We present a novel cross-view classification algorithm where the gallery and probe data come from different views. A popular approach to tackle this problem is the multiview subspace learning (MvSL) that aims to learn a latent subspace shared by multiview data. Despite promising results obtained on some applications, the performance of existing methods deteriorates dramatically when the multiview data is sampled from nonlinear manifolds or suffers from heavy outliers. To circumvent this drawback, motivated by the Divide-and-Conquer strategy, we propose multiview hybrid embedding (MvHE), a unique method of dividing the problem of cross-view classification into three subproblems and building one model for each subproblem. Specifically, the first model is designed to remove view discrepancy, whereas the second and third models attempt to discover the intrinsic nonlinear structure and to increase the discriminability in intraview and interview samples, respectively. The kernel extension is conducted to further boost the representation power of MvHE. Extensive experiments are conducted on four benchmark datasets. Our methods demonstrate the overwhelming advantages against the state-of-the-art MvSL-based cross-view classification approaches in terms of classification accuracy and robustness.
Multiview Hybrid Embedding: A Divide-and-Conquer Approach
Jiamiao Xu,Shujian Yu,Xinge You,Mengjun Leng,Xiaoyuan Jing,C. L. P. Chen
Published 2018 in IEEE Transactions on Cybernetics
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- Publication year
2018
- Venue
IEEE Transactions on Cybernetics
- Publication date
2018-04-19
- Fields of study
Mathematics, Computer Science, Medicine
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Semantic Scholar, PubMed
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