Graph-based dynamic ensemble pruning for facial expression recognition

被引:2
|
作者
Danyang Li
Guihua Wen
Xu Li
Xianfa Cai
机构
[1] Guizhou University,
[2] South China University of Technology,undefined
[3] Guizhou Agricultural Information Center,undefined
[4] Guangdong Pharmaceutical University,undefined
来源
Applied Intelligence | 2019年 / 49卷
关键词
Facial expression recognition; Dynamic ensemble pruning; Classifier behavior; Geodesic distance;
D O I
暂无
中图分类号
学科分类号
摘要
Ensemble learning is an effective method to enhance the recognition accuracy of facial expressions. The performance of ensemble learning can be affected by many factors, such as the accuracy of the classifier pool’s component members and the diversity of classifier pool. Therefore, choosing the component members of ensemble learning reasonably can be helpful to maintain or enhance the recognition rate of facial expressions. In this paper, we propose a novel dynamic ensemble pruning method called graph-based dynamic ensemble pruning (GDEP) and apply it to the field of facial expression recognition. The GDEP’s main intension is to solve the problem that in the dynamic ensemble pruning methods, the classifier selection process is heavily sensitive to the membership in test sample’s neighborhood. Like all other dynamic ensemble pruning methods, GDEP can be divided into three steps: 1) Construct the neighborhood; 2) Evaluate the classifiers’ performance; 3) Form the selected classifier subset according to the classifiers’ capacity for recognizing a specific test image. And in order to achieve the GDEP’s intension, in the first step, this paper chooses neighborhood members more carefully by taking use of the statistics of classifiers’ behavior to characterize the intensity and similarity of emotions in data samples, and using the geodesic distance to calculate the data samples’ similarity. In the second step, GDEP builds the must-link and cannot-link graphs in the neighborhood to measure the classifiers’ performance and reduce the impact of inappropriate samples in the neighborhood. The experiments on the Fer2013, JAFFE and CK+ databases show the effectiveness of GDEP and demonstrate that it can compete with many state-of-art methods.
引用
收藏
页码:3188 / 3206
页数:18
相关论文
共 50 条
  • [41] Dynamic Graph-Based Malware Classifier
    Jazi, Hossein Hadian
    Ghorbani, Ali A.
    2016 14TH ANNUAL CONFERENCE ON PRIVACY, SECURITY AND TRUST (PST), 2016,
  • [42] Dynamic graph-based software fingerprinting
    Collberg, Christian S.
    Thomborson, Clark
    Townsend, Gregg M.
    ACM TRANSACTIONS ON PROGRAMMING LANGUAGES AND SYSTEMS, 2007, 29 (06):
  • [43] Facial Expression Recognition based on Graph Convolutional Networks with Phase Congruency
    Yang, Kunlin
    Tang, Hui
    Chai, Li
    2020 CHINESE AUTOMATION CONGRESS (CAC 2020), 2020, : 1431 - 1436
  • [44] Discriminant Graph Structures for Facial Expression Recognition
    Zafeiriou, Stefanos
    Pitas, Ioannis
    IEEE TRANSACTIONS ON MULTIMEDIA, 2008, 10 (08) : 1528 - 1540
  • [45] Graph-based matching for recognition of machined features
    Zhang, L.
    Liu, X.
    Jixie Kexue Yu Jishu/Mechanical Science and Technology, 2001, 20 (06): : 929 - 930
  • [46] Graph-Based Discriminative Learning for Location Recognition
    Cao, Song
    Snavely, Noah
    INTERNATIONAL JOURNAL OF COMPUTER VISION, 2015, 112 (02) : 239 - 254
  • [47] Graph-Based Discriminative Learning for Location Recognition
    Cao, Song
    Snavely, Noah
    2013 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2013, : 700 - 707
  • [48] New graph-based features for shape recognition
    Mirehi, Narges
    Tahmasbi, Maryam
    Targhi, Alireza Tavakoli
    SOFT COMPUTING, 2021, 25 (11) : 7577 - 7592
  • [49] Graph-Based Discriminative Learning for Location Recognition
    Song Cao
    Noah Snavely
    International Journal of Computer Vision, 2015, 112 : 239 - 254
  • [50] New graph-based features for shape recognition
    Narges Mirehi
    Maryam Tahmasbi
    Alireza Tavakoli Targhi
    Soft Computing, 2021, 25 : 7577 - 7592