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Generalized two-dimensional correlation near-infrared spectroscopy and principal component analysis of the structures of methanol and ethanol 被引量:5
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作者 Liu Hao Xu JianPing +1 位作者 Qu LingBo Xiang BingRen 《Science China Chemistry》 SCIE EI CAS 2010年第5期1154-1159,共6页
Liquid state methanol and ethanol under different temperatures have been investigated by FT-NIR(Fourier transform nearinfrared) spectroscopy,generalized two-dimensional(2D) correlation spectroscopy,and PCA(principal c... Liquid state methanol and ethanol under different temperatures have been investigated by FT-NIR(Fourier transform nearinfrared) spectroscopy,generalized two-dimensional(2D) correlation spectroscopy,and PCA(principal component analysis) . First,the FT-NIR spectra were measured over a temperature range of 30-64(or 30-71) °C,and then the 2D correlation spectra were computed.Combining near-infrared spectroscopy,generalized 2D correlation spectroscopy,and references,we analyzed the molecular structures(especially the hydrogen bond) of methanol and ethanol,and performed the NIR band assignments. The PCA method was employed to verify the results of the 2D analysis.This study will be helpful to the understanding of these reagents. 展开更多
关键词 NIR(near-infrared) two-dimensional (2D) CORRELATION spectroscopy principal component analysis (PCA) METHANOL ETHANOL
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人脸图像识别中非贪婪L1范数的2DPCA最大化鲁棒算法
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作者 刘辉 马文 王志锋 《南京邮电大学学报(自然科学版)》 北大核心 2016年第2期90-95,共6页
基于L1范数的二维主成分分析是近年来提出的一种在图像域降维和特征提取的方法。通常,直接求解L1范数最大化问题很困难,因此,一种贪婪的策略被提出来了。然而,这种策略的初始化投影是随意选取的,为了获得更好的投影向量,得到一个最优的... 基于L1范数的二维主成分分析是近年来提出的一种在图像域降维和特征提取的方法。通常,直接求解L1范数最大化问题很困难,因此,一种贪婪的策略被提出来了。然而,这种策略的初始化投影是随意选取的,为了获得更好的投影向量,得到一个最优的局部解,提出了一个非贪婪的L1范数最大化算法,该非贪婪算法具有三大优势:使用L1范数和非贪婪策略对于异常值很稳健;与PCA-L1相比较,更多的空间结构信息得到了保留;相比2DPCA-L1,所有的投影方向可以被优化并且可以获得更好的解决方案。人脸和其他数据集上的实验结果验证了所提出的方法更加有效。 展开更多
关键词 二维主成分分析 L1范数 非贪婪算法 异常值 主成分分析法
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基于分块的2DPCA人脸识别方法
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作者 李靖平 《浙江万里学院学报》 2014年第2期93-98,97,共6页
文章将分块理论与2DPCA方法相结合,研究分块二维主成分分析法(M-2DPCA)在人脸识别中的应用。对人脸图像矩阵进行分块,用形成的子图像矩阵直接构造总体散布矩阵并求解对应的特征向量,利用提取的特征向量对图像进行特征的提取与分析... 文章将分块理论与2DPCA方法相结合,研究分块二维主成分分析法(M-2DPCA)在人脸识别中的应用。对人脸图像矩阵进行分块,用形成的子图像矩阵直接构造总体散布矩阵并求解对应的特征向量,利用提取的特征向量对图像进行特征的提取与分析,进行人脸识别。基于Yale人脸数据库的实验显示,在相同训练样本和特征向量条件下,M-2DPCA比2DPCA算法具有更高的识别率。结论 M-2DPCA充分利用了图像的协方差信息,在人脸识别方面具有较高的识别率和鲁棒性方面,对进一步研究人脸识别具有重要的意义。 展开更多
关键词 二维主成分分析 分块二维主成分分析法 特征提取 人脸识别 two-dimensional principal component analysis (2dpca)
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Micro-Expression Recognition Algorithm Based on Information Entropy Feature
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作者 WU Jin MIN Yu +1 位作者 YANG Xiaodie MA Simin 《Journal of Shanghai Jiaotong university(Science)》 EI 2020年第5期589-599,共11页
The intensity of the micro-expression is weak,although the directional low frequency components in the image are preserved by many algorithms,the extracted micro-expression ft^ature information is not sufficient to ac... The intensity of the micro-expression is weak,although the directional low frequency components in the image are preserved by many algorithms,the extracted micro-expression ft^ature information is not sufficient to accurately represent its sequences.In order to improve the accuracy of micro-expression recognition,first,each frame image is extracted from,its sequences,and the image frame is pre-processed by using gray normalization,size normalization,and two-dimensional principal component analysis(2DPCA);then,the optical flow method is used to extract the motion characteristics of the reduced-dimensional image,the information entropy value of the optical flow characteristic image is calculated by the information entropy principle,and the information entropy value is analyzed to obtain the eigenvalue.Therefore,more micro-expression feature information is extracted,including more important information,which can further improve the accuracy of micro-expression classification and recognition;finally,the feature images are classified by using the support vector machine(SVM).The experimental results show that the micro-expression feature image obtained by the information entropy statistics can effectively improve the accuracy of micro-expression recognition. 展开更多
关键词 micro-expression recognition two-dimensional principal component analysis(2dpca) optical flow information entropy statistics support vector machine(SVM)
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