Semi-supervised robust dictionary learning via efficient l-norms minimization

Hua Wang, Feiping Nie, Weidong Cai, Heng Huang

科研成果: 书/报告/会议事项章节会议稿件同行评审

64 引用 (Scopus)

摘要

Representing the raw input of a data set by a set of relevant codes is crucial to many computer vision applications. Due to the intrinsic sparse property of real-world data, dictionary learning, in which the linear decomposition of a data point uses a set of learned dictionary bases, i.e., codes, has demonstrated state-of-the-art performance. However, traditional dictionary learning methods suffer from three weaknesses: sensitivity to noisy and outlier samples, difficulty to determine the optimal dictionary size, and incapability to incorporate supervision information. In this paper, we address these weaknesses by learning a Semi-Supervised Robust Dictionary (SSR-D). Specifically, we use the l2,0+-norm as the loss function to improve the robustness against outliers, and develop a new structured sparse regularization to incorporate the supervision information in dictionary learning, without incurring additional parameters. Moreover, the optimal dictionary size is automatically learned from the input data. Minimizing the derived objective function is challenging because it involves many non-smooth l2,0+-norm terms. We present an efficient algorithm to solve the problem with a rigorous proof of the convergence of the algorithm. Extensive experiments are presented to show the superior performance of the proposed method.

源语言英语
主期刊名Proceedings - 2013 IEEE International Conference on Computer Vision, ICCV 2013
出版商Institute of Electrical and Electronics Engineers Inc.
1145-1152
页数8
ISBN(印刷版)9781479928392
DOI
出版状态已出版 - 2013
已对外发布
活动2013 14th IEEE International Conference on Computer Vision, ICCV 2013 - Sydney, NSW, 澳大利亚
期限: 1 12月 20138 12月 2013

出版系列

姓名Proceedings of the IEEE International Conference on Computer Vision

会议

会议2013 14th IEEE International Conference on Computer Vision, ICCV 2013
国家/地区澳大利亚
Sydney, NSW
时期1/12/138/12/13

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