The search functionality is under construction.
The search functionality is under construction.

Keyword Search Result

[Keyword] locality preserving(6hit)

1-6hit
  • Locality Preserved Joint Nonnegative Matrix Factorization for Speech Emotion Recognition

    Seksan MATHULAPRANGSAN  Yuan-Shan LEE  Jia-Ching WANG  

     
    LETTER

      Pubricized:
    2019/01/28
      Vol:
    E102-D No:4
      Page(s):
    821-825

    This study presents a joint dictionary learning approach for speech emotion recognition named locality preserved joint nonnegative matrix factorization (LP-JNMF). The learned representations are shared between the learned dictionaries and annotation matrix. Moreover, a locality penalty term is incorporated into the objective function. Thus, the system's discriminability is further improved.

  • Facial Expression Recognition via Regression-Based Robust Locality Preserving Projections

    Jingjie YAN  Bojie YAN  Ruiyu LIANG  Guanming LU  Haibo LI  Shipeng XIE  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2017/11/06
      Vol:
    E101-D No:2
      Page(s):
    564-567

    In this paper, we present a novel regression-based robust locality preserving projections (RRLPP) method to effectively deal with the issue of noise and occlusion in facial expression recognition. Similar to robust principal component analysis (RPCA) and robust regression (RR) approach, the basic idea of the presented RRLPP approach is also to lead in the low-rank term and the sparse term of facial expression image sample matrix to simultaneously overcome the shortcoming of the locality preserving projections (LPP) method and enhance the robustness of facial expression recognition. However, RRLPP is a nonlinear robust subspace method which can effectively describe the local structure of facial expression images. The test results on the Multi-PIE facial expression database indicate that the RRLPP method can effectively eliminate the noise and the occlusion problem of facial expression images, and it also can achieve better or comparative facial expression recognition rate compared to the non-robust and robust subspace methods meantime.

  • Visualizing Web Images Using Fisher Discriminant Locality Preserving Canonical Correlation Analysis

    Kohei TATENO  Takahiro OGAWA  Miki HASEYAMA  

     
    PAPER

      Pubricized:
    2017/06/14
      Vol:
    E100-D No:9
      Page(s):
    2005-2016

    A novel dimensionality reduction method, Fisher Discriminant Locality Preserving Canonical Correlation Analysis (FDLP-CCA), for visualizing Web images is presented in this paper. FDLP-CCA can integrate two modalities and discriminate target items in terms of their semantics by considering unique characteristics of the two modalities. In this paper, we focus on Web images with text uploaded on Social Networking Services for these two modalities. Specifically, text features have high discriminate power in terms of semantics. On the other hand, visual features of images give their perceptual relationships. In order to consider both of the above unique characteristics of these two modalities, FDLP-CCA estimates the correlation between the text and visual features with consideration of the cluster structure based on the text features and the local structures based on the visual features. Thus, FDLP-CCA can integrate the different modalities and provide separated manifolds to organize enhanced compactness within each natural cluster.

  • Learning a Two-Dimensional Fuzzy Discriminant Locality Preserving Subspace for Visual Recognition

    Ruicong ZHI  Lei ZHAO  Bolin SHI  Yi JIN  

     
    PAPER-Pattern Recognition

      Vol:
    E97-D No:9
      Page(s):
    2434-2442

    A novel Two-dimensional Fuzzy Discriminant Locality Preserving Projections (2D-FDLPP) algorithm is proposed for learning effective subspace of two-dimensional images. The 2D-FDLPP algorithm is derived from the Two-dimensional Locality Preserving Projections (2D-LPP) by exploiting both fuzzy and discriminant properties. 2D-FDLPP algorithm preserves the relationship degree of each sample belonging to given classes with fuzzy k-nearest neighbor classifier. Also, it introduces between-class scatter constrain and label information into 2D-LPP algorithm. 2D-FDLPP algorithm finds the subspace which can best discriminate different pattern classes and weakens the environment factors according to soft assignment method. Therefore, 2D-FDLPP algorithm has more discriminant power than 2D-LPP, and is more suitable for recognition tasks. Experiments are conducted on the MNIST database for handwritten image classification, the JAFFE database and Cohn-Kanade database for facial expression recognition and the ORL database for face recognition. Experimental results reported the effectiveness of our proposed algorithm.

  • Facial Expression Recognition Based on Sparse Locality Preserving Projection

    Jingjie YAN  Wenming ZHENG  Minghai XIN  Jingwei YAN  

     
    LETTER-Image

      Vol:
    E97-A No:7
      Page(s):
    1650-1653

    In this letter, a new sparse locality preserving projection (SLPP) algorithm is developed and applied to facial expression recognition. In comparison with the original locality preserving projection (LPP) algorithm, the presented SLPP algorithm is able to simultaneously find the intrinsic manifold of facial feature vectors and deal with facial feature selection. This is realized by the use of l1-norm regularization in the LPP objective function, which is directly formulated as a least squares regression pattern. We use two real facial expression databases (JAFFE and Ekman's POFA) to testify the proposed SLPP method and certain experiments show that the proposed SLPP approach respectively gains 77.60% and 82.29% on JAFFE and POFA database.

  • Dual Two-Dimensional Fuzzy Class Preserving Projections for Facial Expression Recognition

    Ruicong ZHI  Qiuqi RUAN  Jiying WU  

     
    LETTER-Pattern Recognition

      Vol:
    E91-D No:12
      Page(s):
    2880-2883

    This paper proposes a novel algorithm for image feature extraction-the dual two-dimensional fuzzy class preserving projections ((2D)2FCPP). The main advantages of (2D)2FCPP over two-dimensional locality preserving projections (2DLPP) are: (1) utilizing the fuzzy assignation mechanisms to construct the weight matrix, which can improve the classification results; (2) incorporating 2DLPP and alternative 2DLPP to get a more efficient dimensionality reduction method-(2D)2LPP.