 2019年第12期2965-2971,共7页
辐射源无调制信息的暂态信号能够表征辐射源发射机的无意调制特性,对该暂态信号分析可实现辐射源识别。而跳频电台在开机以及频率转换瞬间,都存在一个无信息传送的暂态调整时间,该暂态调整瞬间,电台发射的信号是无调制信息的非线性、非... 辐射源无调制信息的暂态信号能够表征辐射源发射机的无意调制特性,对该暂态信号分析可实现辐射源识别。而跳频电台在开机以及频率转换瞬间,都存在一个无信息传送的暂态调整时间,该暂态调整瞬间,电台发射的信号是无调制信息的非线性、非平稳和非高斯信号。该暂态时间序列可反映跳频电台的器件特性,同时该序列往往呈现复杂的混沌特性。因此,借鉴混沌时间序列分析的思想,同时利用暂态信号的Low-rank特性,该文提出了一种基于暂态信号混沌吸引子重构和Low-rank聚类的跳频信号电台分选算法。实验测试表明:跳频电台的暂态信号时间序列属于混沌时间序列,同时实测多跳频信号的电台分选结果证明了Low-rank聚类算法在跳频电台分选上的可行性。 展开更多
关键词 跳频电台 暂态信号 混沌吸引子 low-rank聚类
下载PDF
基于Low-rank分解的复杂TI介质纯qP波正演模拟与逆时偏移 被引量:17
18
作者 黄金强 李振春 《地球物理学报》 SCIE EI CAS CSCD 北大核心 2017年第2期704-721,共18页
近年来,面向实际应用的TI介质准P波正演模拟与逆时偏移成像技术受到空前的关注.基于常规耦合型传播方程的正演模拟方法不仅存在伪横波及频散假象干扰,而且还遭受模型参数限制(η>0)和不稳定影响;而纯qP波方程的推导繁琐,且由于方程... 近年来,面向实际应用的TI介质准P波正演模拟与逆时偏移成像技术受到空前的关注.基于常规耦合型传播方程的正演模拟方法不仅存在伪横波及频散假象干扰,而且还遭受模型参数限制(η>0)和不稳定影响;而纯qP波方程的推导繁琐,且由于方程中包含拟微分算子造成求解难度大且精度有限.为此,本文首先构建了一种适用于任意TI介质的纯qP波传播算子,然后借助Low-rank分解求取该算子中的空间-波数域矩阵,同时引入Cerjan衰减边界条件来压制边界反射干扰,最终实现了一种间接的纯qP波波场外推方案,并将其成功应用于复杂TI介质正演模拟与逆时偏移成像中.通过开展数值模拟,并与其他方法对比表明:①该方法既避免了纯qP波方程的繁琐推导,又克服了耦合型方程对模型参数的限制;②还彻底消除了残余伪横波噪音及数值频散;③且能适应较大时间或空间步长及高频震源,是一种相对准确且稳定的各向异性纵波正演与成像策略. 展开更多
关键词 正演模拟 逆时偏移 TI介质 纯qP波 low-rank分解
下载PDF
各向异性介质Low-rank有限差分法纯qP波叠前平面波最小二乘逆时偏移 被引量:9
19
作者 黄金强 李振春 《地球物理学报》 SCIE EI CAS CSCD 北大核心 2019年第8期3106-3129,共24页
拟声波最小二乘逆时偏移是一种极具潜力的地震波成像工具,但该方法遭受各向异性拟声波近似的限制,TTI介质正演模拟不稳定、反偏移记录中遭受伪横波二次扰动及数值频散假象,另外拟声波最小二乘逆时偏移还面临计算效率低、收敛速度慢、对... 拟声波最小二乘逆时偏移是一种极具潜力的地震波成像工具,但该方法遭受各向异性拟声波近似的限制,TTI介质正演模拟不稳定、反偏移记录中遭受伪横波二次扰动及数值频散假象,另外拟声波最小二乘逆时偏移还面临计算效率低、收敛速度慢、对速度等模型参数依赖性高等问题.为了克服各向异性拟声波最小二乘逆时偏移的缺陷,在反演框架下,本文借助Low-rank有限差分算法首次提出并实现了TTI介质纯qP波线性正演模拟及纯qP波最小二乘逆时偏移;为了进一步提升反演成像效率,同时改善反演成像方法对模型参数误差的依赖性及对地震数据噪声的适应性,通过引入叠前平面波优化策略,发展了TTI介质纯qP波叠前平面波最小二乘逆时偏移成像方法.在编程实现方法的基础上,通过开展模型成像测试,展示了本方法的优势和潜力:一方面加快了反演成像效率,另一方面也提升了方法的抗噪性,同时还降低了方法对模型参数的依赖性. 展开更多
关键词 各向异性介质 low-rank有限差分 纯qP波 最小二乘逆时偏移 叠前平面波最小二乘逆时偏移
下载PDF
TTI介质Low-rank有限差分法高效正演模拟及逆时偏移 被引量:6
20
作者 黄金强 李振春 江文 《石油地球物理勘探》 EI CSCD 北大核心 2018年第6期1198-1209,I0004,共13页
计算效率是制约各向异性逆时偏移实用化的关键因素,此外,伪横波假象、数值频散以及不稳定问题也是TTI介质qP波正演模拟及逆时偏移的固有难题。Low-rank波场延拓算法虽能解决上述三方面问题,但其运算速度受模型参数限制,计算效率较低。为... 计算效率是制约各向异性逆时偏移实用化的关键因素,此外,伪横波假象、数值频散以及不稳定问题也是TTI介质qP波正演模拟及逆时偏移的固有难题。Low-rank波场延拓算法虽能解决上述三方面问题,但其运算速度受模型参数限制,计算效率较低。为此,本文基于混合网格有限差分思想,给出一种新的紧致差分模板,并借助Low-rank分解求取与模型匹配的自适应差分系数,进而实现一种针对TTI介质的Low-rank有限差分法高效正演模拟及逆时偏移成像策略。数值模型测试结果表明:本文方法既继承了有限差分法高效灵活的特点,又拥有Low-rank波场延拓方法准确计算纯qP波波场的优势,即在提高计算效率的同时避免了伪横波假象和数值不稳定,是一种兼顾成像精度与计算效率的各向异性逆时偏移实用方法。 展开更多
关键词 TTI介质 正演模拟 逆时偏移 low-rank分解 纯qP波
下载PDF
上一页 1 2 6 下一页 到第
使用帮助 返回顶部