Robust discriminative feature learning with calibrated data reconstruction and sparse low-rank model

Author(s):  
Tingjin Luo ◽  
Yang Yang ◽  
Dongyun Yi ◽  
Jieping Ye
PLoS ONE ◽  
2019 ◽  
Vol 14 (5) ◽  
pp. e0215450 ◽  
Author(s):  
Ao Li ◽  
Xin Liu ◽  
Yanbing Wang ◽  
Deyun Chen ◽  
Kezheng Lin ◽  
...  

Complexity ◽  
2020 ◽  
Vol 2020 ◽  
pp. 1-14
Author(s):  
Ao Li ◽  
Yu Ding ◽  
Xunjiang Zheng ◽  
Deyun Chen ◽  
Guanglu Sun ◽  
...  

Recently, cross-view feature learning has been a hot topic in machine learning due to the wide applications of multiview data. Nevertheless, the distribution discrepancy between cross-views leads to the fact that instances of the different views from same class are farther than those within the same view but from different classes. To address this problem, in this paper, we develop a novel cross-view discriminative feature subspace learning method inspired by layered visual perception from human. Firstly, the proposed method utilizes a separable low-rank self-representation model to disentangle the class and view structure layers, respectively. Secondly, a local alignment is constructed with two designed graphs to guide the subspace decomposition in a pairwise way. Finally, the global discriminative constraint on distribution center in each view is designed for further alignment improvement. Extensive cross-view classification experiments on several public datasets prove that our proposed method is more effective than other existing feature learning methods.


2018 ◽  
Vol 81 ◽  
pp. 71-80 ◽  
Author(s):  
Weiwei Shi ◽  
Yihong Gong ◽  
De Cheng ◽  
Xiaoyu Tao ◽  
Nanning Zheng

Author(s):  
Haitao Zhao ◽  
Zhihui Lai ◽  
Henry Leung ◽  
Xianyi Zhang
Keyword(s):  

Author(s):  
Xiawu Zheng ◽  
Rongrong Ji ◽  
Xiaoshuai Sun ◽  
Yongjian Wu ◽  
Feiyue Huang ◽  
...  

Fine-grained object retrieval has attracted extensive research focus recently. Its state-of-the-art schemesare typically based upon convolutional neural network (CNN) features. Despite the extensive progress, two issues remain open. On one hand, the deep features are coarsely extracted at image level rather than precisely at object level, which are interrupted by background clutters. On the other hand, training CNN features with a standard triplet loss is time consuming and incapable to learn discriminative features. In this paper, we present a novel fine-grained object retrieval scheme that conquers these issues in a unified framework. Firstly, we introduce a novel centralized ranking loss (CRL), which achieves a very efficient (1,000times training speedup comparing to the triplet loss) and discriminative feature learning by a ?centralized? global pooling. Secondly, a weakly supervised attractive feature extraction is proposed, which segments object contours with top-down saliency. Consequently, the contours are integrated into the CNN response map to precisely extract features ?within? the target object. Interestingly, we have discovered that the combination of CRL and weakly supervised learning can reinforce each other. We evaluate the performance ofthe proposed scheme on widely-used benchmarks including CUB200-2011 and CARS196. We havereported significant gains over the state-of-the-art schemes, e.g., 5.4% over SCDA [Wei et al., 2017]on CARS196, and 3.7% on CUB200-2011.  


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