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Communication Dans Un Congrès Année : 2013

Segmentation Driven Low-rank Matrix Recovery for Saliency Detection

Résumé

Low-rank matrix recovery (LRMR) model, aiming at decomposing a matrix into a low-rank matrix and a sparse one, has shown the potential to address the problem of saliency detection, where the decomposed low-rank matrix naturally corresponds to the background, and the sparse one captures salient objects. This is under the assumption that the background is consistent and objects are obviously distinctive. Unfortunately, in real images, the background may be cluttered and may have low contrast with objects. Thus directly applying the LRMR model to the saliency detection has limited robustness. This paper proposes a novel approach that exploits bottom-up segmentation as a guidance cue of the matrix recovery. This method is fully unsupervised, yet obtains higher performance than the supervised LRMR model. A new challenging dataset PASCAL-1500 is also introduced to validate the saliency detection performance. Extensive evaluations on the widely used MSRA-1000 dataset and also on the new PASCAL-1500 dataset demonstrate that the proposed saliency model outperforms the state-of-the-art models.
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Dates et versions

hal-00853385 , version 1 (22-08-2013)

Identifiants

  • HAL Id : hal-00853385 , version 1

Citer

Wenbin Zou, Kidiyo Kpalma, Zhi Liu, Joseph Ronsin. Segmentation Driven Low-rank Matrix Recovery for Saliency Detection. 24th British Machine Vision Conference (BMVC), Sep 2013, Bristol, United Kingdom. pp.1-13. ⟨hal-00853385⟩
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