Discriminative Feature Learning via Sparse Autoencoders with Label Consistency Constraints

被引:0
|
作者
Cong Hu
Xiao-Jun Wu
Zhen-Qiu Shu
机构
[1] Jiangnan University,School of Internet of Things Engineering
[2] Jiangsu University of Technology,School of Computer Engineering
来源
Neural Processing Letters | 2019年 / 50卷
关键词
Discriminative feature learning; Label consistency constraints; Deep neural networks; Autoencoder;
D O I
暂无
中图分类号
学科分类号
摘要
Autoencoders have been successfully used to build deep hierarchical models of data. However, a deep architecture usually needs further supervised fine-tuning to obtain better discriminative capacity. To improve the discriminative capacity of deep hierarchical features, this paper proposes a new deterministic autoencoder, trained by a label consistency constraints algorithm that injects discriminative information to the network. We introduce the center loss as label consistency constraints to learn the hidden features of data and add it to the Sparse AutoEncoder to form a new autoencoder, namely Label Consistency Constrained Sparse AutoEncoders (LCCSAE). Specifically, the center loss learns the center of each class, and simultaneously penalizes the distances between the features and their corresponding class centers. In the end, autoencoders are stacked to form a deep architecture of LCCSAE for image classification tasks. To validate the effectiveness of LCCSAE, we compare it with other autoencoders in terms of the deeply learned features and the subsequent classification tasks on MNIST and CIFAR-bw datasets. Experimental results demonstrate the superiority of LCCSAE over other methods.
引用
收藏
页码:1079 / 1091
页数:12
相关论文
共 50 条
  • [21] Effective Transfer Learning with Label-Based Discriminative Feature Learning
    Kim, Gyunyeop
    Kang, Sangwoo
    SENSORS, 2022, 22 (05)
  • [22] Discriminative feature learning and selection with label-induced sparse filtering for intelligent fault diagnosis of rotating machinery
    Zhang, Zhiqiang
    Xu, Shuiqing
    Chen, Hongtian
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2023, 196
  • [23] Local discriminative based sparse subspace learning for feature selection
    Shang, Ronghua
    Meng, Yang
    Wang, Wenbing
    Shang, Fanhua
    Jiao, Licheng
    PATTERN RECOGNITION, 2019, 92 : 219 - 230
  • [24] Learning Sparse and Discriminative Multimodal Feature Codes for Finger Recognition
    Li, Shuyi
    Zhang, Bob
    Fei, Lunke
    Zhao, Shuping
    Zhou, Yicong
    IEEE TRANSACTIONS ON MULTIMEDIA, 2023, 25 : 805 - 815
  • [25] Learning a Discriminative Feature Descriptor with Sparse Coding for Action Recognition
    Li, Lingqiao
    Zhang, Tao
    Pan, Xipeng
    Yang, Huihua
    Liu, Zhenbing
    2018 17TH INTERNATIONAL SYMPOSIUM ON DISTRIBUTED COMPUTING AND APPLICATIONS FOR BUSINESS ENGINEERING AND SCIENCE (DCABES), 2018, : 80 - 83
  • [26] Sparse discriminative feature selection
    Yan, Hui
    Yang, Jian
    PATTERN RECOGNITION, 2015, 48 (05) : 1827 - 1835
  • [27] Graph structure learning based on feature and label consistency
    Yuan, Jinliang
    Yao, Yirong
    Xu, Ming
    Yu, Hualei
    Xie, Junyuan
    Wang, Chongjun
    INTELLIGENT DATA ANALYSIS, 2022, 26 (06) : 1539 - 1555
  • [28] Disambiguation-based partial label feature selection via feature dependency and label consistency
    Qian, Wenbin
    Li, Yihui
    Ye, Qianzhi
    Ding, Weiping
    Shu, Wenhao
    INFORMATION FUSION, 2023, 94 : 152 - 168
  • [29] LEARNING LOW RANK AND SPARSE MODELS VIA ROBUST AUTOENCODERS
    Pu, Jie
    Panagakis, Yannis
    Pantic, Maja
    2019 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2019, : 3192 - 3196
  • [30] Facial expression recognition via learning deep sparse autoencoders
    Zeng, Nianyin
    Zhang, Hong
    Song, Baoye
    Liu, Weibo
    Li, Yurong
    Dobaie, Abdullah M.
    NEUROCOMPUTING, 2018, 273 : 643 - 649