期刊文献+
共找到3,034篇文章
< 1 2 152 >
每页显示 20 50 100
Insight into Urban Faults by Wavelet Multi-Scale Analysis and Modeling of Gravity Data in Shenzhen,China 被引量:3
1
作者 Chuang Xu Haihong Wang +2 位作者 Zhicai Luo Hualiang Liu Xiangdong Liu 《Journal of Earth Science》 SCIE CAS CSCD 2018年第6期1340-1348,共9页
Urban faults in Shenzhen are potential threats to city security and sustainable development. In consideration of the importance of the Shenzhen fault zone, the author provide a detailed interpretation on gravity data ... Urban faults in Shenzhen are potential threats to city security and sustainable development. In consideration of the importance of the Shenzhen fault zone, the author provide a detailed interpretation on gravity data model. Bouguer gravity covering the whole Shenzhen City was calculated with a 1-km resolution. Wavelet multi-scale analysis(MSA) was applied to the Bouguer gravity data to obtain the multilayer residual anomalies corresponding to different depths. In addition, 2D gravity models were constructed along three profiles. The Bouguer gravity anomaly shows an NE-striking high-low-high pattern from northwest to southeast, strongly related to the main faults. According to the results of MSA, the correlation between gravity anomaly and faults is particularly significant from 4 to 12 km depth. The residual gravity with small amplitude in each layer indicates weak tectonic activity in the crust. In the upper layers, positive anomalies along most of faults reveal the upwelling of high-density materials during the past tectonic movements. The multilayer residual anomalies also yield important information about the faults, such as the vertical extension and the dip direction. The maximum depth of the faults is about 20 km. In general, NE-striking faults extend deeper than NW-striking faults and have a larger dip angle. 展开更多
关键词 urban faults Bouguer gravity anomaly wavelet multi-scale analysis gravity modeling SHENZHEN
原文传递
Multi-Focus Image Fusion Based on Wavelet Transformation 被引量:4
2
作者 Peng Zhang Ying-Xun Tang +1 位作者 Yan-Hua Liang Xu-Bo Liu 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2013年第2期124-128,共5页
In the fusion of image,how to measure the local character and clarity is called activity measurement. According to the problem,the traditional measurement is decided only by the high-frequency detail coefficients, whi... In the fusion of image,how to measure the local character and clarity is called activity measurement. According to the problem,the traditional measurement is decided only by the high-frequency detail coefficients, which will make the energy expression insufficient to reflect the local clarity. Therefore,in this paper,a novel construction method for activity measurement is proposed. Firstly,it uses the wavelet decomposition for the fusion resource image, and then utilizes the high and low frequency wavelet coefficients synthetically. Meantime,it takes the normalized variance as the weight of high-frequency energy. Secondly,it calculates the measurement by the weighted energy,which can be used to measure the local character. Finally,the fusion coefficients can be got. In order to illustrate the superiority of this new method,three kinds of assessing indicators are provided. The experiment results show that,comparing with the traditional methods,this new method weakens the fuzzy and promotes the indicator value. Therefore,it has much more advantages for practical application. 展开更多
关键词 variance MEASURE image fusion wavelet transformation multi-resolution analysis
在线阅读 下载PDF
Strategies for multi-step-ahead available parking spaces forecasting based on wavelet transform 被引量:6
3
作者 JI Yan-jie GAO Liang-peng +1 位作者 CHEN Xiao-shi GUO Wei-hong 《Journal of Central South University》 SCIE EI CAS CSCD 2017年第6期1503-1512,共10页
A new methodology for multi-step-ahead forecasting was proposed herein which combined the wavelet transform(WT), artificial neural network(ANN) and forecasting strategies based on the changing characteristics of avail... A new methodology for multi-step-ahead forecasting was proposed herein which combined the wavelet transform(WT), artificial neural network(ANN) and forecasting strategies based on the changing characteristics of available parking spaces(APS). First, several APS time series were decomposed and reconstituted by the wavelet transform. Then, using an artificial neural network, the following five strategies for multi-step-ahead time series forecasting were used to forecast the reconstructed time series: recursive strategy, direct strategy, multi-input multi-output(MIMO) strategy, DIRMO strategy(a combination of the direct and MIMO strategies), and newly proposed recursive multi-input multi-output(RECMO) strategy which is a combination of the recursive and MIMO strategies. Finally, integrating the predicted results with the reconstructed time series produced the final forecasted available parking spaces. Three findings appear to be consistently supported by the experimental results. First, applying the wavelet transform to multi-step ahead available parking spaces forecasting can effectively improve the forecasting accuracy. Second, the forecasting resulted from the DIRMO and RECMO strategies is more accurate than that of the other strategies. Finally, the RECMO strategy requires less model training time than the DIRMO strategy and consumes the least amount of training time among five forecasting strategies. 展开更多
关键词 available PARKING SPACES multi-STEP AHEAD time series forecasting wavelet transform forecasting STRATEGIES recursive multi-input multi-OUTPUT strategy
在线阅读 下载PDF
Dyadic Bivariate Fourier Multipliers for Multi-Wavelets in L^2(R^2)
4
作者 Zhongyan Li Xiaodi Xu 《Analysis in Theory and Applications》 CSCD 2015年第3期221-235,共15页
The single 2 dilation orthogonal wavelet multipliers in one dimensional case and single A-dilation(where A is any expansive matrix with integer entries and|det A|=2) wavelet multipliers in high dimensional case were c... The single 2 dilation orthogonal wavelet multipliers in one dimensional case and single A-dilation(where A is any expansive matrix with integer entries and|det A|=2) wavelet multipliers in high dimensional case were completely characterized by the Wutam Consortium(1998) and Z. Y. Li, et al.(2010). But there exist no more results on orthogonal multivariate wavelet matrix multipliers corresponding integer expansive dilation matrix with the absolute value of determinant not 2 in L~2(R~2). In this paper, we choose 2I2=(~2~0)as the dilation matrix and consider the 2 I2-dilation orthogonal multivariate waveletΨ = {ψ, ψ, ψ},(which is called a dyadic bivariate wavelet) multipliers. We call the3 × 3 matrix-valued function A(s) = [ f(s)], where fi, jare measurable functions, a dyadic bivariate matrix Fourier wavelet multiplier if the inverse Fourier transform of A(s)( ψ(s), ψ(s), ψ(s)) ~T=( g(s), g(s), g(s))~ T is a dyadic bivariate wavelet whenever(ψ, ψ, ψ) is any dyadic bivariate wavelet. We give some conditions for dyadic matrix bivariate wavelet multipliers. The results extended that of Z. Y. Li and X. L.Shi(2011). As an application, we construct some useful dyadic bivariate wavelets by using dyadic Fourier matrix wavelet multipliers and use them to image denoising. 展开更多
关键词 multi-wavelets Fourier multipliers image denoising
在线阅读 下载PDF
Multi-Wavelet Bessel Sequences in Sobolev Spaces
5
作者 Jianping ZHANG Chuanli CAI 《Journal of Mathematical Research with Applications》 CSCD 2018年第5期487-495,共9页
Bessel sequence plays an important role in the study of frames for a Hilbert space with the convergence of a frame series, which has been widely studied in the literature. This paper addresses multi-wavelet Bessel seq... Bessel sequence plays an important role in the study of frames for a Hilbert space with the convergence of a frame series, which has been widely studied in the literature. This paper addresses multi-wavelet Bessel sequences in Sobolev spaces setting, the result obtained is useful for the study of multi-wavelet frames in these spaces. 展开更多
关键词 multi-wavelet Bessel sequence FRAME Sobolev spaces
原文传递
Multi-scale phase average waveform of electroencephalogram signals in childhood absence epilepsy using wavelet transformation 被引量:1
6
作者 Meiyun Zhang Benshu Zhang +2 位作者 Fenglou Wang Ying Chen Nan Jiang 《Neural Regeneration Research》 SCIE CAS CSCD 2010年第10期774-780,共7页
BACKGROUND: Recent studies have focused on various methods of wavelet transformation for electroencephalogram (EEG) signals. However, there are very few studies reporting characteristics of multi-scale phase waves ... BACKGROUND: Recent studies have focused on various methods of wavelet transformation for electroencephalogram (EEG) signals. However, there are very few studies reporting characteristics of multi-scale phase waves during epileptic discharge.OBJECTIVE: To extract multi-scale phase average waveforms from childhood absence epilepsy EEG signals between time and frequency domains using wavelet transformation, and to compare EEG signals of absence seizure with pre-epileptic seizure and normal children, and to quantify multi-scale phase average waveforms from childhood absence epilepsy EEG signals. DESIGN, TIME AND SETTING: The case-comparative experiment was performed at the Department of Neuroelectrophysiology, Tianjin Medical University from August 2002 to May 2005. PARTICIPANTS: A total of 15 patients with childhood absence epilepsy from the General Hospital of Tianjin Medical University were enrolled in the study. The patients were not administered anti-epileptic drugs or sedatives prior to EEG testing. In addition, 12 healthy, age- and gender-matched children were also enrolled.METHODS: EEG signals were tested on 15 patients with childhood absence epilepsy and 12 normal children. Epileptic discharge signals during clinical and subclinical seizures were collected 10 and 20 times, respectively. The collected EEG signals were treated with wavelet transformation to extract multi-scale characteristics during absence epilepsy seizure using a conditional sampling method. Multi-scale phase average waveforms were collected using a conditional phase averaging technique. Amplitude of phase average waveform from EEG signals of epilepsy seizure, subclinical epileptic discharge, and EEG signals of normal children were compared and statistically analyzed in the first half-cycle.MAIN OUTCOME MEASURES: Multi-scale wavelet coefficient and the evolution of EEG signals were observed during childhood absence epilepsy seizures using wavelet transformation. Multi-scale phase average waveforms from EEG signals were observed using a conditional sampling method and phase averaging technique.RESULTS: Multi-scale characteristics of EEG signals demonstrated that 12-scale (3 Hz) rhythmical activity was significantly enhanced during childhood absence epilepsy seizure and co-existed with background structure (〈1 Hz, low frequency discharge). The phase average wave exhibited opposed phase abnormal rhythm at 3 Hz. Prior to childhood absence epilepsy seizure, EEG detected opposed abnormal a rhythm and 3 Hz composition, which were not detected with traditional EEG. Compared to EEG signals from normal children, epileptic discharges from clinical and subclinical childhood absence epilepsy seizures were positive and amplitude was significantly greater (P〈0.05).CONCLUSION: Wavelet transformation was used to analyze EEG signals from childhood absence epilepsy to obtain multi-scale quantitative characteristics and phase average waveforms. Multi-scale wavelet coefficients of EEG signals correlated with childhood absence epilepsy seizure, and multi-scale waveforms prior to epilepsy seizure were similar to characteristics during the onset period. Compared to normal children, EEG signals during epilepsy seizure exhibited an opposed phase model. 展开更多
关键词 EEG multi-SCALE absence epilepsy wavelet transform phase average waveform neuroelectrophysiology neural regeneration
暂未订购
Power Quality Disturbance Classification Method Based on Wavelet Transform and SVM Multi-class Algorithms 被引量:1
7
作者 Xiao Fei 《Energy and Power Engineering》 2013年第4期561-565,共5页
The accurate identification and classification of various power quality disturbances are keys to ensuring high-quality electrical energy. In this study, the statistical characteristics of the disturbance signal of wav... The accurate identification and classification of various power quality disturbances are keys to ensuring high-quality electrical energy. In this study, the statistical characteristics of the disturbance signal of wavelet transform coefficients and wavelet transform energy distribution constitute feature vectors. These vectors are then trained and tested using SVM multi-class algorithms. Experimental results demonstrate that the SVM multi-class algorithms, which use the Gaussian radial basis function, exponential radial basis function, and hyperbolic tangent function as basis functions, are suitable methods for power quality disturbance classification. 展开更多
关键词 Power Quality DISTURBANCE Classification wavelet TRANSFORM SVM multi-CLASS ALGORITHMS
在线阅读 下载PDF
Multi-symplectic wavelet splitting method for the strongly coupled Schrodinger system
8
作者 钱旭 陈亚铭 +1 位作者 高二 宋松和 《Chinese Physics B》 SCIE EI CAS CSCD 2012年第12期16-22,共7页
We propose a multi-symplectic wavelet splitting equations. Based on its mu]ti-symplectic formulation, method to solve the strongly coupled nonlinear SchrSdinger the strongly coupled nonlinear SchrSdinger equations can... We propose a multi-symplectic wavelet splitting equations. Based on its mu]ti-symplectic formulation, method to solve the strongly coupled nonlinear SchrSdinger the strongly coupled nonlinear SchrSdinger equations can be split into one linear multi-symplectic subsystem and one nonlinear infinite-dimensional Hamiltonian subsystem. For the linear subsystem, the multi-symplectic wavelet collocation method and the symplectic Euler method are employed in spatial and temporal discretization, respectively. For the nonlinear subsystem, the mid-point symplectic scheme is used. Numerical simulations show the effectiveness of the proposed method during long-time numerical calculation. 展开更多
关键词 multi-symplectic wavelet splitting method symplectic Euler method strongly couplednonlinear SchrSdinger equations
原文传递
ICI elimination of M-band wavelet multi-carrier modulation system
9
作者 彭章友 刘艳艳 张兴 《Journal of Shanghai University(English Edition)》 CAS 2010年第1期6-11,共6页
To solve the inter carrier interference (ICI) elimination problem of an M-band wavelet multi-carrier modulation system, this paper analyzes the principle of the ICI caused by the Doppler frequency shift and its math... To solve the inter carrier interference (ICI) elimination problem of an M-band wavelet multi-carrier modulation system, this paper analyzes the principle of the ICI caused by the Doppler frequency shift and its mathematical expression based on the M-band wavelet multi-carrier modulation system model. Through the analysis of the mathematical expression and combining with the perfect reconstruction conditions of the filter banks, we propose the design conditions of an M-band filter to reduce and eliminate the ICI. The impulse response model of the filter design conditions and an iterative algorithm is also established. The simulation results show that the proposed ICI reduction and elimination methods can effectively improve the system performance. 展开更多
关键词 M-band wavelet multi-carrier modulation Doppler frequency shift inter carrier interference (ICI) impulseresponse
在线阅读 下载PDF
Wavelet Transform for Image Compression Using Multi-Resolution Analytics: Application to Wireless Sensors Data
10
作者 Wasiu Opeyemi Oduola Cajetan M. Akujuobi 《Advances in Pure Mathematics》 2017年第8期430-440,共11页
The aggregation of data in recent years has been expanding at an exponential rate. There are various data generating sources that are responsible for such a tremendous data growth rate. Some of the data origins includ... The aggregation of data in recent years has been expanding at an exponential rate. There are various data generating sources that are responsible for such a tremendous data growth rate. Some of the data origins include data from the various social media, footages from video cameras, wireless and wired sensor network measurements, data from the stock markets and other financial transaction data, supermarket transaction data and so on. The aforementioned data may be high dimensional and big in Volume, Value, Velocity, Variety, and Veracity. Hence one of the crucial challenges is the storage, processing and extraction of relevant information from the data. In the special case of image data, the technique of image compressions may be employed in reducing the dimension and volume of the data to ensure it is convenient for processing and analysis. In this work, we examine a proof-of-concept multiresolution analytics that uses wavelet transforms, that is one popular mathematical and analytical framework employed in signal processing and representations, and we study its applications to the area of compressing image data in wireless sensor networks. The proposed approach consists of the applications of wavelet transforms, threshold detections, quantization data encoding and ultimately apply the inverse transforms. The work specifically focuses on multi-resolution analysis with wavelet transforms by comparing 3 wavelets at the 5 decomposition levels. Simulation results are provided to demonstrate the effectiveness of the methodology. 展开更多
关键词 waveletS multi-RESOLUTION Analysis Image Compressions WIRELESS Sensor Networks MATHEMATICAL DATA ANALYTICS
暂未订购
Wavelet Packet Domain LMS Based Multi-User Detection 被引量:1
11
作者 刘鹏 安建平 《Journal of Beijing Institute of Technology》 EI CAS 2008年第4期484-488,共5页
An improved wavelet packet domain least mean square (IWPD-LMS) based adaptive muhiuser detection algorithm is proposed. The algorithm employs the wavelet packet transform to rewhiten the input data, and chooses the ... An improved wavelet packet domain least mean square (IWPD-LMS) based adaptive muhiuser detection algorithm is proposed. The algorithm employs the wavelet packet transform to rewhiten the input data, and chooses the best wavelet packet basis according to a novel convergence contribution function rather than the conventional Shannon entropy. The theoretic analyses show that the inadequacy of the eigenvalue spread of the tap-input correlation matrix is ameliorated, thus the convergence performance is improved greatly. The simulation result of convergence performance and bit error rate(BER) performance as a function of the signal power to noise power ratio(SNR) are presented finally to prove the validity of the proposed algorithm. 展开更多
关键词 multi-user detection least mean square (LMS) wavelet packet wavelet packet basis
在线阅读 下载PDF
Study on spline wavelet finite-element method in multi-scale analysis for foundation
12
作者 Qiang Xu Jian-Yun Chen +2 位作者 Jing Li Gang Xu Hong-Yuan Yue 《Acta Mechanica Sinica》 SCIE EI CAS CSCD 2013年第5期699-708,共10页
A new finite element method (FEM) of B-spline wavelet on the interval (BSWI) is proposed. Through analyzing the scaling functions of BSWI in one dimension, the basic formula for 2D FEM of BSWI is deduced. The 2D F... A new finite element method (FEM) of B-spline wavelet on the interval (BSWI) is proposed. Through analyzing the scaling functions of BSWI in one dimension, the basic formula for 2D FEM of BSWI is deduced. The 2D FEM of 7 nodes and 10 nodes are constructed based on the basic formula. Using these proposed elements, the multiscale numerical model for foundation subjected to harmonic periodic load, the foundation model excited by external and internal dynamic load are studied. The results show the pro- posed finite elements have higher precision than the tradi- tional elements with 4 nodes. The proposed finite elements can describe the propagation of stress waves well whenever the foundation model excited by extemal or intemal dynamic load. The proposed finite elements can be also used to con- nect the multi-scale elements. And the proposed finite elements also have high precision to make multi-scale analysis for structure. 展开更多
关键词 Finite-element method Dynamic response B-spline wavelet on the interval multi-scale analysis
在线阅读 下载PDF
频率感知驱动的深度鲁棒图像水印
13
作者 张国富 李鑫 +2 位作者 苏兆品 方涵 廉晨思 《中国图象图形学报》 北大核心 2026年第1期197-211,共15页
目的近年来,基于深度学习的水印方法得到了广泛研究。现有方法通常对特征图的低频和高频部分同等对待,忽视了不同频率成分之间的重要差异,导致模型在处理多样化攻击时缺乏灵活性,难以同时实现水印的高保真性和强鲁棒性。为此,本文提出... 目的近年来,基于深度学习的水印方法得到了广泛研究。现有方法通常对特征图的低频和高频部分同等对待,忽视了不同频率成分之间的重要差异,导致模型在处理多样化攻击时缺乏灵活性,难以同时实现水印的高保真性和强鲁棒性。为此,本文提出一种频率感知驱动的深度鲁棒图像水印技术(deep robust image watermarking driven by frequency awareness,RIWFP)。方法通过差异化机制处理低频和高频成分,提升水印性能。具体而言,低频成分通过小波卷积神经网络进行建模,利用宽感受野卷积在粗粒度层面高效学习全局结构和上下文信息;高频成分则采用深度可分离卷积和注意力机制组成的特征蒸馏块进行精炼,强化图像细节,在细粒度层面高效捕捉高频信息。此外,本文使用多频率小波损失函数,引导模型聚焦于不同频带的特征分布,进一步提升生成图像的质量。结果实验结果表明,提出的频率感知驱动的深度鲁棒图像水印技术在多个数据集上均表现出优越性能。在COCO(common objects in context)数据集上,RIWFP在随机丢弃攻击下的准确率达到91.4%;在椒盐噪声和中值滤波攻击下,RIWFP分别以100%和99.5%的准确率达到了最高水平,展现了其对高频信息的高效学习能力。在Ima⁃geNet数据集上,RIWFP在裁剪攻击下的准确率为93.4%;在JPEG压缩攻击下的准确率为99.6%,均显著优于其他对比方法。综合来看,RIWFP在COCO和ImageNet数据集上的平均准确率分别为96.7%和96.9%,均高于其他对比方法。结论本文所提方法通过频率感知的粗到细处理策略,显著增强了水印的不可见性和鲁棒性,在处理多种攻击时表现出优越性能。 展开更多
关键词 鲁棒图像水印 小波卷积神经网络 深度可分离卷积 注意力机制 多频率小波损失
原文传递
基于Wavelet-Transformer模型的动态扩容光伏电站出力预测研究
14
作者 林德富 秦杰 +1 位作者 周庭 何鹏 《红水河》 2025年第6期93-99,共7页
针对动态扩容光伏电站因装机容量持续增长导致出力非平稳、预测难度大的问题,笔者提出一种融合小波变换与Transformer的预测方法。该方法首先利用小波变换对出力序列进行多尺度分解,以分离其趋势与波动成分;随后采用Transformer编码器... 针对动态扩容光伏电站因装机容量持续增长导致出力非平稳、预测难度大的问题,笔者提出一种融合小波变换与Transformer的预测方法。该方法首先利用小波变换对出力序列进行多尺度分解,以分离其趋势与波动成分;随后采用Transformer编码器捕捉气象、装机与出力间的全局时序依赖关系。基于广西某实际电站数据的实验结果表明:该模型RMSE为3.8336 MW,R2达0.9313,性能优于LSTM、GRU等对比模型。所提方法能有效解耦出力序列的多尺度特征并建模长程依赖,为动态扩容场景下的光伏功率预测提供新方案。 展开更多
关键词 动态扩容光伏电站 出力预测 wavelet-Transformer模型 多尺度分解 时序分析
在线阅读 下载PDF
Classification of Multi-User Chirp Modulation Signals Using Wavelet Higher-Order-Statistics Features and Artificial Intelligence Techniques
15
作者 Said E. El-Khamy Hend A. Elsayed 《International Journal of Communications, Network and System Sciences》 2012年第9期520-533,共14页
Higher order statistical features have been recently proved to be very efficient in the classification of wideband communications and radar signals with great accuracy. On the other hand, the denoising properties of t... Higher order statistical features have been recently proved to be very efficient in the classification of wideband communications and radar signals with great accuracy. On the other hand, the denoising properties of the wavelet transform make WT an efficient signal processing tool in noisy environments. A novel technique for the classification of multi-user chirp modulation signals is presented in this paper. A combination of the higher order moments and cumulants of the wavelet coefficients as well as the peaks of the bispectrum and its bi-frequencies are proposed as effective features. Different types of artificial intelligence based classifiers and clustering techniques are used to identify the chirp signals of the different users. In particular, neural networks (NN), maximum likelihood (ML), k-nearest neighbor (KNN) and support vector machine (SVMs) classifiers as well as fuzzy c-means (FCM) and fuzzy k-means (FKM) clustering techniques are tested. The Simulation results show that the proposed technique is able to efficiently classify the different chirp signals in additive white Gaussian noise (AWGN) channels with high accuracy. It is shown that the NN classifier outperforms other classifiers. Also, the simulations prove that the classification based on features extracted from wavelet transform results in more accurate results than that using features directly extracted from the chirp signals, especially at low values of signal-to-noise ratios. 展开更多
关键词 Artificial Intelligence TECHNIQUES CLASSIFICATION Discrete wavelet Transform Higher Order Statistics multi-USER CHIRP Modulation SIGNALS
在线阅读 下载PDF
代理原型蒸馏的小样本目标检测算法
16
作者 谢斌红 王瑞 +1 位作者 张睿 张英俊 《计算机应用》 北大核心 2026年第1期233-241,共9页
针对现有小样本目标检测(FSOD)算法中类级原型生成精度不足以及细节信息缺失导致的目标区域特征表达能力受限的问题,提出一种基于代理原型聚合(APA)的FSOD算法APA-FSOD。该算法通过代理注意力将支持特征蒸馏为细节丰富的原型,并基于原... 针对现有小样本目标检测(FSOD)算法中类级原型生成精度不足以及细节信息缺失导致的目标区域特征表达能力受限的问题,提出一种基于代理原型聚合(APA)的FSOD算法APA-FSOD。该算法通过代理注意力将支持特征蒸馏为细节丰富的原型,并基于原型向量的相关性实现原型向量在查询特征图上的精准分配,从而显著强化目标实例区域的特征表达能力。此外,设计小波卷积增强模块(WCEM)和自适应多关系融合模块(AMRF),并分别用于优化算法的全局特征提取和高级特征融合。实验结果表明,在PASCAL VOC数据集的3种新类划分下,APA-FSOD的nAP50相较于基线方法VFA(Variational Feature Aggregation)提升了0.5~1.1个百分点;而在MS COCO数据集的30-shot设置下,与元学习方法SMPCCNet(Support-query Mutual Promotion and Classification Correction Network)相比,nAP提升了1.0个百分点。可见,所提算法显著提高了FSOD的精度。 展开更多
关键词 小样本目标检测 元学习 代理原型蒸馏 小波卷积 多关系融合
在线阅读 下载PDF
融合视觉Mamba与自适应多尺度损失的医学图像分割
17
作者 刘建明 曹圣浩 张志鹏 《中国图象图形学报》 北大核心 2026年第1期335-348,共14页
目的在医学图像分割领域,传统基于卷积神经网络(convolutional neural network,CNN)的模型在捕捉长距离依赖信息方面存在固有局限,而基于视觉Transformer(vision Transformer,ViT)的模型其自注意力机制的计算复杂度与图像尺寸呈平方关系... 目的在医学图像分割领域,传统基于卷积神经网络(convolutional neural network,CNN)的模型在捕捉长距离依赖信息方面存在固有局限,而基于视觉Transformer(vision Transformer,ViT)的模型其自注意力机制的计算复杂度与图像尺寸呈平方关系,在资源有限的现实环境中难以部署。为了解决这些问题,提出一种融合视觉Mamba和自适应多尺度损失的医学图像分割方法VMAML-UNet(medical image segmentation with vision Mamba and adaptive multi-scale loss)。方法VMAML-UNet采用编码器—解码器架构。在编码阶段,设计了融合小波卷积的视觉Mamba块,以线性复杂度提取病变区域的精确特征并扩大感受野,并通过块合并进行下采样。解码阶段同样引入融合小波卷积的视觉Mamba块并利用块扩展进行上采样。跳跃连接中,提出小波卷积注意力聚合模块,用于提取并融合不同尺度下的图像特征。此外,设计了柯尔莫哥洛夫—阿诺德网络(Kolmogorov-Arnold network,KAN)调控多尺度加权损失,动态调控各层级损失权重。结果在BUSI(breast ultrasound images dataset)、GlaS(gland segmenta⁃tion in histology images challenge dataset)和CVC(CVC-ClinicDB dataset)3个异质性显著的医学图像数据集上的实验结果表明,与主流的VM-UNet(vision Mamba UNet)等采用Mamba的医学图像分割方法相比取得显著的性能提升。在BUSI数据集上,交并比(intersection over union,IoU)和F1分数分别提升2.72%和2.02%;在GlaS数据集上,IoU和F1分数分别提升3.38%和1.89%;在CVC数据集上,IoU和F1分数分别提升2.51%和1.42%。结论提出的VMAML-UNet采用基于视觉Mamba的线性复杂度的长距离依赖建模与基于KAN的动态损失优化机制,显著减少了计算成本,同时提升了模型对复杂医学图像的分割精度。该模型在3个数据集上的优异表现证明了其在不同医学图像场景下的广泛适用性和高效性。 展开更多
关键词 状态空间模型(SSM) 柯尔莫哥洛夫-阿诺德网络(KAN) 小波卷积 多尺度加权损失 连续流
原文传递
基于多特征融合的轴承故障诊断方法
18
作者 张娜 王卓 +1 位作者 王枭雄 白晓平 《现代电子技术》 北大核心 2026年第4期178-186,共9页
旋转机械设备轴承的转速会随工作环境变化而波动,该波动会干扰故障特征提取。为了更准确地识别出轴承故障在不同转速下引发的信号微弱变化,提出一种基于多特征融合的轴承故障诊断方法。该研究基于声发射信号,采集了三种转速下轴承的内... 旋转机械设备轴承的转速会随工作环境变化而波动,该波动会干扰故障特征提取。为了更准确地识别出轴承故障在不同转速下引发的信号微弱变化,提出一种基于多特征融合的轴承故障诊断方法。该研究基于声发射信号,采集了三种转速下轴承的内圈故障、外圈故障和滚动体故障数据。首先,将一维声发射时序信号通过小波变换(WT)和灰度化处理转换为二维灰度图像。其次,将二维图像作为特征图,输入到优化后的梯度方向直方图(HOG)、局部二值模式(LBP)及深度神经网络(CVGG16)中进行特征提取,构建HLV模型以得到特征图的全方位、多层次信息。最后,将HLV模型提取到的三类特征进行多特征串行融合,采用主成分分析(PCA)对融合后的特征进行降维,提升检测速率;使用支持向量机(SVM)学习算法训练分类模型,进而实现轴承的故障诊断。研究结果表明:HLV特征提取模型与其他单一模型相比可以得到更有效的故障特征,准确率为97.50%,采用的PCA可提升训练速率;所提WHLVS轴承故障诊断方法相较于其他方法具有优越性,精确率高达97.52%;在三种公开数据集上的评估指标P、R、F_(1)、mAP均在94%以上,验证了该方法的可靠性和应用潜力。 展开更多
关键词 轴承 故障诊断 多特征融合 声发射信号 小波变换 主成分分析 支持向量机
在线阅读 下载PDF
基于扩散模型的岩石薄片图像超分辨率重建
19
作者 杜睿山 穆文轩 孟令东 《计算机系统应用》 2026年第2期132-140,共9页
针对岩石薄片图像超分辨率重建过程中因纹理复杂导致现有重建方法效果不理想的问题,提出面向岩石薄片图像的超分辨率网络模型(super-resolution denoising diffusion probability model of rock slice,rsDDPMSR).针对传统上采样方法往... 针对岩石薄片图像超分辨率重建过程中因纹理复杂导致现有重建方法效果不理想的问题,提出面向岩石薄片图像的超分辨率网络模型(super-resolution denoising diffusion probability model of rock slice,rsDDPMSR).针对传统上采样方法往往会导致伪影和低分辨率图像先验信息利用不充分的问题提出分层特征增强网络(layered feature enhancement network,LFE-Net),利用双通路网络对平稳小波变换分解后的高频与低频分量进行分层特征增强.为引导扩散模型的生成方向并提供丰富先验信息,将经过LFE-Net增强后的低分辨率特征与目标高分辨率加噪图像特征通道拼接作为扩散模型的条件输入.在U-Net的基础上设计了双编码器多尺度噪声预测网络(ACA-U-Net)有效处理岩石薄片多尺度信息并在跳跃连接中引入时间感知的自适应交叉注意力机制适配扩散模型不同去噪阶段的特征分布变化增强模型对关键区域的关注程度,有效提升图像重建细节.实验结果表明,rsDDPMSR在2×、4×、8×放大倍数下,峰值信噪比(PSNR)和结构相似度(SSIM)相比于CAMixerSR、SDFlow、IDM和SR3等主流重建方法具有更优的重建效果. 展开更多
关键词 岩石薄片 超分辨率重建 小波变换 扩散模型 多尺度特征
在线阅读 下载PDF
基于多尺度可扩张卷积和DMWT-Mamba的小样本机械故障诊断
20
作者 杨静亚 闫丽梅 +1 位作者 徐建军 曾伟铭 《噪声与振动控制》 北大核心 2026年第1期142-148,246,共8页
研究机械故障智能诊断技术可以保障设备安全稳定运行。在工业生产中,很难获得大量带有标签的高质量数据样本,且在采集振动信号时无法规避噪声的影响。基于此,提出一种基于多尺度可扩张卷积和DMWT-Mamba的小样本机械故障诊断模型。首先... 研究机械故障智能诊断技术可以保障设备安全稳定运行。在工业生产中,很难获得大量带有标签的高质量数据样本,且在采集振动信号时无法规避噪声的影响。基于此,提出一种基于多尺度可扩张卷积和DMWT-Mamba的小样本机械故障诊断模型。首先设计一个可扩张的多尺度卷积块,用于提取振动信号的多个局部感受野特征,减少学习的参数和计算量。其次将离散多小波变换(Discrete Multi-wavelet Transform,DMWT)与Mamba相结合,能够动态选择重要的时间步长信息,忽略不相关的噪声干扰,在各个频带分量中提取关键信息并使特征充分融合,从而增强模型的抗干扰性能和在小样本条件的特征提取能力。最后使用两组机械故障数据集进行实验,实验结果表明该模型能够有效提高小样本下的故障诊断准确率,且具有较强的抗干扰能力。 展开更多
关键词 故障诊断 小样本 离散多小波 Mamba 多尺度卷积
在线阅读 下载PDF
上一页 1 2 152 下一页 到第
使用帮助 返回顶部