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Deep hybrid: Multi-graph neural network collaboration for hyperspectral image classification 被引量:4
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作者 Ding Yao Zhang Zhi-li +4 位作者 Zhao Xiao-feng Cai Wei He Fang Cai Yao-ming Wei-Wei Cai 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2023年第5期164-176,共13页
With limited number of labeled samples,hyperspectral image(HSI)classification is a difficult Problem in current research.The graph neural network(GNN)has emerged as an approach to semi-supervised classification,and th... With limited number of labeled samples,hyperspectral image(HSI)classification is a difficult Problem in current research.The graph neural network(GNN)has emerged as an approach to semi-supervised classification,and the application of GNN to hyperspectral images has attracted much attention.However,in the existing GNN-based methods a single graph neural network or graph filter is mainly used to extract HSI features,which does not take full advantage of various graph neural networks(graph filters).Moreover,the traditional GNNs have the problem of oversmoothing.To alleviate these shortcomings,we introduce a deep hybrid multi-graph neural network(DHMG),where two different graph filters,i.e.,the spectral filter and the autoregressive moving average(ARMA)filter,are utilized in two branches.The former can well extract the spectral features of the nodes,and the latter has a good suppression effect on graph noise.The network realizes information interaction between the two branches and takes good advantage of different graph filters.In addition,to address the problem of oversmoothing,a dense network is proposed,where the local graph features are preserved.The dense structure satisfies the needs of different classification targets presenting different features.Finally,we introduce a GraphSAGEbased network to refine the graph features produced by the deep hybrid network.Extensive experiments on three public HSI datasets strongly demonstrate that the DHMG dramatically outperforms the state-ofthe-art models. 展开更多
关键词 Graph neural network Hyperspectral image classification deep hybrid network
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Fast solution to the free return orbit's reachable domain of the manned lunar mission by deep neural network 被引量:2
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作者 YANG Luyi LI Haiyang +1 位作者 ZHANG Jin ZHU Yuehe 《Journal of Systems Engineering and Electronics》 SCIE CSCD 2024年第2期495-508,共14页
It is important to calculate the reachable domain(RD)of the manned lunar mission to evaluate whether a lunar landing site could be reached by the spacecraft. In this paper, the RD of free return orbits is quickly eval... It is important to calculate the reachable domain(RD)of the manned lunar mission to evaluate whether a lunar landing site could be reached by the spacecraft. In this paper, the RD of free return orbits is quickly evaluated and calculated via the classification and regression neural networks. An efficient databasegeneration method is developed for obtaining eight types of free return orbits and then the RD is defined by the orbit’s inclination and right ascension of ascending node(RAAN) at the perilune. A classify neural network and a regression network are trained respectively. The former is built for classifying the type of the RD, and the latter is built for calculating the inclination and RAAN of the RD. The simulation results show that two neural networks are well trained. The classification model has an accuracy of more than 99% and the mean square error of the regression model is less than 0.01°on the test set. Moreover, a serial strategy is proposed to combine the two surrogate models and a recognition tool is built to evaluate whether a lunar site could be reached. The proposed deep learning method shows the superiority in computation efficiency compared with the traditional double two-body model. 展开更多
关键词 manned lunar mission free return orbit reachable domain(RD) deep neural network computation efficiency
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Deep neural network based classification of rolling element bearings and health degradation through comprehensive vibration signal analysis 被引量:1
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作者 KULEVOME Delanyo Kwame Bensah WANG Hong WANG Xuegang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2022年第1期233-246,共14页
Rolling element bearings are machine components used to allow circular movement and hence deliver forces between components of machines used in diverse areas of industry.The likelihood of failure has the propensity of... Rolling element bearings are machine components used to allow circular movement and hence deliver forces between components of machines used in diverse areas of industry.The likelihood of failure has the propensity of increasing under prolonged operation and varying working conditions.Hence, the accurate fault severity categorization of bearings is vital in diagnosing faults that arise in rotating machinery.The variability and complexity of the recorded vibration signals pose a great hurdle to distinguishing unique characteristic fault features.In this paper, the efficacy and the leverage of a pre-trained convolutional neural network(CNN) is harnessed in the implementation of a robust fault classification model.In the absence of sufficient data, this method has a high-performance rate.Initially, a modified VGG16 architecture is used to extract discriminating features from new samples and serves as input to a classifier.The raw vibration data are strategically segmented and transformed into two representations which are trained separately and jointly.The proposed approach is carried out on bearing vibration data and shows high-performance results.In addition to successfully implementing a robust fault classification model, a prognostic framework is developed by constructing a health indicator(HI) under varying operating conditions for a given fault condition. 展开更多
关键词 bearing failure deep neural network fault classification health indicator prognostics and health management
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Deep residual systolic network for massive MIMO channel estimation by joint training strategies of mixed-SNR and mixed-scenarios
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作者 SUN Meng JING Qingfeng ZHONG Weizhi 《Journal of Systems Engineering and Electronics》 2025年第4期903-913,共11页
The fifth-generation (5G) communication requires a highly accurate estimation of the channel state information (CSI)to take advantage of the massive multiple-input multiple-output(MIMO) system. However, traditional ch... The fifth-generation (5G) communication requires a highly accurate estimation of the channel state information (CSI)to take advantage of the massive multiple-input multiple-output(MIMO) system. However, traditional channel estimation methods do not always yield reliable estimates. The methodology of this paper consists of deep residual shrinkage network (DRSN)neural network-based method that is used to solve this problem.Thus, the channel estimation approach, based on DRSN with its learning ability of noise-containing data, is first introduced. Then,the DRSN is used to train the noise reduction process based on the results of the least square (LS) channel estimation while applying the pilot frequency subcarriers, where the initially estimated subcarrier channel matrix is considered as a three-dimensional tensor of the DRSN input. Afterward, a mixed signal to noise ratio (SNR) training data strategy is proposed based on the learning ability of DRSN under different SNRs. Moreover, a joint mixed scenario training strategy is carried out to test the multi scenarios robustness of DRSN. As for the findings, the numerical results indicate that the DRSN method outperforms the spatial-frequency-temporal convolutional neural networks (SF-CNN)with similar computational complexity and achieves better advantages in the full SNR range than the minimum mean squared error (MMSE) estimator with a limited dataset. Moreover, the DRSN approach shows robustness in different propagation environments. 展开更多
关键词 massive multiple-input multiple-output(MIMO) channel estimation deep residual shrinkage network(DRSN) deep convolutional neural network(CNN).
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3D laser scanning strategy based on cascaded deep neural network
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作者 Xiao-bin Xu Ming-hui Zhao +4 位作者 Jian Yang Yi-yang Xiong Feng-lin Pang Zhi-ying Tan Min-zhou Luo 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2022年第9期1727-1739,共13页
A 3D laser scanning strategy based on cascaded deep neural network is proposed for the scanning system converted from 2D Lidar with a pitching motion device. The strategy is aimed at moving target detection and monito... A 3D laser scanning strategy based on cascaded deep neural network is proposed for the scanning system converted from 2D Lidar with a pitching motion device. The strategy is aimed at moving target detection and monitoring. Combining the device characteristics, the strategy first proposes a cascaded deep neural network, which inputs 2D point cloud, color image and pitching angle. The outputs are target distance and speed classification. And the cross-entropy loss function of network is modified by using focal loss and uniform distribution to improve the recognition accuracy. Then a pitching range and speed model are proposed to determine pitching motion parameters. Finally, the adaptive scanning is realized by integral separate speed PID. The experimental results show that the accuracies of the improved network target detection box, distance and speed classification are 90.17%, 96.87% and 96.97%, respectively. The average speed error of the improved PID is 0.4239°/s, and the average strategy execution time is 0.1521 s.The range and speed model can effectively reduce the collection of useless information and the deformation of the target point cloud. Conclusively, the experimental of overall scanning strategy show that it can improve target point cloud integrity and density while ensuring the capture of target. 展开更多
关键词 Scanning strategy Cascaded deep neural network Improved cross entropy loss function Pitching range and speed model Integral separate speed PID
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Automatic Calcified Plaques Detection in the OCT Pullbacks Using Convolutional Neural Networks 被引量:2
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作者 Chunliu He Yifan Yin +2 位作者 Jiaqiu Wang Biao Xu Zhiyong Li 《医用生物力学》 EI CAS CSCD 北大核心 2019年第A01期109-110,共2页
Background Coronary artery calcification is a well-known marker of atherosclerotic plaque burden.High-resolution intravascular optical coherence tomography(OCT)imaging has shown the potential to characterize the detai... Background Coronary artery calcification is a well-known marker of atherosclerotic plaque burden.High-resolution intravascular optical coherence tomography(OCT)imaging has shown the potential to characterize the details of coronary calcification in vivo.In routine clinical practice,it is a time-consuming and laborious task for clinicians to review the over 250 images in a single pullback.Besides,the imbalance label distribution within the entire pullbacks is another problem,which could lead to the failure of the classifier model.Given the success of deep learning methods with other imaging modalities,a thorough understanding of calcified plaque detection using Convolutional Neural Networks(CNNs)within pullbacks for future clinical decision was required.Methods All 33 IVOCT clinical pullbacks of 33 patients were taken from Affiliated Drum Tower Hospital,Nanjing University between December 2017 and December 2018.For ground-truth annotation,three trained experts determined the type of plaque that was present in a B-Scan.The experts assigned the labels'no calcified plaque','calcified plaque'for each OCT image.All experts were provided the all images for labeling.The final label was determined based on consensus between the experts,different opinions on the plaque type were resolved by asking the experts for a repetition of their evaluation.Before the implement of algorithm,all OCT images was resized to a resolution of 300×300,which matched the range used with standard architectures in the natural image domain.In the study,we randomly selected 26 pullbacks for training,the remaining data were testing.While,imbalance label distribution within entire pullbacks was great challenge for various CNNs architecture.In order to resolve the problem,we designed the following experiment.First,we fine-tuned twenty different CNNs architecture,including customize CNN architectures and pretrained CNN architectures.Considering the nature of OCT images,customize CNN architectures were designed that the layers were fewer than 25 layers.Then,three with good performance were selected and further deep fine-tuned to train three different models.The difference of CNNs was mainly in the model architecture,such as depth-based residual networks,width-based inception networks.Finally,the three CNN models were used to majority voting,the predicted labels were from the most voting.Areas under the receiver operating characteristic curve(ROC AUC)were used as the evaluation metric for the imbalance label distribution.Results The imbalance label distribution within pullbacks affected both convergence during the training phase and generalization of a CNN model.Different labels of OCT images could be classified with excellent performance by fine tuning parameters of CNN architectures.Overall,we find that our final result performed best with an accuracy of 90%of'calcified plaque'class,which the numbers were less than'no calcified plaque'class in one pullback.Conclusions The obtained results showed that the method is fast and effective to classify calcific plaques with imbalance label distribution in each pullback.The results suggest that the proposed method could be facilitating our understanding of coronary artery calcification in the process of atherosclerosis andhelping guide complex interventional strategies in coronary arteries with superficial calcification. 展开更多
关键词 CALCIFIED PLAQUE INTRAVASCULAR optical coherence tomography deep learning IMBALANCE LABEL distribution convolutional neural networks
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Uplink NOMA signal transmission with convolutional neural networks approach 被引量:3
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作者 LIN Chuan CHANG Qing LI Xianxu 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2020年第5期890-898,共9页
Non-orthogonal multiple access(NOMA), featuring high spectrum efficiency, massive connectivity and low latency, holds immense potential to be a novel multi-access technique in fifth-generation(5G) communication. Succe... Non-orthogonal multiple access(NOMA), featuring high spectrum efficiency, massive connectivity and low latency, holds immense potential to be a novel multi-access technique in fifth-generation(5G) communication. Successive interference cancellation(SIC) is proved to be an effective method to detect the NOMA signal by ordering the power of received signals and then decoding them. However, the error accumulation effect referred to as error propagation is an inevitable problem. In this paper,we propose a convolutional neural networks(CNNs) approach to restore the desired signal impaired by the multiple input multiple output(MIMO) channel. Especially in the uplink NOMA scenario,the proposed method can decode multiple users' information in a cluster instantaneously without any traditional communication signal processing steps. Simulation experiments are conducted in the Rayleigh channel and the results demonstrate that the error performance of the proposed learning system outperforms that of the classic SIC detection. Consequently, deep learning has disruptive potential to replace the conventional signal detection method. 展开更多
关键词 non-orthogonal multiple access(NOMA) deep learning(DL) convolutional neural networks(CNNs) signal detection
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基于CNN-Informer和DeepLIFT的电力系统频率稳定评估方法
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作者 张异浩 韩松 荣娜 《电力自动化设备》 北大核心 2025年第7期165-171,共7页
为解决扰动发生后电力系统频率稳定评估精度低且预测时间长的问题,提出了一种电力系统频率稳定评估方法。该方法改进层次时间戳机制,有效捕捉了频率响应在不同时间尺度下的相关性;利用深度学习重要特征技术对输入特征进行筛选,简化了数... 为解决扰动发生后电力系统频率稳定评估精度低且预测时间长的问题,提出了一种电力系统频率稳定评估方法。该方法改进层次时间戳机制,有效捕捉了频率响应在不同时间尺度下的相关性;利用深度学习重要特征技术对输入特征进行筛选,简化了数据维度并提升了模型的训练效率和预测性能;结合卷积神经网络与Informer网络,基于编码器与解码器的协同训练,构建适用于多场景的频率稳定评估框架。以修改后的新英格兰10机39节点系统和WECC 29机179节点系统为算例,仿真结果表明,所提方法在时效性和准确性方面具有显著的优势,并在多种实验条件下展现出良好的鲁棒性和适应性。 展开更多
关键词 电力系统 频率稳定评估 深度学习 时序数据 层次时间戳 蒸馏机制 卷积神经网络
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基于Deep Belief Nets的中文名实体关系抽取 被引量:73
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作者 陈宇 郑德权 赵铁军 《软件学报》 EI CSCD 北大核心 2012年第10期2572-2585,共14页
关系抽取是信息抽取的一项子任务,用以识别文本中实体之间的语义关系.提出一种利用DBN(deepbelief nets)模型进行基于特征的实体关系抽取方法,该模型是由多层无监督的RBM(restricted Boltzmann machine)网络和一层有监督的BP(back-propa... 关系抽取是信息抽取的一项子任务,用以识别文本中实体之间的语义关系.提出一种利用DBN(deepbelief nets)模型进行基于特征的实体关系抽取方法,该模型是由多层无监督的RBM(restricted Boltzmann machine)网络和一层有监督的BP(back-propagation)网络组成的神经网络分类器.RBM网络以确保特征向量映射达到最优,最后一层BP网络分类RBM网络的输出特征向量,从而训练实体关系分类器.在ACE04语料上进行的相关测试,一方面证明了字特征比词特征更适用于中文关系抽取任务;另一方面设计了3组不同的实验,分别使用正确的实体类别信息、通过实体类型分类器得到实体类型信息和不使用实体类型信息,用以比较实体类型信息对关系抽取效果的影响.实验结果表明,DBN非常适用于基于高维空间特征的信息抽取任务,获得的效果比SVM和反向传播网络更好. 展开更多
关键词 DBN(deep BELIEF nets) 神经网络 关系抽取 深层网络 字特征
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面向入侵检测系统的Deep Belief Nets模型 被引量:23
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作者 高妮 高岭 贺毅岳 《系统工程与电子技术》 EI CSCD 北大核心 2016年第9期2201-2207,共7页
连续的网络流量会导致海量数据问题,这为入侵检测提出了新的挑战。为此,提出一种面向入侵检测系统的深度信念网络(deep belief nets oriented to the intrusion detection system,DBN-IDS)模型。首先,通过无监督的、贪婪的算法自底向上... 连续的网络流量会导致海量数据问题,这为入侵检测提出了新的挑战。为此,提出一种面向入侵检测系统的深度信念网络(deep belief nets oriented to the intrusion detection system,DBN-IDS)模型。首先,通过无监督的、贪婪的算法自底向上逐层训练每一个受限玻尔兹曼机(restricted Boltzmann machine,RBM)网络,使得大量高维、非线性的无标签数据映射为最优的低维表示;然后利用带标签数据被附加到顶层,通过反向传播(back propagation,BP)算法自顶向下有监督地对RBM网络输出的低维表示进行分类,并同时对RBM网络进行微调;最后,利用NSLKDD数据集对模型参数和性能进行了深入的分析。实验结果表明,DBN-IDS分类效果优于支持向量机(support vector machine,SVM)和神经网络(neural network,NN),适用于高维、非线性的海量入侵数据的分类处理。 展开更多
关键词 入侵检测 神经网络 深度信念网络
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基于BP神经网络的Deep Web实体识别方法 被引量:5
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作者 徐红艳 党晓婉 +1 位作者 冯勇 李军平 《计算机应用》 CSCD 北大核心 2013年第3期776-779,共4页
针对现有实体识别方法自动化水平不高、适应性差等不足,提出一种基于反向传播(BP)神经网络的Deep Web实体识别方法。该方法将实体分块后利用反向传播神经网络的自主学习特性,将语义块相似度值作为反向传播神经网络的输入,通过训练得到... 针对现有实体识别方法自动化水平不高、适应性差等不足,提出一种基于反向传播(BP)神经网络的Deep Web实体识别方法。该方法将实体分块后利用反向传播神经网络的自主学习特性,将语义块相似度值作为反向传播神经网络的输入,通过训练得到正确的实体识别模型,从而实现对异构数据源的自动化实体识别。实验结果表明,所提方法的应用不仅能够减少实体识别中的人工干预,而且能够提高实体识别的效率和准确率。 展开更多
关键词 deep WEB 反向传播神经网络 实体识别 相似度 语义块
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基于改进DeepLabV3+算法的遥感影像建筑物变化检测 被引量:11
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作者 齐建伟 王伟峰 +1 位作者 张乐 王光彦 《测绘通报》 CSCD 北大核心 2023年第4期145-149,共5页
变化检测是遥感测绘领域的重要任务,作为执法依据,在耕地非农化等场景监测中发挥重大作用。近年来,使用人工智能相关技术进行变化检测,常见的技术方案为叠加两期影像,再使用语义分割算法求解变化区域。本文使用变化检测数据集LEVIR-CD... 变化检测是遥感测绘领域的重要任务,作为执法依据,在耕地非农化等场景监测中发挥重大作用。近年来,使用人工智能相关技术进行变化检测,常见的技术方案为叠加两期影像,再使用语义分割算法求解变化区域。本文使用变化检测数据集LEVIR-CD作为试验数据,在DeepLabV3+算法基础上,针对变化检测场景特点,对模型结构进行改进。以DeepLabV3+的孪生网络为主干,使用多层级特征交互操作,充分融合图像特征。结果表明,改进的网络结构更加适合变化检测任务场景。 展开更多
关键词 变化检测 深度学习 卷积神经网络 语义分割
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融合SOM功能聚类与DeepFM质量预测的API服务推荐方法 被引量:25
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作者 曹步清 肖巧翔 +1 位作者 张祥平 刘建勋 《计算机学报》 EI CSCD 北大核心 2019年第6期1367-1383,共17页
由于越来越多的企业和组织纷纷将自己的业务、数据或资源封装成服务,并通过API的形式发布到互联网上,API服务的数量呈现倍增趋势.在此背景下,如何从这样一个大规模的API服务集合中,快速有效地找到满足开发者用户Mashup需求的API服务,已... 由于越来越多的企业和组织纷纷将自己的业务、数据或资源封装成服务,并通过API的形式发布到互联网上,API服务的数量呈现倍增趋势.在此背景下,如何从这样一个大规模的API服务集合中,快速有效地找到满足开发者用户Mashup需求的API服务,已成为一个挑战性问题.为此,本文聚焦于“推荐合适的API服务以构建高质量Mashup应用”问题,以面向服务内容的功能聚类为基础,结合基于多维服务质量的评分预测,提出一种融合SOM功能聚类与DeepFM质量预测的API服务推荐方法,用于创建高质量的Mashup应用.该方法首先采用Wikipedia 作为外部语料库扩充API服务文档的内容并利用HDP模型建模其主题分布.通过WikiExtractor抽取出Wikipedia中的语料数据,并利用Word2vec工具训练该语料数据获得其词向量模型.利用训练好的Wikipedia词向量模型对API服务描述文档进行扩充.针对扩充后的API服务文档,使用HDP主题建模技术,挖掘出其隐含的主题信息,自动确定最优主题个数,以准确地度量API服务文档之间的语义相似度.然后,采用SOM神经网络进行面向主题的API服务聚类.在HDP主题建模之后,对获得的“API服务文档-主题”向量采用SOM神经网络聚类算法进行主题聚类,通过自组织过程,将众多的API服务划分到不同的功能类簇中,每一个功能类中包含多个具有相似功能的API服务.接下来,针对API服务类簇中所有具有相似功能的API服务,利用DeepFM模型建模和挖掘其多维QoS属性之间的复杂交互关系,预测并排序API服务的质量得分.DeepFM模型自动地提取出QoS数据中(包括流行度、共现次数等)的有效的特征组合关系(包括高阶特征和低阶特征组合关系),预测并排序每一个API服务相对于目标Mashup应用的质量得分,推荐得分靠前的 N 个API服务给开发者用户.最后,在真实Web服务数据集上进行了实验比较与分析,实验结果表明:本文方法在准确率、召回率、纯度、熵、DCG、HMD等性能方面都要整体优于其它六种方法.相比于TF-IDF、LDA-K-CF、LDA-K-FM、HDP-K-CF、HDP-K-FM、HDP-S - FM,本文方法的准确率指标分别提升了196.2%、49%、33.8%、31.2%、12.3%、10.3%,DCG值分别提升了161.8%、26.4%、18.6%、16.2%、6.73%、4.5%. 展开更多
关键词 API推荐 Mashup应用 HDP主题模型 SOM神经网络 深度因子分解机
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基于轻量级MobileNet-SSD和MobileNetV2-DeeplabV3+的绝缘子故障识别方法 被引量:25
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作者 汝承印 张仕海 +2 位作者 张子淼 朱冶诚 梁玉真 《高电压技术》 EI CAS CSCD 北大核心 2022年第9期3670-3679,共10页
当前的深度学习算法多存在模型参数量大、对硬件要求较高等方面的问题,难以嵌入到无人机等移动设备。为了使无人机搭载轻量级模型对架空输电线路中的绝缘子进行故障识别,提出了一种轻量级MobileNet-SSD目标检测网络与轻量级MobileNetV2-... 当前的深度学习算法多存在模型参数量大、对硬件要求较高等方面的问题,难以嵌入到无人机等移动设备。为了使无人机搭载轻量级模型对架空输电线路中的绝缘子进行故障识别,提出了一种轻量级MobileNet-SSD目标检测网络与轻量级MobileNetV2-DeeplabV3+图像分割网络相结合的绝缘子自爆故障识别、分割方法。该方法首先利用MobileNet-SSD对绝缘子进行精确分类及定位,再结合MobileNetV2-DeeplabV3+语义分割算法对绝缘子自爆图片进行分割。实例表明:该方法能够快速地识别出绝缘子,并可以对各种复杂背景下的自爆绝缘子进行准确分割,同时具备模型参数量小、效率高、鲁棒性强等特征,可在一定程度上满足无人机的嵌入式应用要求,提高基于无人机对架空输电线路的巡检精度和实时性。 展开更多
关键词 深度学习 绝缘子故障 轻量级卷积神经网络 目标检测 图像分割 无人机
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Deep-SBFL:基于频谱的深度神经网络缺陷定位方法 被引量:5
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作者 李铮 崔展齐 +3 位作者 陈翔 王荣存 刘建宾 郑丽伟 《软件学报》 EI CSCD 北大核心 2023年第5期2231-2250,共20页
深度神经网络已经在自动驾驶和智能医疗等领域取得了广泛的应用.与传统软件一样,深度神经网络也不可避免地包含缺陷,如果做出错误决定,可能会造成严重后果.因此,深度神经网络的质量保障受到了广泛关注.然而,深度神经网络与传统软件存在... 深度神经网络已经在自动驾驶和智能医疗等领域取得了广泛的应用.与传统软件一样,深度神经网络也不可避免地包含缺陷,如果做出错误决定,可能会造成严重后果.因此,深度神经网络的质量保障受到了广泛关注.然而,深度神经网络与传统软件存在较大差异,传统软件质量保障方法无法直接应用于深度神经网络,需要设计有针对性的质量保障方法.软件缺陷定位是保障软件质量的重要方法之一,基于频谱的缺陷定位方法在传统软件的缺陷定位中取得了很好的效果,但无法直接应用于深度神经网络.在传统软件缺陷定位方法的基础上提出了一种基于频谱的深度神经网络缺陷定位方法Deep-SBFL.该方法首先通过收集深度神经网络的神经元输出信息和预测结果作为频谱信息;然后将频谱信息进行处理作为贡献信息,以用于量化神经元对预测结果所做的贡献;最后提出了针对深度神经网络缺陷定位的怀疑度公式,基于贡献信息计算深度神经网络中神经元的怀疑度并进行排序,以找出最有可能存在缺陷的神经元.为验证该方法的有效性,以EInspect@n(结果排序列表前n个位置内成功定位的缺陷数)和EXAM(在找到缺陷元素之前必须检查元素的百分比)作为评测指标,在使用MNIST数据集训练的深度神经网络上进行了实验.结果表明,该方法可有效定位深度神经网络中不同类型的缺陷. 展开更多
关键词 软件质量保障 软件缺陷定位 深度神经网络(DNN) 频谱 怀疑度
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基于DeepFM模型的广告推荐系统研究 被引量:6
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作者 郁豹 李振华 +1 位作者 张凯 胡安翔 《计算机应用与软件》 北大核心 2019年第7期307-310,316,共5页
随着移动设备普及,移动互联网行业进入了高速发展阶段,信息量和用户量急剧增长,如何在有限的资源下准确地分析用户行为,提升广告效果并保障用户体验显得尤为重要。提出一种由深度神经网络(Deep neural network)和因子分解机(Factorizati... 随着移动设备普及,移动互联网行业进入了高速发展阶段,信息量和用户量急剧增长,如何在有限的资源下准确地分析用户行为,提升广告效果并保障用户体验显得尤为重要。提出一种由深度神经网络(Deep neural network)和因子分解机(Factorization machine)组成的模型——DeepFM模型来实现社交广告的个性化推荐,其中因子分解机部分主要是提取一阶二阶特征,深度神经网络部分主要提取高阶特征。最终通过研究发现,DeepFM模型比逻辑回归模型(LR模型)及因子分解机(FM模型)的效果都要好。 展开更多
关键词 deepFM模型 特征提取 广告推荐 深度神经网络 因子分解机
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DeepTriage:一种基于深度学习的软件缺陷自动分配方法 被引量:10
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作者 宋化志 马于涛 《小型微型计算机系统》 CSCD 北大核心 2019年第1期126-132,共7页
在软件开发和维护过程中,缺陷修复工作有一项必不可少的任务,那就是缺陷分配.在大规模的软件项目中,基于文本分类的自动分配技术已被用于提高缺陷分配的效率,从而减少人工分配的等待时间和成本.考虑到缺陷报告文本内容的复杂性,本文提... 在软件开发和维护过程中,缺陷修复工作有一项必不可少的任务,那就是缺陷分配.在大规模的软件项目中,基于文本分类的自动分配技术已被用于提高缺陷分配的效率,从而减少人工分配的等待时间和成本.考虑到缺陷报告文本内容的复杂性,本文提出了一种基于深度学习的缺陷自动分配方法,在词向量化后通过卷积神经网络对缺陷报告文本进行特征提取,然后完成分类任务.在Eclipse和Mozilla两个数据集上的结果表明,与传统的支持向量机和基于递归神经网络的方法相比,文本所提方法在准确率指标上均优于上述基准方法,而且多层平行的卷积神经网络结构比单层的卷积神经网络结构在预测效果上更好. 展开更多
关键词 缺陷分配 深度学习 卷积神经网络 递归神经网络 支持向量机
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改进DeeplabV3+模型的河流水体提取 被引量:3
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作者 张晗涛 胡荣明 +1 位作者 姜友谊 胡亚轩 《遥感信息》 CSCD 北大核心 2023年第3期146-152,共7页
为了探究深度学习DeeplabV3+模型在河流水体提取的潜力,分别构建了ResNet-50、ResNet-101、ResNet-152、Xception共4种不同骨架网络的DeeplabV3+模型,开展河流水体提取研究。通过河流水体提取结果对比分析,确定了最优骨架网络模型为ResN... 为了探究深度学习DeeplabV3+模型在河流水体提取的潜力,分别构建了ResNet-50、ResNet-101、ResNet-152、Xception共4种不同骨架网络的DeeplabV3+模型,开展河流水体提取研究。通过河流水体提取结果对比分析,确定了最优骨架网络模型为ResNet-50,在此基础上提出了改进的DeeplabV3+模型,并与最邻近分类法、随机森林分类法、支持向量机分类法、原始DeeplabV3+模型法等分类方法的分类结果进行比较。结果表明:改进的DeeplabV3+网络模型能有效提取河流水体目标,增强小面积河流水体识别能力,减少河流水体漏分现象,提高河流水体提取效果。改进后的DeeplabV3+网络模型在高分辨率遥感影像河流水体提取方面具有可行性,为后续该领域的进一步研究应用提供了参考。 展开更多
关键词 深度学习 高分辨率遥感影像 河流水体提取 deeplabV3+ 卷积神经网络
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基于DeepLabv3+与GF-2高分辨率影像的露天煤矿区土地利用分类 被引量:21
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作者 张成业 李飞跃 +4 位作者 李军 邢江河 杨金中 郭俊廷 杜守航 《煤田地质与勘探》 CAS CSCD 北大核心 2022年第6期94-103,共10页
遥感与深度学习为及时掌握露天煤矿区土地利用情况提供了高效率的技术手段。基于国产高分二号(GF-2)卫星高分辨率遥感影像,利用深度学习DeepLabv3+模型实现露天煤矿区土地利用识别,并与U-Net、FCN、随机森林、支持向量机、最大似然法等... 遥感与深度学习为及时掌握露天煤矿区土地利用情况提供了高效率的技术手段。基于国产高分二号(GF-2)卫星高分辨率遥感影像,利用深度学习DeepLabv3+模型实现露天煤矿区土地利用识别,并与U-Net、FCN、随机森林、支持向量机、最大似然法等方法进行对比。首先,制作高分辨率影像样本数据,通过敏感性测试确定适合研究区露天煤矿场景的样本最佳裁剪尺寸和方式;然后,训练深度神经网络DeepLabv3+模型,进行土地利用识别实验;最后,比较不同方法的识别结果。结果表明:研究区露天煤矿场景下的样本最佳裁剪尺寸为512像素×512像素,最佳裁剪方式为随机裁剪。采用的DeepLabv3+模型对露天煤矿区土地利用识别的总体精度、Kappa系数分别为80.10%、0.73,均优于U-Net、FCN、随机森林、支持向量机、最大似然法等方法的识别精度。DeepLabv3+模型的识别速度与上述5种方法保持在同一数量级,验证了DeepLabv3+模型和GF-2卫星影像在露天煤矿区土地利用识别中的可行性,对露天煤矿区生态环境监测与修复规划具有重要意义。 展开更多
关键词 露天煤矿区 土地利用 高分辨率影像 深度学习 神经网络 高分二号卫星 自动识别 识别精度
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Using deep learning to detect small targets in infrared oversampling images 被引量:15
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作者 LIN Liangkui WANG Shaoyou TANG Zhongxing 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2018年第5期947-952,共6页
According to the oversampling imaging characteristics, an infrared small target detection method based on deep learning is proposed. A 7-layer deep convolutional neural network(CNN) is designed to automatically extrac... According to the oversampling imaging characteristics, an infrared small target detection method based on deep learning is proposed. A 7-layer deep convolutional neural network(CNN) is designed to automatically extract small target features and suppress clutters in an end-to-end manner. The input of CNN is an original oversampling image while the output is a cluttersuppressed feature map. The CNN contains only convolution and non-linear operations, and the resolution of the output feature map is the same as that of the input image. The L1-norm loss function is used, and a mass of training data is generated to train the network effectively. Results show that compared with several baseline methods, the proposed method improves the signal clutter ratio gain and background suppression factor by 3–4 orders of magnitude, and has more powerful target detection performance. 展开更多
关键词 infrared small target detection OVERSAMPLING deep learning convolutional neural network(CNN)
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