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Saliency Detection Based on Non-convex Weighted Surrogates

Published: 24 August 2019 Publication History

Abstract

Low rank and sparsity decomposition have shown potential for salient object detection. In existing methods, nuclear norm is used to approximate rank minimization and l1 norm is selected as sparse regularization. Two deficiencies, however, still exist for nuclear norm and l1 norm. First, both always over-penalize large singular values or large entries of vectors and result in a biased solution. Second, the existing algorithms very slow for large-scale applications. To address these problems, we propose a novel weighted matrix decomposition model with two regularizations: (1) Schatten-2/3 quasi-norm that captures the lower rank of background by matrix factorization technique, and (2) The l2/3 -norm that is capable of producing consistent salient object within the same image patches by effectively absorbing both image geometrical structure and feature similarity. In addition, we equip the weighting matrix with a high-level background prior map based on the color, location and boundary connectivity, which can indicate the probability that each image region belongs to the background. The proposed model can be solved by perform SVDs on two much smaller factor matrices. Experiments on three broadly used datasets by detailed comparisons show that our proposed approach has potential in salient object detection.

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  1. Saliency Detection Based on Non-convex Weighted Surrogates

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    ISICDM 2019: Proceedings of the Third International Symposium on Image Computing and Digital Medicine
    August 2019
    370 pages
    ISBN:9781450372626
    DOI:10.1145/3364836
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    Published: 24 August 2019

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    Author Tags

    1. Low rank and sparsity decomposition
    2. Non-convex weighted matrix decomposition
    3. Salient object detection

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