Title
Unsupervised Human Action Categorization with Consensus Information Bottleneck Method.
Abstract
Recent researches have shown consensus clustering can enhance the accuracy of human action categorization models by combining multiple clusterings, which can be obtained from various types of local descriptors, such as HOG, HOF and MBH. However, consensus clustering yields final clustering without access to the underlying feature representations of the human action data, which always makes the final partition limited to the quality of existing basic clusterings. To solve this problem, we present a novel and effective Consensus Information Bottleneck (CIB) method for unsupervised human action categorization. CIB is capable of learning action categories from feature variable and auxiliary clusterings simultaneously. Specifically, by performing Maximization of Mutual Information (MMI), CIB maximally preserves the information between feature variable and existing auxiliary clusterings. Moreover, to solve MMI optimization, a sequential solution is proposed to update data partition. Extensive experiments on five realistic human action data sets show that CIB can consistently and significantly beat other state-of-the-art consensus and multi-view clustering methods.
Year
Venue
Field
2016
IJCAI
Data mining,Categorization,Data set,Computer science,Consensus clustering,Mutual information,Artificial intelligence,Information bottleneck method,Cluster analysis,Data partitioning,Maximization,Machine learning
DocType
Citations 
PageRank 
Conference
1
0.35
References 
Authors
15
3
Name
Order
Citations
PageRank
Xiaoqiang Yan1205.35
Yangdong Ye211829.64
Xueying Qiu351.08