[1]唐肝翌,卢桂馥,王 勇,等.基于L1-范数和弹性网约束的鲁棒稀疏块PCA[J].南京师大学报(自然科学版),2022,45(04):102-109.[doi:10.3969/j.issn.1001-4616.2022.04.014]
 Tang Ganyi,Lu Guifu,Wang Yong,et al.Robust and Sparse BPCA with the Constraints of L1-norm and the Elastic Net[J].Journal of Nanjing Normal University(Natural Science Edition),2022,45(04):102-109.[doi:10.3969/j.issn.1001-4616.2022.04.014]
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基于L1-范数和弹性网约束的鲁棒稀疏块PCA()
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《南京师大学报(自然科学版)》[ISSN:1001-4616/CN:32-1239/N]

卷:
第45卷
期数:
2022年04期
页码:
102-109
栏目:
计算机科学与技术
出版日期:
2022-12-15

文章信息/Info

Title:
Robust and Sparse BPCA with the Constraints of L1-norm and the Elastic Net
文章编号:
1001-4616(2022)04-0102-08
作者:
唐肝翌1卢桂馥1王 勇12范莉莉1杜扬帆1
(1.安徽工程大学计算机与信息学院,安徽 芜湖 241000)
(2.计算机软件国家重点实验室(南京大学),江苏 南京 210023)
Author(s):
Tang Ganyi1Lu Guifu1Wang Yong12Fan Lili1Du Yangfan1
(1.School of Computer and Information,Anhui Polytechnic University,Wuhu 241000,China)
(2.State Key Laboratory for Novel Software Technology,Nanjing University,Nanjing 210023,China)
关键词:
块主成份分析L1-范数弹性网稀疏建模子空间学习
Keywords:
BPCAL1-normelastic netsparse modellingsubspace learning
分类号:
TP391
DOI:
10.3969/j.issn.1001-4616.2022.04.014
文献标志码:
A
摘要:
块主成份分析(block principal component analysis,BPCA)是一种重要的子空间学习方法,能充分利用图像矩阵的部分关联. 基于L1-范数的BPCA是近年来发展起来的鲁棒降维的有效方法. 本研究提出了一种新的鲁棒稀疏BPCA方法,称之为BPCAL1-S. 该方法相对于传统的基于L2-范数的PCA对噪声更加鲁棒. 为了建立稀疏模型,优化过程中引入弹性网,联合使用Lasso与Ridge惩罚因子进行约束. 提出了一种贪心算法逐个提取特征向量,对迭代过程的收敛性做了理论证明. 将BPCAL1-S应用于图像分类与图像重构,实验结果验证了该方法的有效性.
Abstract:
Block principal component analysis(BPCA),which can utilize part correlation of image matrix sufficiently,is an important subspace learning approach. L1-norm based BPCA is an effective technique for robust learning in dimensionality reduction developed recently. We propose a novel robust and sparse BPCA method referred to as BPCAL1-S. The approach is more robust to outliers than the traditional L2-norm based PCA. To develop a model with sparsity,the elastic net constraint which combining ridge and lasso penalty,is integrated into the optimization procedure. We present a greedy algorithm to extract basic feature vectors one by one,and proposed theoretical analysis to guarantee the convergence of the iterative process. The proposed BPCAL1-S is applied to the analysis of image classification and image reconstruction,and the experimental results verify its effectiveness.

参考文献/References:

[1]JOLLIFFE I. Principal component analysis[M]. New York,XY,USA:Springer,2004.
[2]YANG J,ZHANG D,FRANGI A F,et al. Two-dimensional PCA:a new approach to appearance-based face representation and recognition[J]. IEEE transaction on pattern analysis and machine intelligence,2004,28(1):131-137.
[3]KE Q,KANADE T. Robust L1 Norm factorization in the presence of outliers and missing data by alternative convex programming[C]//Proceedings of the 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. San Diego,USA:IEEE,2005.
[4]DING C,ZHOU D,HE X,et al. R1-PCA:Rotational invariant L1-Norm principal component analysis for robust subspace factorization[C]//Proceedings of the 23rd International Conference on Machine Learning. Pittsburgh,USA:the International Conference on Machine Learning,2006.
[5]KWAK N. Principal component analysis based on L1-Norm maximization[J]. IEEE transaction on pattern analysis and machine intelligence,2008,30(9):1672-1680.
[6]LI X,PANG Y,YUAN Y. L1-Norm-based 2DPCA[J]. IEEE transactions on systems man and cybernetics,2009,40(4):1170-1175.
[7]NIE F,HUANG H,DING C,et al. Robust principal component analysis with non-greedy L1-norm maximization[C]//Proceedings of the 22nd International Joint Conference on Artificial Intelligence. Barcelona,Spain:the International Joint Conferences on Artificial Intelligence,2011.
[8]WANG R,NIE F,YANG X,et al. Robust 2DPCA with non-greedy L1-Norm maximization for image analysis[J]. IEEE transactions on cybernetics,2015,45(5):1108-1112.
[9]KWAK N. Principal component analysis by Lp-Norm maximization[J]. IEEE transactions on cybernetics,2014,44(5):594-609.
[10]GAO Q X. Is two-dimensional PCA equivalent to a special case of modular PCA[J]. Pattern recognition letters,2007,28(10):1250-1251.
[11]GOTTUMUKKAL R,ASARI V K. An improved face recognition technique based on modular PCA approach[J]. Pattern recognition letters,2004,25(4):429-436.
[12]KIM C,CHOI C H. Image covariance-based subspace method for face recognition[J]. Pattern recognition,2007,40(5):1592-1604.
[13]WANG H. Block principal component analysis with L1-Norm for image analysis[J]. Pattern recognition letters,2012,33(5):537-542.
[14]LI BN,YU Q,WANG R,et al. Block principal component analysis with nongreedy L1-Norm maximization[J]. IEEE transactions on cybernetics,2015,46(11):2543-2547.
[15]孙茹君,张鲁飞. 基于动态指导的深度学习模型稀疏化执行方法[J]. 南京师大学报(自然科学版),2019,42(3):11-19.
[16]张明华,罗红玲,宋巍,等. 基于稀疏表示和学习图正则的高光谱图像特征提取[J]. 光子学报,2021,50(4):0410002.
[17]WANG H,WANG J. 2DPCA with L1-Norm for simultaneously robust and sparse modelling[J]. Neural networks,2013,46:190-198.
[18]WANG J. Generalized 2-D principal component analysis by Lp-Norm for image analysis[J]. IEEE transactions on cybernetics,2016,46(3):792-803.
[19]WANG Q,GAO Q,GAO X. L2,p-Norm based PCA for image recognition[J]. IEEE transactions on image processing,2018,27(3):1336-1346.
[20]GAO Q,XU S,CHEN F,et al. R1-2-DPCA and face recognition[J]. IEEE transactions on cybernetics,2019,49(4):1212-1223.
[21]ZOU H,HASTIE T,TIBSHIRANI R. Sparse principal component analysis[J]. Journal of computational and graphical statistics,2019,15(2):265-286.
[22]JENATTON R,OBOZINSKI G,BACH F. Structured sparse principal component analysis[C]//Proceedings of the 13th International Conference on Artificial Intelligence and Statistics. Chia Laguna Resort,Italy:JMLR Workshop and Conference Proceedings,2010.

备注/Memo

备注/Memo:
收稿日期:2022-04-16.
基金项目:国家自然科学基金项目(61976005)、安徽省自然科学基金项目(1908085MF183)、安徽高校自然科学研究项目重点项目(KJ2020A0363)、安徽工程大学“中青年拔尖人才培养计划”(201812)、计算机软件新技术国家重点实验室(南京大学)开放基金项目(KFKT2019B23)、安徽省高等教育提升计划项目(TSKJ2016B01)、安徽省高等学校省级质量工程项目(2019jyxm1183).
通讯作者:唐肝翌,硕士,副教授,研究方向:
更新日期/Last Update: 2022-12-15