NAME

卢湖川

Paper Publications

Saliency Detection via Depth-Induced Cellular Automata on Light Field
  • Hits:
  • Indexed by:

    Journal Papers

  • First Author:

    Piao, Yongri

  • Correspondence Author:

    Zhang, M (reprint author), Dalian Univ Technol, DUT RU Int Sch Informat Sci & Engn, Dalian 116024, Peoples R China.

  • Co-author:

    Li, Xiao,Zhang, Miao,Yu, Jingyi,Lu, Huchuan

  • Date of Publication:

    2020-01-01

  • Journal:

    IEEE TRANSACTIONS ON IMAGE PROCESSING

  • Included Journals:

    EI、SCIE

  • Document Type:

    J

  • Volume:

    29

  • Page Number:

    1879-1889

  • ISSN No.:

    1057-7149

  • Key Words:

    Saliency detection; Image color analysis; Automata; Three-dimensional displays; Two dimensional displays; Visualization; Computational modeling; Saliency detection; light field; focusness cue; depth cue; depth-induced cellular automata (DCA) model

  • Abstract:

    Incorrect saliency detection such as false alarms and missed alarms may lead to potentially severe consequences in various application areas. Effective separation of salient objects in complex scenes is a major challenge in saliency detection. In this paper, we propose a new method for saliency detection on light field to improve the saliency detection in challenging scenes. We construct an object-guided depth map, which acts as an inducer to efficiently incorporate the relations among light field cues, by using abundant light field cues. Furthermore, we enforce spatial consistency by constructing an optimization model, named Depth-induced Cellular Automata (DCA), in which the saliency value of each superpixel is updated by exploiting the intrinsic relevance of its similar regions. Additionally, the proposed DCA model enables inaccurate saliency maps to achieve a high level of accuracy. We analyze our approach on one publicly available dataset. Experiments show the proposed method is robust to a wide range of challenging scenes and outperforms the state-of-the-art 2D/3D/4D (light-field) saliency detection approaches.

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