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  • 曹俊杰 ( 副教授 )

    的个人主页 http://faculty.dlut.edu.cn/jjcao/en/index.htm

  •   副教授   硕士生导师
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Learning to Diffuse: A New Perspective to Design PDEs for Visual Analysis

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论文类型:期刊论文
第一作者:Liu, Risheng
通讯作者:Liu, RS (reprint author), Dalian Univ Technol, Sch Software Technol, Key Lab Ubiquitous Network & Serv Software Liaoni, Dalian, Peoples R China.
合写作者:Zhong, Guangyu,Cao, Junjie,Lin, Zhouchen,Shan, Shiguang,Luo, Zhongxuan
发表时间:2016-12-01
发表刊物:IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE
收录刊物:SCIE、EI、Scopus
卷号:38
期号:12
页面范围:2457-2471
ISSN号:0162-8828
关键字:Visual diffusion; PDE governed combinatorial optimization; submodularity; saliency detection; object tracking
摘要:Partial differential equations (PDEs) have been used to formulate image processing for several decades. Generally, a PDE system consists of two components: the governing equation and the boundary condition. In most previous work, both of them are generally designed by people using mathematical skills. However, in real world visual analysis tasks, such predefined and fixed-form PDEs may not be able to describe the complex structure of the visual data. More importantly, it is hard to incorporate the labeling information and the discriminative distribution priors into these PDEs. To address above issues, we propose a new PDE framework, named learning to diffuse (LTD), to adaptively design the governing equation and the boundary condition of a diffusion PDE system for various vision tasks on different types of visual data. To our best knowledge, the problems considered in this paper (i.e., saliency detection and object tracking) have never been addressed by PDE models before. Experimental results on various challenging benchmark databases show the superiority of LTD against existing state-of-the-art methods for all the tested visual analysis tasks.

 

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