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Dual graph regularized NMF model for social event detection from Flickr data
Authors:Zhenguo Yang  Qing Li  Wenyin Liu  Yun Ma  Min Cheng
Affiliation:1.Department of Computer Science,City University of Hong Kong,Hong Kong,China;2.Multimedia-software Engineering Research Centre,City University of Hong Kong,Hong Kong,China;3.School of Computer Science and Technology,Guangdong University of Technology,Guangdong,China
Abstract:In this work, we aim to discover real-world events from Flickr data by devising a three-stage event detection framework. In the first stage, a multimodal fusion (MF) model is designed to deal with the heterogeneous feature modalities possessed by the user-shared data, which is advantageous in computation complexity. In the second stage, a dual graph regularized non-negative matrix factorization (DGNMF) model is proposed to learn compact feature representations. DGNMF incorporates Laplacian regularization terms for the data graph and base graph into the objective, keeping the geometry structures underlying the data samples and dictionary bases simultaneously. In the third stage, hybrid clustering algorithms are applied seamlessly to discover event clusters. Extensive experiments conducted on the real-world dataset reveal the MF-DGNMF-based approaches outperform the baselines.
Keywords:
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