尹明

个人信息Personal Information

教授

硕士生导师

教师拼音名称:yinming

入职时间:2006-07-01

所在单位:自动化学院

性别:男

联系方式:yiming@gdut.edu.cn

学位:工学博士学位

在职信息:调出

学科:模式识别与智能系统

论文成果

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Low Rank Sequential Subspace Clustering

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DOI码:10.1109/IJCNN.2015.7280328

发表刊物:The annual International Joint Conference on Neural Networks(IJCNN) 2015

摘要:Sequential data are ubiquitous in data analysis. For example hyperspectral data taken from a drill hole in geology, high throughput X-ray diffraction measurements in materials re­search and EEG brain wave signals in neuroscience. The common feature of sequential data is that they are all acquired subject to one external variable such as location, time or temperature. The data evolve along the direction of that variable through several patterns and the "neigh boring" data are very likely to share similar features. The purpose of the segmentation for sequential data is then to identify those sequentially continuous segments/patterns. We approach this problem by adopting the subspace clustering method and propose a novel algorithm called low rank sequential subs pace clustering (LRSSC), inspired by another method called spatial subspace clustering (SpatSC). SpatSC finds the subspaces by data self-reconstruction with a sparsity constraint on reconstruction weights and promotes the spatial smoothness of the weights by fusion, the essential part in the fused LASSO. However, the subspace identification capability is limited due to the indeterminacy of the sparse regression in finding suitable samples to linearly reconstruct a given sample. This confuses the graph cut algorithm that produces the final clustering results on the weights. To overcome this drawback, we propose to use the low rank penalty instead of sparsity in learning phase to separate subspaces. This improves the subspace identification as well as the robustness to noise. To demonstrate its effectiveness, we test LRSSC on both simulated and real world data compared with SpatSC and other methods. The proposed algorithm is superior to others when noise level is very high.

合写作者:Junbin Gao,Stephen Tierney,Feng Li,Ming Yin

第一作者:Yi Guo

论文类型:会议论文

页面范围:p:1-8. (CCF C类会议)

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发表时间:2015-07-13