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NONLINEAR SUBSPACE CLUSTERING

Citation Author(s):
Wencheng Zhu, Jiwen Lu, Jie Zhou
Submitted by:
wencheng zhu
Last updated:
5 September 2017 - 7:59am
Document Type:
Poster
Document Year:
2017
Event:
Presenters:
Wencheng Zhu
Paper Code:
ICIP-3037
 

This paper presents a nonlinear subspace clustering (NSC) method for image clustering. Unlike most existing subspace clustering methods which only exploit the linear relationship of samples to learn the affine matrix, our NSC reveals the multi-cluster nonlinear structure of samples via a nonlinear neural network. While kernel-based clustering methods can also address the nonlinear issue of samples, this type of methods suffers from the scalability issue. Differently, our NSC employs a feed-forward neural network to map samples into a nonlinear space and performs subspace clustering at the top layer of the network, so that the mapping functions and the clustering issues are iteratively learned. Experimental results illustrate that our NSC outperforms the state-of-the-arts.

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