期刊文献+

标架丛上的局部特征联络学习算法

Local Feature Connection Learning Algorithm Based on Frame Bundle
下载PDF
导出
摘要 人脸识别问题中,经常会面临样本少的情况,在身份证识别、电子护照识别等系统中,甚至只有一个训练样本,很多传统人脸识别方法在处理单样本时将失效。从流形学习角度出发提出了一种有效解决单样本人脸识别的方法。以自组织映射神经网络为基础,将人脸局部特征(眼、鼻、嘴等)视为一个流形,训练出多流形结构。利用联络关联不同的流形,同时学习出局部特征流形间与流形内的方向变化信息,再进行有监督的训练。整个方法结合了神经网络学习和流形学习,将单样本人脸识别问题转换成多流形匹配问题。在著名人脸库ORL、UMIST、FERET、AR上的实验显示该算法在处理单样本问题时优于已有算法,在处理姿态、表情等变化问题时也表现出很好的效果。 Small sample size is one challenging problem for face recognition. In many practical applications such as ID card identification, e-passport, even there is only single sample per person. Many traditional methods fail to work in this scenario because there are not enough samples for learning. This paper proposes a novel method which is based on manifold learning to solve this problem. Firstly, this proposed method views local feature(eyes, nose,mouth) of a face as a manifold and uses self-organization mapping neural network to train a multi-manifold structure. Then it associates each manifold by connection operator on frame bundle and learns the directions of intermanifold and intra-manifold which are not sensitive to the variations of the input. Finally, it adds this additional information to supervised training. The proposed method combines neural network and manifold learning, changing single sample problem to multi- manifold matching problem. Experiments on well- known face databases ORL,UMIST, FERET and AR show that the proposed method outperforms some renowned methods and gets a better performance when facing the problem of variation of expression and pose, etc.
出处 《计算机科学与探索》 CSCD 北大核心 2016年第4期533-542,共10页 Journal of Frontiers of Computer Science and Technology
基金 国家自然科学基金Nos.61033013 60775045 东吴学者计划No.14317360~~
关键词 联络学习 标架丛 多流形 横空间 纵空间 单样本训练 connection learning frame bundle multi-manifold horizontal space vertical space one training sample
  • 相关文献

参考文献29

  • 1Brunelli R, Poggio T. Face recognition: features versus tem- plates[J]. IEEE Transactions on Pattern Analysis and Ma- chine Intelligence, 1993, 15(10): 1042-1052.
  • 2Turk M, Pentland A. Eigenfaces for recognition[J]. Journal of Cognitive Neuroscience, 1991, 3(1): 71-86.
  • 3Martinez A M, Kak A C. PCA versus LDA[J]. IEEE Trans- actions on Pattern Analysis and Machine Intelligence, 2001, 23(2): 228-233.
  • 4Er M J, Wu Shiqian, Lu Juwei, et al. Face recognition with radial basis function (RBF) neural networks[J]. IEEE Trans- actions on Neural Networks, 2002, 13(3): 697-710.
  • 5Tan Xiaoyang, Chen Songcan, Zhou Zhihua, et al. Face recog- nition from a single image per person: a survey[J]. Pattern recognition, 2006, 39(9): 1725-1745.
  • 6Pang Yanwei, Pan Jing, Liu Zhengkai. Cluster-based LDA for single sample problem in face recognition[C]//Procee- dings of the 2005 International Conference on MachineLearning and Cybernetics, Guangzhou, China, Aug 18-21, 2005. Piscataway, USA: IEEE, 2005: 4583-4587.
  • 7Wu Jianxin, Zhou Zhihua. Face recognition with one training image per person[J]. Pattern Recognition Letters, 2002, 23 (14): 1711-1719.
  • 8Chert Songcan, Zhang Daoqiang, Zhou Zhihua. Enhanced (PC)2A for face recognition with one training image per person[J]. Pattern Recognition Letters, 2004, 25(10): 1173- 1181.
  • 9Yang Jian, Zhang D, Frangi A F, et al. Two-dimensional PCA: a new approach to appearance-based face representa- tion and recognition[J]. IEEE Transactions on Pattern Anal- ysis and Machine Intelligence, 2004, 26(1): 131-137.
  • 10Zhang Daoqiang, Zhou Zhihua. (2D)2PCA: two-directional two-dimensional PCA for efficient face representation and recognition[J]. Neurocomputing, 2005, 69(1): 224-23 I.

共引文献69

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部