Discriminative dictionary learning algorithm based on sample diversity and locality of atoms for face recognition

Author(s):  
Shigang Liu ◽  
Yuhong Wang ◽  
Xiaosheng Wu ◽  
Jun Li ◽  
Tao Lei
Author(s):  
Guojun Lin ◽  
Meng Yang ◽  
Linlin Shen ◽  
Mingzhong Yang ◽  
Mei Xie

For face recognition, conventional dictionary learning (DL) methods have some disadvantages. First, face images of the same person vary with facial expressions and pose, illumination and disguises, so it is hard to obtain a robust dictionary for face recognition. Second, they don’t cover important components (e.g., particularity and disturbance) completely, which limit their performance. In the paper, we propose a novel robust and discriminative DL (RDDL) model. The proposed model uses sample diversities of the same face image to learn a robust dictionary, which includes class-specific dictionary atoms and disturbance dictionary atoms. These atoms can well represent the data from different classes. Discriminative regularizations on the dictionary and the representation coefficients are used to exploit discriminative information, which improves effectively the classification capability of the dictionary. The proposed RDDL is extensively evaluated on benchmark face image databases, and it shows superior performance to many state-of-the-art dictionary learning methods for face recognition.


2019 ◽  
Vol 95 ◽  
pp. 102573
Author(s):  
Heyou Chang ◽  
Fanlong Zhang ◽  
Guangwei Gao ◽  
Hao Zheng ◽  
Yang Chen

Author(s):  
Dima Shaheen ◽  
Oumayma Al Dakkak ◽  
Mohiedin Wainakh

Speech enhancement is one of the many challenging tasks in signal processing, especially in the case of nonstationary speech-like noise. In this paper a new incoherent discriminative dictionary learning algorithm is proposed to model both speech and noise, where the cost function accounts for both “source confusion” and “source distortion” errors, with a regularization term that penalizes the coherence between speech and noise sub-dictionaries. At the enhancement stage, we use sparse coding on the learnt dictionary to find an estimate for both clean speech and noise amplitude spectrum. In the final phase, the Wiener filter is used to refine the clean speech estimate. Experiments on the Noizeus dataset, using two objective speech enhancement measures: frequency-weighted segmental SNR and Perceptual Evaluation of Speech Quality (PESQ) demonstrate that the proposed algorithm outperforms other speech enhancement methods tested.


2014 ◽  
Vol 47 (5) ◽  
pp. 1835-1845 ◽  
Author(s):  
Hui-Dong Liu ◽  
Ming Yang ◽  
Yang Gao ◽  
Yilong Yin ◽  
Liang Chen

Sign in / Sign up

Export Citation Format

Share Document