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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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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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基于自组织特征映射模型(SOFM)网络的中国自然资源生态安全区划 被引量:1
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作者 邹易 蒙吉军 +3 位作者 吴英迪 魏婵娟 程浩然 马宇翔 《生态学报》 CAS CSCD 北大核心 2024年第1期171-182,共12页
自然资源生态安全是国家安全的重要组成部分,自然资源生态安全区划对保障区域可持续发展提供了重要途径。基于自然资源数据、生态环境数据和相关区划资料,从生态敏感性与生态服务重要性角度构建了自然资源生态安全评价指标体系,进而揭... 自然资源生态安全是国家安全的重要组成部分,自然资源生态安全区划对保障区域可持续发展提供了重要途径。基于自然资源数据、生态环境数据和相关区划资料,从生态敏感性与生态服务重要性角度构建了自然资源生态安全评价指标体系,进而揭示了中国自然资源生态安全的空间格局;通过建立区划的原则和指标,按照一级区主要反映自然资源空间分布格局,二级区主要揭示自然资源生态安全水平的差异,采用SOFM网络制订了中国自然资源生态安全区划方案。结果显示:(1)中国自然资源生态安全水平整体偏低,以中警与重警状态区域为主,安全和较安全状态的区域仅占24.22%,其中低安全等级区多分布于400mm等降水量线以西的干旱、半干旱区,高安全等级区则集中分布于水热资源与生物资源较为丰富的东南部地区;(2)中国自然资源生态安全区划方案包括8个一级区与27个二级区,总结归纳各大区自然资源的特征和威胁生态安全的问题,并针对二级区自然资源生态安全状况提出了对策建议。研究结果可为分区、分类推进全国自然资源可持续利用和国土空间优化提供理论支持与决策依据。 展开更多
关键词 自然资源生态安全 自组织特征映射模型(sofm)网络 区划方案
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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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An improved de-interleaving algorithm of radar pulses based on SOFM with self-adaptive network topology 被引量:1
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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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基于SOFM方法的安徽省矿产资源开发主体功能区划研究
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作者 李臻 陈义华 +3 位作者 陈从喜 李政 任升莲 任芳语 《合肥工业大学学报(自然科学版)》 CAS 北大核心 2023年第1期111-117,共7页
文章选择安徽省主要的矿产资源分布区,构建矿产资源开发功能区划指标体系,并通过自组织特征映射(self-organizing feature map,SOFM)网络方法对指标数据进行聚类,根据各聚类结果的区域特征,对安徽省矿产资源开发功能区进行研究。结果表... 文章选择安徽省主要的矿产资源分布区,构建矿产资源开发功能区划指标体系,并通过自组织特征映射(self-organizing feature map,SOFM)网络方法对指标数据进行聚类,根据各聚类结果的区域特征,对安徽省矿产资源开发功能区进行研究。结果表明:安徽省矿产资源分布显著集中,矿产资源富集区主要分布在皖江及皖北地区;安徽省整体生态环境较好,研究区内80.77%的县区生态环境适宜进行适度开发;矿产资源较丰富的县区内生态环境适宜开发,而生态环境指数较高的县区矿产资源匮乏,表明安徽省矿产资源开发与生态保护不存在根本冲突。研究结果解释了安徽省矿产资源空间分布规律,可为分区制定差别化管理政策提供理论依据,对安徽省矿产资源可持续发展规划有一定的参考价值。 展开更多
关键词 矿产资源开发 主体功能区划 自组织特征映射(sofm)网络 空间开发格局
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基于SOFM神经网络的茄子图像分割方法 被引量:9
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作者 姚立健 丁为民 +1 位作者 赵三琴 杨玲玲 《南京农业大学学报》 CAS CSCD 北大核心 2008年第3期140-144,共5页
以将茄子图像从复杂的背景中分割出来为目的,在分析茄子图像色差和色相的基础上,选取R-B、G-B和H作为自组织特征映射(SOFM)网络的输入特征向量,利用该网络自组织学习的特征进行聚类。采用信噪比、面积比、分割时间和傅里叶边界描述子等... 以将茄子图像从复杂的背景中分割出来为目的,在分析茄子图像色差和色相的基础上,选取R-B、G-B和H作为自组织特征映射(SOFM)网络的输入特征向量,利用该网络自组织学习的特征进行聚类。采用信噪比、面积比、分割时间和傅里叶边界描述子等指标来评价分割精度。试验证明,基于SOFM神经网络图像分割评价优于单一阈值分割,适合复杂背景的彩色图像分割。 展开更多
关键词 茄子 图像分割 自组织特征映射(sofm)网络 傅里叶描述子
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SOFM神经网络在道路交通事故分类评价中的应用 被引量:6
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作者 李电生 刘凯 赵闯 《中国安全科学学报》 CAS CSCD 2005年第7期88-91,共4页
随着我国道路交通需求的持续增长和交通建设的快速发展,交通环境和条件有了很大改善,但交通事故仍频频发生,且呈不断增多的趋势,安全已成为交通管理当中一个不容忽视的问题。为了减少交通事故发生次数,降低事故损失程度,需要对交通事故... 随着我国道路交通需求的持续增长和交通建设的快速发展,交通环境和条件有了很大改善,但交通事故仍频频发生,且呈不断增多的趋势,安全已成为交通管理当中一个不容忽视的问题。为了减少交通事故发生次数,降低事故损失程度,需要对交通事故进行分类管理,以便针对不同种类和特征的交通事故采取专门的措施。笔者应用SOFM(自组织特征映射)神经网络对不同原因的道路交通事故进行了分类评价,并根据实际数据的计算和分析提出了相应的防护和控制措施。 展开更多
关键词 道路交通事故 sofm神经网络 分类评价 交通环境 交通管理
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一种基于PCA/SOFM混合神经网络的图象压缩算法 被引量:10
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作者 许锋 方弢 +1 位作者 卢建刚 孙优贤 《中国图象图形学报(A辑)》 CSCD 北大核心 2003年第9期1100-1104,共5页
鉴于用神经网络实现图象压缩是一种非常有效的方法,为此提出了一种基于PCA/SOFM混合神经网络的图象压缩编码算法,并对SOFM网络学习参数的优化进行了探讨.实验证明,与PCA+SOFM连续编码算法和基本SOFM算法相比,这种混合编码算法,由于占用... 鉴于用神经网络实现图象压缩是一种非常有效的方法,为此提出了一种基于PCA/SOFM混合神经网络的图象压缩编码算法,并对SOFM网络学习参数的优化进行了探讨.实验证明,与PCA+SOFM连续编码算法和基本SOFM算法相比,这种混合编码算法,由于占用存储空间少,因而降低了码书设计的计算量,并改善了码书的性能. 展开更多
关键词 神经网络 图象压缩 图象编码 图象质量
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基于SOFM神经网络和HMM的动调陀螺仪故障预测方法研究 被引量:7
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作者 尚永爽 许爱强 吴忠德 《机械科学与技术》 CSCD 北大核心 2012年第10期1711-1715,1720,共6页
针对动调陀螺仪性能参数的退化特点,提出了一种自组织特征映射(SOFM)神经网络和隐马尔可夫模型(HMM)相结合的动调陀螺仪故障预测方法。采集动调陀螺仪的振动、温度、随机漂移、电机功率、电源电压和频率等信号作为表征陀螺退化状态的特... 针对动调陀螺仪性能参数的退化特点,提出了一种自组织特征映射(SOFM)神经网络和隐马尔可夫模型(HMM)相结合的动调陀螺仪故障预测方法。采集动调陀螺仪的振动、温度、随机漂移、电机功率、电源电压和频率等信号作为表征陀螺退化状态的特征信息,利用SOFM神经网络实现多源传感器信息融合;利用HMM方法将不易检测到的早期故障信号转变为容易观测到的信息,实现动调陀螺仪的故障预测。实验结果表明:采用SOFM方法对传感信号的信息融合,能够简单、有效地提取陀螺退化状态的特征信息。运用HMM进行训练和测试,说明了该方法在故障预测中的有效性。 展开更多
关键词 故障预测 自组织特征映射 隐马尔可夫模型 动调陀螺仪
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应用SOFM神经网络对福州市道路交通事故的研究 被引量:2
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作者 岳小泉 丁艺 +1 位作者 黄晓婷 李晓娟 《森林工程》 2006年第4期35-38,共4页
应用SOFM(自组织特征映射)神经网络对福州市不同原因的交通事故进行了分类分析,以便针对不同种类和特征的交通事故采取专门的措施,并根据实际数据分析提出了相应的防范和控制措施。
关键词 交通事故 交通安全 神经网络 自组织特征映射
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SOFM神经网络在处理非空间属性中的应用 被引量:2
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作者 孙志伟 赵政 《计算机应用》 CSCD 北大核心 2006年第11期2667-2669,2673,共4页
由于非空间属性维数较高,空间聚类算法在处理非空间属性约束时难点首先在于如何为这些非空间属性设定参数,然后是哪些非空间属性在聚类中将起主要作用,并真正影响聚类的结果。对这些问题进行了讨论,并提出使用神经网络中自组织映射的方... 由于非空间属性维数较高,空间聚类算法在处理非空间属性约束时难点首先在于如何为这些非空间属性设定参数,然后是哪些非空间属性在聚类中将起主要作用,并真正影响聚类的结果。对这些问题进行了讨论,并提出使用神经网络中自组织映射的方法来首先选择哪些非空间属性将被优先考虑,使用自组织特征映射(SOFM)方法对非空间属性聚类,最后把非空间属性和空间属性聚类进行合并得到最终的聚类结果的方法。 展开更多
关键词 聚类算法 高维 神经网络 自组织特征映射 约束
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基于SOFM神经网络的砂土液化评价 被引量:6
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作者 赵胜利 赵红英 刘燕 《华中科技大学学报(城市科学版)》 CAS 2005年第2期23-26,共4页
提出应用自组织特征映射(SOFM)神经网络进行砂土液化评价,根据实测资料和行业规范,建立具有7个输入参数,4个输出类别的SOFM神经网络模型对砂土液化的严重程度做出评价.实例研究表明,应用SOFM神经网络评价砂土液化高效可行,为砂土液化的... 提出应用自组织特征映射(SOFM)神经网络进行砂土液化评价,根据实测资料和行业规范,建立具有7个输入参数,4个输出类别的SOFM神经网络模型对砂土液化的严重程度做出评价.实例研究表明,应用SOFM神经网络评价砂土液化高效可行,为砂土液化的研究提供了新方法. 展开更多
关键词 自组织特征映射(sofm) 神经网络 砂土液化 评价
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改进的SOFM算法及其在低延迟语音编码中的应用
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作者 武淑红 张刚 张雪英 《计算机工程与应用》 CSCD 北大核心 2009年第12期124-125,156,共3页
根据低延迟语音编码算法训练码书的尺寸和码字维数的特点,提出了一种改进的自组织特征映射(SOFM)神经网络的码书设计方法。对输入训练矢量以及连接权矢量进行归一化,为降低计算量和提高码书训练质量,采用快速的网络学习决定获胜的神经... 根据低延迟语音编码算法训练码书的尺寸和码字维数的特点,提出了一种改进的自组织特征映射(SOFM)神经网络的码书设计方法。对输入训练矢量以及连接权矢量进行归一化,为降低计算量和提高码书训练质量,采用快速的网络学习决定获胜的神经元并对网络权值分阶段进行自适应调整,最后应用于低延迟语音编码中。实验表明,与传统LBG算法比较,采用SOFM神经网络训练的码书其合成语音的主、客观质量均有较大提高。 展开更多
关键词 矢量量化 自组织特征映射神经网络 自适应调整 低延迟语音编码
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基于SOFM网络的山东省水资源承载力评价
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作者 王艳 曹俊茹 吴佩林 《安徽农业科学》 CAS 北大核心 2009年第33期16494-16495,16530,共3页
水资源承载能力与评价指标组成了一个复杂的非线性系统,评价的难点在于确定各评价指标的权值。结合地理信息系统(GIS)和人工神经网络(ANN)技术,提出对水资源承载力进行评价的一种新方法;根据构建的水资源承载力评价指标体系,以山东省为... 水资源承载能力与评价指标组成了一个复杂的非线性系统,评价的难点在于确定各评价指标的权值。结合地理信息系统(GIS)和人工神经网络(ANN)技术,提出对水资源承载力进行评价的一种新方法;根据构建的水资源承载力评价指标体系,以山东省为例,利用自组织神经网络模型(SOFM)对水资源承载力进行了评价。结果表明,山东省17地市水资源承载力可划分为5类,模拟结果比较理想。 展开更多
关键词 人工神经网络(ANN) 自组织神经网络(sofm) 水资源承载力 评价 山东省
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基于模糊SOFM的网络入侵检测方法
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作者 胡玉荣 《计算机工程》 CAS CSCD 北大核心 2008年第11期155-156,159,共3页
针对目前入侵检测系统误报率过高、检测率不高和对未知入侵检测能力有限的缺陷,提出一种基于模糊SOFM的网络入侵检测方法,经训练后可形成一个稳定的神经网络系统,有效地识别网络正常行为和异常行为。采用KDD99数据集对系统进行实验,结... 针对目前入侵检测系统误报率过高、检测率不高和对未知入侵检测能力有限的缺陷,提出一种基于模糊SOFM的网络入侵检测方法,经训练后可形成一个稳定的神经网络系统,有效地识别网络正常行为和异常行为。采用KDD99数据集对系统进行实验,结果表明,系统在保持误报率低于3%的情况下,入侵检测率最高可以达到92%以上。 展开更多
关键词 入侵检测 神经网络 模糊技术 自组织特征映射
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基于SOFM网络的雷达装备智能故障诊断
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作者 朱家元 刘庆华 刘根 《空军雷达学院学报》 2010年第3期167-169,共3页
针对雷达装备故障特征,采用自组织映射(SOFM)神经网络构建雷达装备故障诊断模型,通过网络学习,获得可视拓扑映射图,并采用映射图对典型雷达电子装备故障进行了诊断.结果表明:该故障诊断模型具有较高的诊断准确度,具有故障诊断可视化,为... 针对雷达装备故障特征,采用自组织映射(SOFM)神经网络构建雷达装备故障诊断模型,通过网络学习,获得可视拓扑映射图,并采用映射图对典型雷达电子装备故障进行了诊断.结果表明:该故障诊断模型具有较高的诊断准确度,具有故障诊断可视化,为雷达装备故障诊断研究提供了新的有效方法. 展开更多
关键词 神经网络 自组织特征映射 雷达装备 故障诊断
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CLUSTERING OF DOA DATA IN RADAR PULSE BASED ON SOFM AND CDBW 被引量:2
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作者 Dai Shengbo Lei Wuhu +1 位作者 Cheng Yizhe Wang Di 《Journal of Electronics(China)》 2014年第2期107-114,共8页
Clustering is the main method of deinterleaving of radar pulse using multi-parameter.However,the problem in clustering of radar pulses lies in finding the right number of clusters.To solve this problem,a method is pro... Clustering is the main method of deinterleaving of radar pulse using multi-parameter.However,the problem in clustering of radar pulses lies in finding the right number of clusters.To solve this problem,a method is proposed based on Self-Organizing Feature Maps(SOFM) and Composed Density between and within clusters(CDbw).This method firstly extracts the feature of Direction Of Arrival(DOA) data by SOFM using the characteristic of DOA parameter,and then cluster of SOFM.Through computing the cluster validity index CDbw,the right number of clusters is found.The results of simulation show that the method is effective in sorting the data of DOA. 展开更多
关键词 self-organizing feature maps(sofm) Composed Density between and within clusters(CDbw) Hierarchical clustering
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A Modified SOFM Method for Point Cloud Segmentation in Reverse Engineering 被引量:4
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作者 LIU Xue-mei ZHANG Shu-sheng BAI Xiao-liang 《Computer Aided Drafting,Design and Manufacturing》 2005年第2期33-37,共5页
The purpose of reverse engineering is to convert a large point cloud into a CAD model. In reverse engineering, the key issue is segmentation, i.e. studying how to subdivide the point cloud into smaller regions, where ... The purpose of reverse engineering is to convert a large point cloud into a CAD model. In reverse engineering, the key issue is segmentation, i.e. studying how to subdivide the point cloud into smaller regions, where each of them can be approximated by a single surface. Segmentation is relatively simple, if regions are bounded by sharp edges and small blends; problems arise when smoothly connected regions need to be separated. In this paper, a modified self-organizing feature map neural network (SOFM) is used to solve segmentation problem. Eight dimensional feature vectors (3-dimensional coordinates, 3-dimensional normal vectors, Gaussian curvature and mean curvature) are taken as input for SOFM. The weighted Euclidean distance measure is used to improve segmentation result. The method not only can deal with regions bounded by sharp edges, but also is very efficient to separating smoothly connected regions. The segmentation method using SOFM is robust to noise, and it operates directly on the point cloud. An examples is given to show the effect of SOFM algorithm. 展开更多
关键词 reverse engineering point cloud segmentation neural network self-organizing feature map
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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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