Orthogonal Procrustes Analysis for Dictionary Learning in Sparse Linear Representation

被引:11
|
作者
Grossi, Giuliano [1 ]
Lanzarotti, Raffaella [1 ]
Lin, Jianyi [2 ]
机构
[1] Univ Milan, Dept Comp Sci, Via Comelico 39, I-20135 Milan, Italy
[2] Khalifa Univ, Dept Appl Math & Sci, Al Saada St,POB 127788, Abu Dhabi, U Arab Emirates
来源
PLOS ONE | 2017年 / 12卷 / 01期
关键词
IMAGE REPRESENTATIONS; ALGORITHMS; DECOMPOSITION; COMPRESSION; REGRESSION;
D O I
10.1371/journal.pone.0169663
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the effectiveness and applicability in different domains. Recent research has produced several dictionary learning approaches, being proven that dictionaries learnt by data examples significantly outperform structured ones, e.g. wavelet transforms. In this context, learning consists in adapting the dictionary atoms to a set of training signals in order to promote a sparse representation that minimizes the reconstruction error. Finding the best fitting dictionary remains a very difficult task, leaving the question still open. A well -established heuristic method for tackling this problem is an iterative alternating scheme, adopted for instance in the well-known K-SVD algorithm. Essentially, it consists in repeating two stages; the former promotes sparse coding of the training set and the latter adapts the dictionary to reduce the error. In this paper we present R-SVD, a new method that, while maintaining the alternating scheme, adopts the Orthogonal Procrustes analysis to update the dictionary atoms suitably arranged into groups. Comparative experiments on synthetic data prove the effectiveness of R-SVD with respect to well known dictionary learning algorithms such as K-SVD, ILSDLA and the online method OSDL. Moreover, experiments on natural data such as ECG compression, EEG sparse representation, and image modeling confirm R-SVD's robustness and wide applicability.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Laplacian sparse dictionary learning for image classification based on sparse representation
    Fang Li
    Jia Sheng
    San-yuan Zhang
    Frontiers of Information Technology & Electronic Engineering, 2017, 18 : 1795 - 1805
  • [22] Laplacian sparse dictionary learning for image classification based on sparse representation
    Li, Fang
    Sheng, Jia
    Zhang, San-yuan
    FRONTIERS OF INFORMATION TECHNOLOGY & ELECTRONIC ENGINEERING, 2017, 18 (11) : 1795 - 1805
  • [23] Greedy double sparse dictionary learning for sparse representation of speech signals
    Abrol, V.
    Sharma, P.
    Sao, A. K.
    SPEECH COMMUNICATION, 2016, 85 : 71 - 82
  • [24] Adaptive ADMM for Dictionary Learning in Convolutional Sparse Representation
    Peng, Guan-Ju
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2019, 28 (07) : 3408 - 3422
  • [25] Analysis for sparse channel representation based on dictionary learning in massive MIMO systems
    Guan, Qing-Yang
    IET COMMUNICATIONS, 2024,
  • [26] IMPROVED ONLINE DICTIONARY LEARNING FOR SPARSE SIGNAL REPRESENTATION
    Yeganli, Faezeh
    Ozkaramanli, Huseyin
    2014 22ND SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE (SIU), 2014, : 1702 - 1705
  • [27] Distributed Dictionary Learning for Sparse Representation in Sensor Networks
    Liang, Junli
    Zhang, Miaohua
    Zeng, Xianyu
    Yu, Guoyang
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2014, 23 (06) : 2528 - 2541
  • [28] Dictionary Learning with Log-regularizer for Sparse Representation
    Li, Zhenni
    Ding, Shuxue
    Li, Yujie
    2015 IEEE INTERNATIONAL CONFERENCE ON DIGITAL SIGNAL PROCESSING (DSP), 2015, : 609 - 613
  • [29] Dictionary learning via locality preserving for sparse representation
    School of Computer Science and Technology, Anhui University, Hefei 230601, Anhui, China
    不详
    Huanan Ligong Daxue Xuebao, 1 (142-146):
  • [30] Latent Dictionary Learning for Sparse Representation based Classification
    Yang, Meng
    Dai, Dengxin
    Shen, Linlin
    Van Gool, Luc
    2014 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2014, : 4138 - 4145