4.7 Article

Co-Salient Object Detection Based on Deep Saliency Networks and Seed Propagation Over an Integrated Graph

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 27, Issue 12, Pages 5866-5879

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2018.2859752

Keywords

Co-saliency; saliency; deep saliency networks; seed propagation model; foreground probability

Funding

  1. Projects for Research and Development of Police Science and Technology through the Center for Research and Development of Police Science and Technology
  2. Korean National Police Agency [PA-C000001]

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This paper presents a co-salient object detection method to find common salient regions in a set of images. We utilize deep saliency networks to transfer co-saliency prior knowledge and better capture high-level semantic information. The resulting initial co-saliency maps are enhanced by seed propagation steps over an integrated graph. The deep saliency networks are trained in a supervised manner to avoid weakly supervised online learning and exploit them not only to extract high-level features but also to produce both intra-and inter-image saliency maps. Through a refinement step, the initial co-saliency maps can uniformly highlight co-salient regions and locate accurate object boundaries. To handle input image groups inconsistent in size, we propose to pool multi-regional descriptors including both within-segment and within-group information. In addition, the integrated multilayer graph is constructed to find the regions that the previous steps may not detect by seed propagation with low-level descriptors. In this paper, we utilize the useful complementary components of high-and low-level information and several learning-based steps. Our experiments have demonstrated that the proposed approach outperforms comparable co-saliency detection methods on widely used public databases and can also be directly applied to co-segmentation tasks.

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