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Detection of Abnormal Cardiac Rhythms Using Feature Fusion Technique with Heart Sound Spectrograms
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作者 Saif Ur Rehman Khan Zia Khan 《Journal of Bionic Engineering》 2025年第4期2030-2049,共20页
A heart attack disrupts the normal flow of blood to the heart muscle,potentially causing severe damage or death if not treated promptly.It can lead to long-term health complications,reduce quality of life,and signific... A heart attack disrupts the normal flow of blood to the heart muscle,potentially causing severe damage or death if not treated promptly.It can lead to long-term health complications,reduce quality of life,and significantly impact daily activities and overall well-being.Despite the growing popularity of deep learning,several drawbacks persist,such as complexity and the limitation of single-model learning.In this paper,we introduce a residual learning-based feature fusion technique to achieve high accuracy in differentiating abnormal cardiac rhythms heart sound.Combining MobileNet with DenseNet201 for feature fusion leverages MobileNet lightweight,efficient architecture with DenseNet201,dense connections,resulting in enhanced feature extraction and improved model performance with reduced computational cost.To further enhance the fusion,we employed residual learning to optimize the hierarchical features of heart abnormal sounds during training.The experimental results demonstrate that the proposed fusion method achieved an accuracy of 95.67%on the benchmark PhysioNet-2016 Spectrogram dataset.To further validate the performance,we applied it to the BreakHis dataset with a magnification level of 100X.The results indicate that the model maintains robust performance on the second dataset,achieving an accuracy of 96.55%.it highlights its consistent performance,making it a suitable for various applications. 展开更多
关键词 Cardiac rhythms Feature fusion Residual learning BreakHis spectrogram sound
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Automatic recognition of sonar targets using feature selection in micro-Doppler signature 被引量:2
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作者 Abbas Saffari Seyed-Hamid Zahiri Mohammad Khishe 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2023年第2期58-71,共14页
Currently,the use of intelligent systems for the automatic recognition of targets in the fields of defence and military has increased significantly.The primary advantage of these systems is that they do not need human... Currently,the use of intelligent systems for the automatic recognition of targets in the fields of defence and military has increased significantly.The primary advantage of these systems is that they do not need human participation in target recognition processes.This paper uses the particle swarm optimization(PSO)algorithm to select the optimal features in the micro-Doppler signature of sonar targets.The microDoppler effect is referred to amplitude/phase modulation on the received signal by rotating parts of a target such as propellers.Since different targets'geometric and physical properties are not the same,their micro-Doppler signature is different.This Inconsistency can be considered a practical issue(especially in the frequency domain)for sonar target recognition.Despite using 128-point fast Fourier transform(FFT)for the feature extraction step,not all extracted features contain helpful information.As a result,PSO selects the most optimum and valuable features.To evaluate the micro-Doppler signature of sonar targets and the effect of feature selection on sonar target recognition,the simplest and most popular machine learning algorithm,k-nearest neighbor(k-NN),is used,which is called k-PSO in this paper because of the use of PSO for feature selection.The parameters measured are the correct recognition rate,reliability rate,and processing time.The simulation results show that k-PSO achieved a 100%correct recognition rate and reliability rate at 19.35 s when using simulated data at a 15 dB signal-tonoise ratio(SNR)angle of 40°.Also,for the experimental dataset obtained from the cavitation tunnel,the correct recognition rate is 98.26%,and the reliability rate is 99.69%at 18.46s.Therefore,the k-PSO has an encouraging performance in automatically recognizing sonar targets when using experimental datasets and for real-world use. 展开更多
关键词 micro-doppler signature Automatic recognition Feature selection K-NN PSO
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Modeling simulation and experiment of micro-Doppler signature of precession 被引量:2
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作者 Hongwei Gao Lianggui Xie Shuliang Wen 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第4期544-549,共6页
Spatial precession is a special micro-motion of the spinning-directional target, and the micro-Doppler signature of the cone-shaped target with precession is studied. The micro-motion model of precession is built firs... Spatial precession is a special micro-motion of the spinning-directional target, and the micro-Doppler signature of the cone-shaped target with precession is studied. The micro-motion model of precession is built first, and then the micro-Doppler model is developed based on the proposed concept of micro-motion ma- trix, by which the theoretical formula of micro-Doppler signature of precession is derived. In order to further approach to the actual case, the occlusion effect is firstly considered in micro-Doppler, and the simulated result with occlusion effect is well in accordance with the measured result in microwave anechoic chamber, which suggests that the micro-motion model and micro-Doppler model of precession are both valid. 展开更多
关键词 PRECESSION micro-doppler micro-motion matrix occlusion effect.
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DETECTION ON MICRO-DOPPLER EFFECT BASED ON LASER COHERENT RADAR 被引量:3
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作者 SunYang ZhangJun 《Journal of Electronics(China)》 2012年第1期56-61,共6页
A laser coherent detection system of 1550 nm wavelength was presented, and experimen- tal research on detecting micro-Doppler effect in a dynamic target was developed. In the study, the return signal in the time domai... A laser coherent detection system of 1550 nm wavelength was presented, and experimen- tal research on detecting micro-Doppler effect in a dynamic target was developed. In the study, the return signal in the time domain is decomposed into a set of components in different wavelet scales by multi-resolution wavelet analysis, and the components are associated with the vibrational motions in a target. Then micro-Doppler signatures are extracted by applying the reconstruction. During the course of the final data processing frequency analysis and time-frequency analysis are applied to analyze the vibrationM signals and estimate the motion parameters successfully. The experimental results indicate that the system can effectively detect micro-Doppler information in a moving target, and the tiny vibrational signatures also can be acquired effectively by wavelet multi-resolution analy- sis and time-frequency analysis. 展开更多
关键词 micro-doppler effect Laser coherent radar Multi-resolution analysis Time-frequencyanalysis
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Parity recognition of blade number and manoeuvre intention classification algorithm of rotor target based on micro-Doppler features using CNN 被引量:5
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作者 WANG Wantian TANG Ziyue +1 位作者 CHEN Yichang SUN Yongjian 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2020年第5期884-889,共6页
This paper proposes a parity recognition of blade number and manoeuvre intention classification algorithm of rotor target based on the convolutional neural network(CNN) using micro Doppler features. Firstly, the time-... This paper proposes a parity recognition of blade number and manoeuvre intention classification algorithm of rotor target based on the convolutional neural network(CNN) using micro Doppler features. Firstly, the time-frequency spectrograms are acquired from the radar echo by the short-time Fourier transform.Secondly, based on the obtained spectrograms, a seven-layer CNN architecture is built to recognize the blade-number parity and classify the manoeuvre intention of the rotor target. The constructed architecture contains a leaky rectified linear unit and a dropout layer to accelerate the convergence of the architecture and avoid over-fitting. Finally, the spectrograms of the datasets are divided into three different ratios, i.e., 20%, 33% and 50%,and the cross validation is used to verify the effectiveness of the constructed CNN architecture. Simulation results show that, on the one hand, as the ratio of training data increases, the recognition accuracy of parity and manoeuvre intention is improved at the same signal-to-noise ratio(SNR);on the other hand, the proposed algorithm also has a strong robustness: the accuracy can still reach 90.72% with an SNR of – 6 dB. 展开更多
关键词 micro-doppler convolutional neural network(CNN) parity recognition of blade number manoeuvre intention classification
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Parameter estimation for rigid body after micro-Doppler removal based on L-statistics in the radar analysis 被引量:2
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作者 Yong Wang Jian Kang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2015年第3期457-467,共11页
In traditional inverse synthetic aperture radar (ISAR) imaging of moving targets with rotational parts, the micro-Doppler (m-D) effects caused by the rotational parts influence the quality of the radar images. Rec... In traditional inverse synthetic aperture radar (ISAR) imaging of moving targets with rotational parts, the micro-Doppler (m-D) effects caused by the rotational parts influence the quality of the radar images. Recently, L. Stankovic proposed an m-D removal method based on L-statistics, which has been proved effective and simple. The algorithm can extract the m-D effects according to different behaviors of signals induced by rotational parts and rigid bodies in time-frequency (T-F) domain. However, by removing m-D effects, some useful short time Fourier transform (STFT) samples of rigid bodies are also extracted, which induces the side lobe problem of rigid bodies. A parameter estimation method for rigid bodies after m-D removal is proposed, which can accurately re- cover rigid bodies and avoid the side lobe problem by only using m-D removal. Simulations are given to validate the effectiveness of the proposed method. 展开更多
关键词 parameter estimation L-STATISTICS micro-doppler (m-D) radar imaging.
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Micro-Doppler feature extraction of micro-rotor UAV under the background of low SNR 被引量:6
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作者 HE Weikun SUN Jingbo +1 位作者 ZHANG Xinyun LIU Zhenming 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2022年第6期1127-1139,共13页
Micro-Doppler feature extraction of unmanned aerial vehicles(UAVs)is important for their identification and classification.Noise and the motion state of the UAV are the main factors that may affect feature extraction ... Micro-Doppler feature extraction of unmanned aerial vehicles(UAVs)is important for their identification and classification.Noise and the motion state of the UAV are the main factors that may affect feature extraction and estimation precision of the micro-motion parameters.The spectrum of UAV echoes is reconstructed to strengthen the micro-motion feature and reduce the influence of the noise on the condition of low signal to noise ratio(SNR).Then considering the rotor rate variance of UAV in the complex motion state,the cepstrum method is improved to extract the rotation rate of the UAV,and the blade length can be intensively estimated.The experiment results for the simulation data and measured data show that the reconstruction of the spectrum for the UAV echoes is helpful and the relative mean square root error of the rotating speed and blade length estimated by the proposed method can be improved.However,the computation complexity is higher and the heavier computation burden is required. 展开更多
关键词 micro-rotor unmanned aerial vehicle(UAV) low signal to noise ratio(SNR) micro-doppler feature extraction parameter estimation
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Continuous frequency and phase spectrograms: a study of their 2D and 3D capabilities and application to musical signal analysis 被引量:1
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作者 Laurent NAVARRO Guy COURBEBAISSE Jean-Charles PINOLI 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2008年第2期199-206,共8页
A new lighting and enlargement on phase spectrogram (PS) and frequency spectrogram (FS) is presented in this paper. These representations result from the coupling of power spectrogram and short time Fourier transf... A new lighting and enlargement on phase spectrogram (PS) and frequency spectrogram (FS) is presented in this paper. These representations result from the coupling of power spectrogram and short time Fourier transform (STFT). The main contribution is the construction of the 3D phase spectrogram (3DPS) and the 3D frequency spectrogram (3DFS). These new tools allow such specific test signals as small slope linear chirp, phase jump case of musical signal analysis is reported. The main objective is to and small frequency jump to be analyzed. An application detect small frequency and phase variations in order to characterize each type of sound attack without losing the amplitude information given by power spectrogram 展开更多
关键词 Frequency spectrogram (FS) Phase spectrogram (PS) Time-frequency representations Musical signals
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Micro-Doppler Parameter Estimation Method Based on Compressed Sensing 被引量:1
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作者 Jiayun Chang Xiongjun Fu +1 位作者 Wen Jiang Min Xie 《Journal of Beijing Institute of Technology》 EI CAS 2019年第2期286-295,共10页
A micro-Doppler parameter estimation method based on compressed sensing theory is proposed in this paper.The micro-Doppler parameter estimation algorithm was improved for micro-motion targets with translation in this ... A micro-Doppler parameter estimation method based on compressed sensing theory is proposed in this paper.The micro-Doppler parameter estimation algorithm was improved for micro-motion targets with translation in this paper.Relatively ideal micro-Doppler parameter estimation results were obtained.The proposed micro-Doppler parameter estimation was compared with the traditional micro-Doppler parameter estimation algorithm.Requirements for return signal length were analyzed with this new algorithm and its performance was also analyzed in various environments with different SNR. 展开更多
关键词 FEATURE EXTRACTION compressed SENSING micro-doppler PARAMETER ESTIMATION
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Health Monitoring of Milling Tool Inserts Using CNN Architectures Trained by Vibration Spectrograms 被引量:2
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作者 Sonali S.Patil Sujit S.Pardeshi Abhishek D.Patange 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第7期177-199,共23页
In-process damage to a cutting tool degrades the surface􀀀nish of the job shaped by machining and causes a signi􀀀cant􀀀nancial loss.This stimulates the need for Tool Condition Monitoring(TCM)t... In-process damage to a cutting tool degrades the surface􀀀nish of the job shaped by machining and causes a signi􀀀cant􀀀nancial loss.This stimulates the need for Tool Condition Monitoring(TCM)to assist detection of failure before it extends to the worse phase.Machine Learning(ML)based TCM has been extensively explored in the last decade.However,most of the research is now directed toward Deep Learning(DL).The“Deep”formulation,hierarchical compositionality,distributed representation and end-to-end learning of Neural Nets need to be explored to create a generalized TCM framework to perform eciently in a high-noise environment of cross-domain machining.With this motivation,the design of dierent CNN(Convolutional Neural Network)architectures such as AlexNet,ResNet-50,LeNet-5,and VGG-16 is presented in this paper.Real-time spindle vibrations corresponding to healthy and various faulty con􀀀gurations of milling cutter were acquired.This data was transformed into the time-frequency domain and further processed by proposed architectures in graphical form,i.e.,spectrogram.The model is trained,tested,and validated considering dierent datasets and showcased promising results. 展开更多
关键词 Milling tool inserts health monitoring vibration spectrograms deep learning convolutional neural network
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Particle swarm optimization for rigid body reconstruction after micro-Doppler removal in radar analysis 被引量:2
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作者 LI Hongzhi WANG Yong 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2020年第3期488-499,共12页
The rotating micro-motion parts produce micro-Doppler(m-D)effects which severely influence the quality of inverse synthetic aperture radar(ISAR)imaging for complex moving targets.Recently,a method based on short-time ... The rotating micro-motion parts produce micro-Doppler(m-D)effects which severely influence the quality of inverse synthetic aperture radar(ISAR)imaging for complex moving targets.Recently,a method based on short-time Fourier transform(STFT)and L-statistics to remove m-D effects is proposed,which can separate the rigid body parts from interferences introduced by rotating parts.However,during the procedure of removing m-D parts,the useful data of the rigid body parts are also removed together with the m-D interferences.After summing the rest STFT samples,the result will be affected.A novel method is proposed to recover the missing values of the rigid body parts by the particle swarm optimization(PSO)algorithm.For PSO,each particle corresponds to a possible phase estimation of the missing values.The best particle is selected which has the minimal energy of the side lobes according to the best fitness value of particles.The simulation and measured data results demonstrate the effectiveness of the proposed method. 展开更多
关键词 micro-doppler(m-D) inverse synthetic aperture radar(ISAR) L-STATISTICS particle swarm optimization(PSO)
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Micro-Doppler effect testing technique for attitude of projectile in space flight
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作者 张万君 吴晓颖 +2 位作者 张晓炜 牛敏杰 冷雪冰 《Journal of Beijing Institute of Technology》 EI CAS 2013年第3期350-353,共4页
To measure projectile attitude in space flight, based on continuous wave (CW) radar, a new micro-Doppler effect testing technique is developed in this paper. It also establishes radar testing model for attitude of f... To measure projectile attitude in space flight, based on continuous wave (CW) radar, a new micro-Doppler effect testing technique is developed in this paper. It also establishes radar testing model for attitude of flying projectile and resolve micro-Doppler effect of projectile motion attitude. By distinguishing and geting attitude parameters such as micro-motion period, this technique can in- tuitively estimate the flight stability of projectile, and the validity of this technique is proved accord- ing to flight tests. 展开更多
关键词 attitude of projectile micro-doppler radar testing target micro-motion
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Convex Optimization-Based Rotation Parameter Estimation Using Micro-Doppler
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作者 Kyungwoo Yoo Joohwan Chun +1 位作者 Seungoh Yoo Chungho Ryu 《Journal of Electrical Engineering》 2016年第4期157-164,共8页
We present a novel algorithm that can determine rotation-related parameters of a target using FMCW (frequency modulated continuous wave) radars, not utilizing inertia information of the target. More specifically, th... We present a novel algorithm that can determine rotation-related parameters of a target using FMCW (frequency modulated continuous wave) radars, not utilizing inertia information of the target. More specifically, the proposed algorithm estimates the angular velocity vector of a target as a function of time, as well as the distances of scattering points in the wing tip from the rotation axis, just by analyzing Doppler spectrograms obtained from three or more radars. The obtained parameter values will be useful to classify targets such as hostile warheads or missiles for real-time operation, or to analyze the trajectory of targets under test for the instrumentation radar operation. The proposed algorithm is based on the convex optimization to obtain the rotation-related parameters. The performance of the proposed algorithm is assessed through Monte Carlo simulations. Estimation performance of the proposed algorithm depends on the target and radar geometry and improves as the number of iterations of the convex optimization steps increases. 展开更多
关键词 micro-doppler FMCW radar STFT (short-time Fourier transform) convex optimization rotation parameter.
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基于改进EfficientNetV2的铝液泄漏声音识别与预警机制
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作者 梁艳辉 温承杰 +2 位作者 闫军威 周璇 张洪涛 《华南理工大学学报(自然科学版)》 北大核心 2026年第2期38-51,共14页
铝液泄漏是导致铝加工深井铸造爆炸事故的直接原因。为解决实际工程中铝液泄漏判断方法滞后性强、准确率低和监测范围受限等问题,该文提出了基于改进EfficientNetV2的铝液泄漏声音识别方法。该方法通过声音特征判断铝液泄漏,以扩大监测... 铝液泄漏是导致铝加工深井铸造爆炸事故的直接原因。为解决实际工程中铝液泄漏判断方法滞后性强、准确率低和监测范围受限等问题,该文提出了基于改进EfficientNetV2的铝液泄漏声音识别方法。该方法通过声音特征判断铝液泄漏,以扩大监测范围;同时通过优化堆叠因子、引入高效通道注意力机制改进EfficientNetV2结构,以进一步提升识别速率与准确率。首先,利用拾音器采集不同场景下的声音数据,构建包含7类声音场景的声音数据库;然后,从声音信号中提取对数梅尔语谱图作为特征集,输入到改进的EfficientNetV2模型进行训练与验证,最终得到铝液泄漏声音识别模型。实验结果表明:改进的EfficientNetV2识别准确率达95.48%;与原始EfficientNetV2、ResNet、 RegNet及DenseNet相比,改进模型的浮点运算次数分别为上述模型的12.34%、8.64%、11.14%和10.80%,参数量分别为上述模型的11.37%、9.55%、15.95%和17.24%,CPU环境下每秒处理图像帧数分别为上述模型的6.53倍、6.14倍、4.41倍和8.00倍,说明改进的EfficientNetV2具有快速准确的识别性能。此外,基于该文提出的铝液泄漏声音识别方法,构建了铝液泄漏风险预警机制,并将该机制应用于铸造单元的实时风险监测。实践结果验证了所提识别方法与预警机制的有效性,可为铝加工深井铸造爆炸事故的预防提供技术参考。 展开更多
关键词 铝加工深井铸造 铝液泄漏 声音识别 风险预警 改进的EfficientNetV2 对数梅尔语谱图
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基于多粒度声谱图的托辊异常状态检测方法
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作者 党颖滢 曹现刚 +6 位作者 张鑫媛 李翔宇 毛怡文 樊红卫 董明 万翔 段雍 《工矿自动化》 北大核心 2026年第2期59-68,共10页
在井下复杂工况下,胶带摩擦与煤流冲击产生的机械噪声、风流扰动噪声及多设备耦合噪声相互叠加,导致托辊故障特征声纹极易被环境噪声掩盖;同时,托辊异常样本获取困难、标注成本高,使得基于传统监督学习的托辊异常状态检测方法难以有效... 在井下复杂工况下,胶带摩擦与煤流冲击产生的机械噪声、风流扰动噪声及多设备耦合噪声相互叠加,导致托辊故障特征声纹极易被环境噪声掩盖;同时,托辊异常样本获取困难、标注成本高,使得基于传统监督学习的托辊异常状态检测方法难以有效推广。针对上述问题,提出一种基于多粒度声谱图与注意力自编码器(MG-AAE)的无监督托辊异常状态检测方法,该方法仅利用正常工况托辊声音训练模型,无需故障标签。构建由Mel声谱图与Mel频率倒谱系数(MFCCs)组成的多粒度复合声谱特征,兼顾能量轮廓与细粒度声纹;在编码器中引入高斯差分金字塔(GDP)与多头注意力机制(MHA),通过多尺度建模与自适应加权融合,抑制稳态背景噪声并突出关键故障频带;以多维重构均方误差作为异常判据,实现托辊异常状态的自动识别。实验结果表明,在仅使用正常样本训练的前提下,MG-AAE模型在跨设备与真实工况评估中均展现出优异性能。基于MIMII数据集4类典型设备的评估显示,在0 dB强噪声工况下,MG-AAE模型的平均特征曲线下的面积(AUC)与局部AUC(pAUC)分别达到84.2%和70.4%,较自编码器模型提升7.3%和5.6%。在真实托辊数据上,AUC达95.47%,异常样本重构误差约为正常样本的1.40倍。说明该方法具有良好的跨设备泛化与低误报率特性,可为煤矿带式输送机托辊状态异常检测提供有效技术支撑。 展开更多
关键词 托辊 无监督异常检测 多粒度声谱图 Mel声谱图 MEL频率倒谱系数 自编码器 复合声学特征
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基于双分支残差网络的病理语音识别
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作者 程愉凯 段淑斐 +3 位作者 贾海蓉 李付江 LIANG Huizhi 张卫 《科学技术与工程》 北大核心 2026年第2期663-672,共10页
针对现有研究对病理语音特征提取不充分,导致病理语音识别率低的问题,提出了一种基于双分支残差网络的病理语音识别算法。根据构音障碍患者复杂多样的语音症状,采用宽带和窄带频谱图作为网络输入;提出了自适应特征提取残差块,通过全维... 针对现有研究对病理语音特征提取不充分,导致病理语音识别率低的问题,提出了一种基于双分支残差网络的病理语音识别算法。根据构音障碍患者复杂多样的语音症状,采用宽带和窄带频谱图作为网络输入;提出了自适应特征提取残差块,通过全维动态像素注意力卷积从位置、通道、滤波和像素多个维度全面捕捉病理特征;提出了双流互补融合模块,通过加权融合后的特征不仅保留了各分支的关键信息,还通过跨维度交互实现了更优的特征表达,提升了病理语音识别的准确率。在中文病理语音数据集THE-POSSD和西方公开病理语音数据集UA-Speech上进行实验,其结果验证了所提算法的有效性和泛化能力。 展开更多
关键词 病理语音识别 构音障碍 残差网络 动态卷积 加权融合 频谱图
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基于多通道声发射信号融合的水电机组空化故障诊断
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作者 肖龙 肖湘曲 +3 位作者 何志宏 师博威 徐恺 李超顺 《水利学报》 北大核心 2026年第2期293-305,共13页
针对水电机组空化故障因信号单一及噪声干扰而难以识别的问题,本文提出一种基于多通道声发射信号融合的水电机组空化故障诊断方法。首先,在水电机组空化模拟试验台采集空化试验的多通道声发射信号,将多通道声发射信号经数据压缩处理形... 针对水电机组空化故障因信号单一及噪声干扰而难以识别的问题,本文提出一种基于多通道声发射信号融合的水电机组空化故障诊断方法。首先,在水电机组空化模拟试验台采集空化试验的多通道声发射信号,将多通道声发射信号经数据压缩处理形成水电机组空化故障数据集;再将声发射信号变换成梅尔时频图,对频率进行加权处理,以去除高频信号中的噪声和突出低频信号中的特征;最后,结合卷积块注意力模块(CBAM)和D-S证据理论构建出基于决策级融合的多通道深度卷积神经网络模型,进行水电机组空化故障样本的训练和测试,得到故障诊断结果。结果表明,该方法能有效区分不同工况下的空化故障,与其他模型方法对比,具有较高的诊断精度和良好的抗噪能力,对实际中的水电机组空化故障诊断应用有较大参考作用。 展开更多
关键词 多通道信号融合 声发射信号 水电机组空化故障诊断 梅尔时频图 深度卷积神经网络
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基于双低秩调整训练的船舶辐射噪声识别
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作者 马治勋 汤宁 +1 位作者 李璇 郝程鹏 《水下无人系统学报》 2026年第1期47-56,共10页
针对深度学习模型在船舶辐射噪声识别中由数据短缺、域偏移导致的泛化能力受限问题,文中提出了一种权重-特征双低秩自适应迁移学习框架。该框架从模型权重和特征表达2个维度协同开展低秩优化:在权重空间,冻结预训练权重,通过轻量化低秩... 针对深度学习模型在船舶辐射噪声识别中由数据短缺、域偏移导致的泛化能力受限问题,文中提出了一种权重-特征双低秩自适应迁移学习框架。该框架从模型权重和特征表达2个维度协同开展低秩优化:在权重空间,冻结预训练权重,通过轻量化低秩权重调整(WLoRA)模块构建可学习低秩权重参数,以较少参数量完成权重微调,从而降低过拟合风险;在特征空间,基于船舶辐射噪声Mel时频谱的内在低秩结构,通过低秩特征调整(FLoRA)模块对特征进行压缩和重构,从而显式约束模型学习低秩特征。该框架充分考虑了Mel时频谱的固有低秩结构,深入挖掘预训练模型潜力,有效提升了迁移学习性能。通过在ShipsEar和Deepship公开数据集上的实验表明,相对于直接微调预训练模型,所提方法能够有效提升迁移学习在船舶辐射嗓声分类模型中的性能。进一步的消融实验验证了2个低秩模块的有效性。 展开更多
关键词 船舶辐射噪声 双低秩 迁移学习 Mel时频谱
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多层级知识蒸馏增强的轻量化雷达目标识别方法研究
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作者 聂运鹏 崔政 +1 位作者 任伦 高剑 《火控雷达技术》 2026年第1期28-32,37,共6页
基于深度学习的雷达目标识别技术有效突破了传统人工提取特征方法的性能瓶颈,显著提升了识别精度。然而,深度卷积神经网络往往存在参数量大、计算复杂度高的问题,严重制约了其在嵌入式雷达平台等实际场景中的工程化应用。为此,本文提出... 基于深度学习的雷达目标识别技术有效突破了传统人工提取特征方法的性能瓶颈,显著提升了识别精度。然而,深度卷积神经网络往往存在参数量大、计算复杂度高的问题,严重制约了其在嵌入式雷达平台等实际场景中的工程化应用。为此,本文提出一种多层级知识蒸馏增强的轻量化雷达目标识别方法。该方法通过引入深度可分离残差模块构建轻量级卷积神经网络,并借助多层级知识蒸馏机制,从深层教师网络中迁移结构化特征知识,在实现模型规模与计算开销显著压缩的同时,最大限度保持甚至提升识别精度。基于实测数据的实验结果表明,该方法在综合识别率、参数规模、计算复杂度等方面的表现优于对比的经典模型。本文也为深度学习在雷达系统中的工程化部署提供了可行的技术参考。 展开更多
关键词 雷达目标识别 神经网络 时频图谱 轻量化 知识蒸馏
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基于动态风车卷积和残差注意力的航空噪声识别方法
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作者 郭二崇 原霞 +1 位作者 王玉帅 管鲁阳 《机械设计与制造工程》 2026年第4期79-85,共7页
针对复杂背景噪声下航空噪声识别困难的问题,提出一种基于动态风车卷积和残差注意力的航空噪声识别方法。该方法以Log-Mel频谱图为输入,通过动态风车卷积-残差注意力分支与Transformer分支协同分别提取局部时频特征与全局时序依赖关系,... 针对复杂背景噪声下航空噪声识别困难的问题,提出一种基于动态风车卷积和残差注意力的航空噪声识别方法。该方法以Log-Mel频谱图为输入,通过动态风车卷积-残差注意力分支与Transformer分支协同分别提取局部时频特征与全局时序依赖关系,经自适应融合机制实现特征高效融合,完成对航空噪声的识别和分类。基于机场周边实地采集的航空噪声及城市环境噪声构建数据集,将所提方法与8种主流识别方法及3种代表性双分支网络进行对比实验,并通过消融实验验证各核心模块有效性。实验结果表明,该方法在准确率(99.52%)、精确率(99.78%)及F1分数(99.84%)上均优于对比方法,能有效感知噪声时变特性、抑制背景干扰,可为航空噪声实时监测与精准溯源提供可靠技术支撑。 展开更多
关键词 航空噪声识别 动态风车卷积 残差注意力机制 Log-Mel频谱图
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