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Application of Self-Organizing Feature Map Neural Network Based on K-means Clustering in Network Intrusion Detection 被引量:5
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作者 Ling Tan Chong Li +1 位作者 Jingming Xia Jun Cao 《Computers, Materials & Continua》 SCIE EI 2019年第7期275-288,共14页
Due to the widespread use of the Internet,customer information is vulnerable to computer systems attack,which brings urgent need for the intrusion detection technology.Recently,network intrusion detection has been one... Due to the widespread use of the Internet,customer information is vulnerable to computer systems attack,which brings urgent need for the intrusion detection technology.Recently,network intrusion detection has been one of the most important technologies in network security detection.The accuracy of network intrusion detection has reached higher accuracy so far.However,these methods have very low efficiency in network intrusion detection,even the most popular SOM neural network method.In this paper,an efficient and fast network intrusion detection method was proposed.Firstly,the fundamental of the two different methods are introduced respectively.Then,the selforganizing feature map neural network based on K-means clustering(KSOM)algorithms was presented to improve the efficiency of network intrusion detection.Finally,the NSLKDD is used as network intrusion data set to demonstrate that the KSOM method can significantly reduce the number of clustering iteration than SOM method without substantially affecting the clustering results and the accuracy is much higher than Kmeans method.The Experimental results show that our method can relatively improve the accuracy of network intrusion and significantly reduce the number of clustering iteration. 展开更多
关键词 K-means clustering self-organizing feature map neural network network security intrusion detection NSL-KDD data set
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CLUSTERING PROPERTIES OF FUZZY KOHONEN'S SELF-ORGANIZING FEATURE MAPS 被引量:3
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作者 彭磊 胡征 《Journal of Electronics(China)》 1995年第2期124-133,共10页
A new clustering algorithm called fuzzy self-organizing feature maps is introduced. It can process not only the exact digital inputs, but also the inexact or fuzzy non-digital inputs, such as natural language inputs. ... A new clustering algorithm called fuzzy self-organizing feature maps is introduced. It can process not only the exact digital inputs, but also the inexact or fuzzy non-digital inputs, such as natural language inputs. Simulation results show that the new algorithm is superior to original Kohonen’s algorithm in clustering performance and learning rate. 展开更多
关键词 self-organizing feature mapS FUZZY sets MEMBERSHIP measure FUZZINESS mea-sure
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The Testing Intelligence System Based on Factor Models and Self-Organizing Feature Maps
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作者 A.S. Panfilova L.S. Kuravsky 《Journal of Mathematics and System Science》 2013年第7期353-358,共6页
Presented is a new testing system based on using the factor models and self-organizing feature maps as well as the method of filtering undesirable environment influence. Testing process is described by the factor mode... Presented is a new testing system based on using the factor models and self-organizing feature maps as well as the method of filtering undesirable environment influence. Testing process is described by the factor model with simplex structure, which represents the influences of genetics and environmental factors on the observed parameters - the answers to the questions of the test subjects in one case and for the time, which is spent on responding to each test question to another. The Monte Carlo method is applied to get sufficient samples for training self-organizing feature maps, which are used to estimate model goodness-of-fit measures and, consequently, ability level. A prototype of the system is implemented using the Raven's Progressive Matrices (Advanced Progressive Matrices) - an intelligence test of abstract reasoning. Elimination of environment influence results is performed by comparing the observed and predicted answers to the test tasks using the Kalman filter, which is adapted to solve the problem. The testing procedure is optimized by reducing the number of tasks using the distribution of measures to belong to different ability levels after performing each test task provided the required level of conclusion reliability is obtained. 展开更多
关键词 self-organizing feature maps intelligence testing Kalman filter
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Feature Extraction of Kernel Regress Reconstruction for Fault Diagnosis Based on Self-organizing Manifold Learning 被引量:3
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作者 CHEN Xiaoguang LIANG Lin +1 位作者 XU Guanghua LIU Dan 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2013年第5期1041-1049,共9页
The feature space extracted from vibration signals with various faults is often nonlinear and of high dimension.Currently,nonlinear dimensionality reduction methods are available for extracting low-dimensional embeddi... The feature space extracted from vibration signals with various faults is often nonlinear and of high dimension.Currently,nonlinear dimensionality reduction methods are available for extracting low-dimensional embeddings,such as manifold learning.However,these methods are all based on manual intervention,which have some shortages in stability,and suppressing the disturbance noise.To extract features automatically,a manifold learning method with self-organization mapping is introduced for the first time.Under the non-uniform sample distribution reconstructed by the phase space,the expectation maximization(EM) iteration algorithm is used to divide the local neighborhoods adaptively without manual intervention.After that,the local tangent space alignment(LTSA) algorithm is adopted to compress the high-dimensional phase space into a more truthful low-dimensional representation.Finally,the signal is reconstructed by the kernel regression.Several typical states include the Lorenz system,engine fault with piston pin defect,and bearing fault with outer-race defect are analyzed.Compared with the LTSA and continuous wavelet transform,the results show that the background noise can be fully restrained and the entire periodic repetition of impact components is well separated and identified.A new way to automatically and precisely extract the impulsive components from mechanical signals is proposed. 展开更多
关键词 feature extraction manifold learning self-organize mapping kernel regression local tangent space alignment
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Pattern recognition of messily grown nanowire morphologies applying multi-layer connected self-organized feature maps
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作者 Qing Liu Hejun Li +1 位作者 Yulei Zhang Zhigang Zhao 《Journal of Materials Science & Technology》 SCIE EI CAS CSCD 2019年第5期946-956,共11页
Multi-layer connected self-organizing feature maps(SOFMs) and the associated learning procedure were proposed to achieve efficient recognition and clustering of messily grown nanowire morphologies. The network is made... Multi-layer connected self-organizing feature maps(SOFMs) and the associated learning procedure were proposed to achieve efficient recognition and clustering of messily grown nanowire morphologies. The network is made up by several paratactic 2-D SOFMs with inter-layer connections. By means of Monte Carlo simulations, virtual morphologies were generated to be the training samples. With the unsupervised inner-layer and inter-layer learning, the neural network can cluster different morphologies of messily grown nanowires and build connections between the morphological microstructure and geometrical features of nanowires within. Then, the as-proposed networks were applied on recognitions and quantitative estimations of the experimental morphologies. Results show that the as-trained SOFMs are able to cluster the morphologies and recognize the average length and quantity of the messily grown nanowires within. The inter-layer connections between winning neurons on each competitive layer have significant influence on the relations between the microstructure of the morphology and physical parameters of the nanowires within. 展开更多
关键词 Artificial neural networks self-organizing feature maps MONTE Carlo simulation Pattern recognition Messily grown NANOWIRE MORPHOLOGIES
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Ant Colony Algorithm for Path Planning Based on Grid Feature Point Extraction 被引量:11
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作者 李二超 齐款款 《Journal of Shanghai Jiaotong university(Science)》 EI 2023年第1期86-99,共14页
Aimed at the problems of a traditional ant colony algorithm,such as the path search direction and field of view,an inability to find the shortest path,a propensity toward deadlock and an unsmooth path,an ant colony al... Aimed at the problems of a traditional ant colony algorithm,such as the path search direction and field of view,an inability to find the shortest path,a propensity toward deadlock and an unsmooth path,an ant colony algorithm for use in a new environment is proposed.First,the feature points of an obstacle are extracted to preprocess the grid map environment,which can avoid entering a trap and solve the deadlock problem.Second,these feature points are used as pathfinding access nodes to reduce the node access,with more moving directions to be selected,and the locations of the feature points to be selected determine the range of the pathfinding field of view.Then,based on the feature points,an unequal distribution of pheromones and a two-way parallel path search are used to improve the construction efficiency of the solution,an improved heuristic function is used to enhance the guiding role of the path search,and the pheromone volatilization coefficient is dynamically adjusted to avoid a premature convergence of the algorithm.Third,a Bezier curve is used to smooth the shortest path obtained.Finally,using grid maps with a different complexity and different scales,a simulation comparing the results of the proposed algorithm with those of traditional and other improved ant colony algorithms verifies its feasibility and superiority. 展开更多
关键词 ant colony algorithm mobile robot path planning feature points Bezier curve grid map
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English-Chinese Neural Machine Translation Based on Self-organizing Mapping Neural Network and Deep Feature Matching
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作者 Shu Ma 《IJLAI Transactions on Science and Engineering》 2024年第3期1-8,共8页
The traditional Chinese-English translation model tends to translate some source words repeatedly,while mistakenly ignoring some words.Therefore,we propose a novel English-Chinese neural machine translation based on s... The traditional Chinese-English translation model tends to translate some source words repeatedly,while mistakenly ignoring some words.Therefore,we propose a novel English-Chinese neural machine translation based on self-organizing mapping neural network and deep feature matching.In this model,word vector,two-way LSTM,2D neural network and other deep learning models are used to extract the semantic matching features of question-answer pairs.Self-organizing mapping(SOM)is used to classify and identify the sentence feature.The attention mechanism-based neural machine translation model is taken as the baseline system.The experimental results show that this framework significantly improves the adequacy of English-Chinese machine translation and achieves better results than the traditional attention mechanism-based English-Chinese machine translation model. 展开更多
关键词 Chinese-English translation model self-organizing mapping neural network Deep feature matching Deep learning
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Self-organizing feature map neural network classification of the ASTER data based on wavelet fusion 被引量:7
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作者 HASI Bagan MA Jianwen LI Qiqing HAN Xiuzhen LIU Zhili 《Science China Earth Sciences》 SCIE EI CAS 2004年第7期651-658,共8页
Most methods for classification of remote sensing data are based on the statistical parameter evaluation with the assumption that the samples obey the normal distribution. How-ever, more accurate classification result... Most methods for classification of remote sensing data are based on the statistical parameter evaluation with the assumption that the samples obey the normal distribution. How-ever, more accurate classification results can be obtained with the neural network method through getting knowledge from environments and adjusting the parameter (or weight) step by step by a specific measurement. This paper focuses on the double-layer structured Kohonen self-organizing feature map (SOFM), for which all neurons within the two layers are linked one another and those of the competition layers are linked as well along the sides. Therefore, the self-adapting learning ability is improved due to the effective competition and suppression in this method. The SOFM has become a hot topic in the research area of remote sensing data classi-fication. The Advanced Spaceborne Thermal Emission and Reflectance Radiometer (ASTER) is a new satellite-borne remote sensing instrument with three 15-m resolution bands and three 30-m resolution bands at the near infrared. The ASTER data of Dagang district, Tianjin Munici-pality is used as the test data in this study. At first, the wavelet fusion is carried out to make the spatial resolutions of the ASTER data identical; then, the SOFM method is applied to classifying the land cover types. The classification results are compared with those of the maximum likeli-hood method (MLH). As a consequence, the classification accuracy of SOFM increases about by 7% in general and, in particular, it is almost as twice as that of the MLH method in the town. 展开更多
关键词 classification WAVELET fusion self-organizing NEURAL network feature map (SOFM) ASTER data.
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基于PNCC声纹特征提取技术和POA-KNN算法的齿轮箱声纹识别故障诊断
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作者 廖力达 赵阁阳 +1 位作者 魏诚 刘川江 《机电工程》 北大核心 2026年第1期24-33,共10页
风力机齿轮箱是风力发电系统的核心组件之一,承担着将风能转化为电能的重要任务。由于运行环境的恶劣以及长期使用造成的磨损,齿轮箱常常会发生各种故障,从而导致齿轮箱运行过程中产生不同的噪声,严重影响风力机的正常运行和发电效率,因... 风力机齿轮箱是风力发电系统的核心组件之一,承担着将风能转化为电能的重要任务。由于运行环境的恶劣以及长期使用造成的磨损,齿轮箱常常会发生各种故障,从而导致齿轮箱运行过程中产生不同的噪声,严重影响风力机的正常运行和发电效率,因此,提出了一种基于功率正则化倒谱系数(PNCC)声纹特征提取技术,以及行星优化算法与K近邻算法(POA-KNN)模型的风力机齿轮箱声纹识别故障诊断方法。首先,采用LMS噪声采集仪采集了6种不同状态下的风力机齿轮箱噪声数据;然后,使用了PNCC声纹特征提取的方法,提取了齿轮箱噪声信号的声纹图谱;在KNN的基础上加入行星优化算法(POA)优化了K值,提出了性能较高的POA-KNN分类模型;最后,根据6类不同状态下的齿轮数据集,采用对比试验和消融实验验证了模型性能。研究结果表明:POA-KNN模型对齿轮箱的PNCC声纹图分类准确率达到99.4%,比KNN基线模型提升了1.9%。POA-KNN分类模型能很好地对数据集中不同状态下的齿轮箱进行分类,更高效地针对风力机齿轮箱中存在的故障进行诊断。 展开更多
关键词 齿轮箱 功率正则化倒谱系数 声纹识别 声纹特征图谱 行星优化算法与K近邻算法 分类模型
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Visualization of amino acid composition differences between processed protein from different animal species by self-organizing feature maps
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作者 Xingfan ZHOU Zengling YANG +1 位作者 Longjian CHEN Lujia HAN 《Frontiers of Agricultural Science and Engineering》 2016年第2期171-180,共10页
Amino acids are the dominant organic components of processed animal proteins,however there has been limited investigation of differences in their composition between various protein sources.Information on these differ... Amino acids are the dominant organic components of processed animal proteins,however there has been limited investigation of differences in their composition between various protein sources.Information on these differences will not only be helpful for their further utilization but also provide fundamental information for developing species-specific identification methods.In this study,self-organizing feature maps(SOFM) were used to visualize amino acid composition of fish meal,and meat and bone meal(MBM) produced from poultry,ruminants and swine.SOFM display the similarities and differences in amino acid composition between protein sources and effectively improve data transparency.Amino acid composition was shown to be useful for distinguishing fish meal from MBM due to their large concentration differences between glycine,lysine and proline.However,the amino acid composition of the three MBMs was quite similar.The SOFM results were consistent with those obtained by analysis of variance and principal component analysis but more straightforward.SOFM was shown to have a robust sample linkage capacity and to be able to act as a powerful means to link different sample for further data mining. 展开更多
关键词 self-organizing feature maps VISUALIZATION processed animal proteins(PAPs) amino acid
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基于Isomap的SMO算法及在煤与瓦斯突出预测中的应用 被引量:3
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作者 朱莉 谷琼 +1 位作者 蔡之华 余钢 《应用基础与工程科学学报》 EI CSCD 2009年第6期958-965,共8页
煤与瓦斯突出发生的内在机理复杂,突出影响因素与突出事件之间的相关规律具有不确定性、模糊性,使得基于经验的传统预测方法和基于数学建模的统计预测方法的应用受到很大限制.在研究非线性降维等距特征映射和序贯最小优化算法的基础上,... 煤与瓦斯突出发生的内在机理复杂,突出影响因素与突出事件之间的相关规律具有不确定性、模糊性,使得基于经验的传统预测方法和基于数学建模的统计预测方法的应用受到很大限制.在研究非线性降维等距特征映射和序贯最小优化算法的基础上,提出一种基于等距特征映射的煤与瓦斯突出序贯最小优化算法,该方法改进了样本向量之间的距离度量,用测地距离代替传统的欧式距离,有助于挖掘高维数据内在的几何结构.实例验证表明,该算法能可靠预测煤与瓦斯突出的危险性分类,实验进一步将Isomap和主成分分析的降维结果相比较,结果显示Isomap优于传统的线性降维技术,这说明非线性降维技术在地学数据分析中具有一定的应用潜力. 展开更多
关键词 煤与瓦斯突出 等距特征映射 序贯最小优化 支持向量机 主成分分析 分类
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基于Surf算法的穿鞋足迹特征匹配识别
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作者 刘裕庞 冯海 +2 位作者 姜福鑫 刘威恒 许剑宏 《刑事技术》 2026年第1期29-35,共7页
在大数据与人工智能快速发展的背景下,足迹检验领域亟需提升专业化和信息化水平。当前,赤足足迹的识别方法研究已取得一定进展,但穿鞋足迹的自动识别仍是足迹检验领域的一大挑战。本研究引入Surf算法,探索其在穿鞋足迹自动识别中的应用... 在大数据与人工智能快速发展的背景下,足迹检验领域亟需提升专业化和信息化水平。当前,赤足足迹的识别方法研究已取得一定进展,但穿鞋足迹的自动识别仍是足迹检验领域的一大挑战。本研究引入Surf算法,探索其在穿鞋足迹自动识别中的应用潜力。具体而言,研究运用Surf算法对四种类型的足迹图像(即同人同鞋、同人不同鞋、不同人同种鞋及不同人不同鞋)进行特征匹配,并通过几何变换映射匹配点对,深入分析足迹间的相似程度。研究结果显示,同人同鞋的足迹在Surf特征点匹配数量上显著多于其他类型;在几何变换映射后,同人同鞋同时间的足迹图像匹配点数量多,匹配位置准确,而不同人之间的足迹匹配点则较少;此外,即便是同人同鞋,形成时间间隔较近的足迹匹配点也多于时间相隔远的足迹。综上所述,Surf算法在识别同人同鞋足迹方面展现出高效性和可靠性。 展开更多
关键词 穿鞋足迹 SURF算法 特征匹配 足迹识别 映射
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基于RCMDE和ISOMAP的行星齿轮传动耦合故障辨识研究 被引量:1
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作者 苏世卿 王华锋 《机电工程》 CAS 北大核心 2024年第9期1584-1594,共11页
现有针对行星齿轮箱的故障诊断方法一般仅研究单一故障,但实际行星齿轮箱的故障一般由多个故障耦合而成,耦合故障的故障机理比单一故障的故障机理更复杂,振动信号中的非线性因素对特征提取的干扰更严重。针对该问题,提出了一种基于精细... 现有针对行星齿轮箱的故障诊断方法一般仅研究单一故障,但实际行星齿轮箱的故障一般由多个故障耦合而成,耦合故障的故障机理比单一故障的故障机理更复杂,振动信号中的非线性因素对特征提取的干扰更严重。针对该问题,提出了一种基于精细复合多尺度散度熵(RCMDE)、等距特征映射(ISOMAP)和遗传算法优化核极限学习机(GA-KELM)的行星齿轮箱耦合故障诊断方法。首先,利用振动加速度计采集了行星齿轮箱单一故障和耦合故障下运行时的振动信号,构建了故障数据集;随后,利用RCMDE提取了行星齿轮箱振动信号的故障特征,建立了初始的特征样本;接着,利用ISOMAP对故障特征进行了降维,并以可视化的方式获取了低维的特征样本;最后,将新特征输入至GA-KELM分类器中,对行星齿轮箱的不同故障类型进行了识别,并基于行星齿轮箱多点损伤样本,对RCMDE方法的可靠性进行了研究。研究结果表明:基于RCMDE和ISOMAP的故障特征提取方法能够有效提取振动信号中的故障特征,而GA-KELM的故障诊断准确率达到了98.13%,平均诊断准确率达到了96.25%。相较其他故障特征提取方法,基于RCMDE、ISOMAP和GA-KELM的行星齿轮箱耦合故障诊断方法能够更好地诊断行星齿轮箱的耦合故障,具有更高的诊断准确率。 展开更多
关键词 齿轮传动 耦合故障 故障诊断准确率 精细复合多尺度散度熵 等距特征映射 遗传算法优化核极限学习机
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泛地图连续性表达维度模型研究
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作者 陈业滨 陈永丽 +3 位作者 柯文清 江思瑶 赵志刚 郭仁忠 《地球信息科学学报》 北大核心 2026年第2期287-299,共13页
【目的】传统地图呈现出典型的离散化特征,通过点、线、面符号实现地理空间信息的抽象化表达。随着信息技术的发展,泛地图的出现为打破传统地图的离散化局限,实现地图间的连续性表达提供了新的契机。本文从连续性表达视角出发,尝试揭示... 【目的】传统地图呈现出典型的离散化特征,通过点、线、面符号实现地理空间信息的抽象化表达。随着信息技术的发展,泛地图的出现为打破传统地图的离散化局限,实现地图间的连续性表达提供了新的契机。本文从连续性表达视角出发,尝试揭示泛地图间潜在的关联规则与连续性机制,构建泛地图连续性表达维度模型。【分析】首先,构建了泛地图分类体系,通过相似性计算挖掘泛地图在符号几何、颜色、空间关系等维度的连续性变换规则;其次,基于FP-Growth(Frequent Pattern Growth,频繁模式增长)算法,挖掘不同地图类型间的连续性变换规则,构建了涵盖地图空间、地图基底、空间位置、地图符号、空间关系的泛地图连续性表达维度模型;最后,通过点、线、面状地图连续性转换实验,验证泛地图连续性表达维度模型的有效性。【结论】本文研究结果有利于突破传统地图离散化表达的模式,建立泛地图的连续性表达思维,实现了从多角度连续呈现多元化空间信息,进一步提升地图信息传递的有效性。 展开更多
关键词 泛地图 连续性特征 表达维度模型 关联规则 可视化 相似性计算 FP-GROWTH算法 连续图谱
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基于PRM算法的架空输电线路山地路径计算研究
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作者 孙余墉 张仲驰 《能源工程》 2026年第1期119-128,共10页
为优化架空输电线路的山地路径,采用概率路线图(PRM)算法将路径计算过程分为山地空间学习和路径查询两个阶段。在山地空间学习阶段,设计了通过等高线形态提取山地空间地形特征的方法;根据路径障碍区域信息确定输电杆塔点位和可行路径,... 为优化架空输电线路的山地路径,采用概率路线图(PRM)算法将路径计算过程分为山地空间学习和路径查询两个阶段。在山地空间学习阶段,设计了通过等高线形态提取山地空间地形特征的方法;根据路径障碍区域信息确定输电杆塔点位和可行路径,构成路线图。在路径查询阶段,建立了架空输电线路路径多因素评价方法。该阶段融合了路径选择、交叉、变异的遗传计算和模拟退火操作,通过多次迭代逐步得到相对最优的架空输电线路山地路径。 展开更多
关键词 架空输电线路 概率路线图算法(PRM) 山地路径 地形特征 路径评价
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A global path planning algorithm based on the feature map 被引量:7
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作者 Gongchang Ren Peng Liu Zhou He 《IET Cyber-Systems and Robotics》 EI 2022年第1期15-24,共10页
The feature map is a characteristic of high computational efficiency,but it is seldom used in path planning due to its lack of expression of environmental details.To solve this problem,a global path planning algorithm... The feature map is a characteristic of high computational efficiency,but it is seldom used in path planning due to its lack of expression of environmental details.To solve this problem,a global path planning algorithm based on the feature map is proposed based on the directionality of line segment features.First,the robot searches the path along the direction of the target position but turns to search in the direction parallel to the obstacle,which it approaches until the line between the robot and the target position does not intersect with obstacles.Then it turns to the target position,keep searching the path.Meanwhile,the problems of the direction selection of turning point,corner point and obstacle circumvention in the searching process are analysed and corresponding solutions are put forth.Finally,a path optimisation algorithm with variable parameters is proposed,making the optimised path shorter and smoother.Simulation experiments demonstrate that the proposed algorithm is superior to A*algorithm in terms of computation time and path length,especially of the computation efficiency. 展开更多
关键词 A*algorithm feature map global path planning path optimisation variable parameters
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An improved de-interleaving algorithm of radar pulses based on SOFM with self-adaptive network topology 被引量:2
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作者 JIANG Wen FU Xiongjun +1 位作者 CHANG Jiayun QIN Rui 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2020年第4期712-721,共10页
As a core part of the electronic warfare(EW) system,de-interleaving is used to separate interleaved radar signals. As interleaved radar pulses become more complex and denser, intelligent classification of radar signal... As a core part of the electronic warfare(EW) system,de-interleaving is used to separate interleaved radar signals. As interleaved radar pulses become more complex and denser, intelligent classification of radar signals has become very important. The self-organizing feature map(SOFM) is an excellent artificial neural network, which has huge advantages in intelligent classification of complex data. However, the de-interleaving process based on SOFM is faced with the problems that the initialization of the map size relies on prior information and the network topology cannot be adaptively adjusted. In this paper, an SOFM with self-adaptive network topology(SANT-SOFM) algorithm is proposed to solve the above problems. The SANT-SOFM algorithm first proposes an adaptive proliferation algorithm to adjust the map size, so that the initialization of the map size is no longer dependent on prior information but is gradually adjusted with the input data. Then,structural optimization algorithms are proposed to gradually optimize the topology of the SOFM network in the iterative process,constructing an optimal SANT. Finally, the optimized SOFM network is used for de-interleaving radar signals. Simulation results show that SANT-SOFM could get excellent performance in complex EW environments and the probability of getting the optimal map size is over 95% in the absence of priori information. 展开更多
关键词 de-interleaving self-organizing feature map(SOFM) self-adaptive network topology(SANT)
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A New Algorithm for Clustering of Seabed Types
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作者 ZHAO Jianhu 《Geo-Spatial Information Science》 2008年第4期279-282,共4页
By using sonar imaging, this paper presents a new algorithm for the clustering of seabed types based on the self-organizing feature maps (SOFM) neural network. The theory as well as data processing is studied in detai... By using sonar imaging, this paper presents a new algorithm for the clustering of seabed types based on the self-organizing feature maps (SOFM) neural network. The theory as well as data processing is studied in detail. Some valuable conclusions and suggestions are given. 展开更多
关键词 sonar image self-organizing feature maps (SOFM) clustering of seabed types
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Pattern recognition of seismogenic nodes using Kohonen selforganizing map: example in west and south west of Alborz region in Iran
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作者 Mostafa Allamehzadeh Soma Durudi Leila Mahshadnia 《Earthquake Science》 CSCD 2017年第3期145-155,共11页
Pattern recognition of seismic and mor- phostructural nodes plays an important role in seismic hazard assessment. This is a known fact in seismology that tectonic nodes are prone areas to large earthquake and have thi... Pattern recognition of seismic and mor- phostructural nodes plays an important role in seismic hazard assessment. This is a known fact in seismology that tectonic nodes are prone areas to large earthquake and have this potential. They are identified by morphostructural analysis. In this study, the Alborz region has considered as studied case and locations of future events are forecast based on Kohonen Self-Organized Neural Network. It has been shown how it can predict the location of earthquake, and identifies seismogenic nodes which are prone to earthquake of M5.5+ at the West of Alborz in Iran by using International Institute Earthquake Engineering and Seismology earthquake catalogs data. First, the main faults and tectonic lineaments have been identified based on MZ (land zoning method) method. After that, by using pattern recognition, we generalized past recorded events to future in order to show the region of probable future earthquakes. In other word, hazardous nodes have determined among all nodes by new catalog generated Self-organizing feature maps (SOFM). Our input data are extracted from catalog, consists longitude and latitude of past event between 1980-2015 with magnitude larger or equal to 4.5. It has concluded node D1 is candidate for big earthquakes in comparison with other nodes and other nodes are in lower levels of this potential. 展开更多
关键词 Clustering - Earthquake prediction ~ self-organizing feature maps (SOFM)
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基于显著性特征的多视角动作图像识别研究
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作者 惠向晖 孙艳红 沈小乐 《现代电子技术》 北大核心 2025年第13期62-65,共4页
文中基于显著性特征的多视角动作图像识别方法,自动学习并提取出运动员动作的关键特征,有助于教练为运动员制定更科学、更个性化的训练计划。将人体骨架序列对齐到统一的时空坐标系中,计算距离图和角度图以捕捉骨架的空间特征,生成人体... 文中基于显著性特征的多视角动作图像识别方法,自动学习并提取出运动员动作的关键特征,有助于教练为运动员制定更科学、更个性化的训练计划。将人体骨架序列对齐到统一的时空坐标系中,计算距离图和角度图以捕捉骨架的空间特征,生成人体运动特征图;构建CNN+CA模型,将处理后的多视角动作视频帧生成感兴趣区域(ROI)拼接图,再将其输入到CNN中,提取多视角融合特征,并在CA模块中突出那些对于动作图像识别最为关键的区域;通过序列匹配算法将多视角动作识别问题转化为预测标签序列的匹配问题,为待识别动作图像分配动作类别标签,实现准确的多视角动作图像识别。实验结果表明:该方法不仅能够有效处理来自不同视角的动作图像,还能够准确识别出篮球运动员的多种动作。 展开更多
关键词 显著性特征 多视角动作图像 运动特征图 ROI拼接图 CNN CA模块 LSTM 序列匹配算法
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