2012 | OriginalPaper | Buchkapitel
Geodesic Saliency Using Background Priors
verfasst von : Yichen Wei, Fang Wen, Wangjiang Zhu, Jian Sun
Erschienen in: Computer Vision – ECCV 2012
Verlag: Springer Berlin Heidelberg
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Generic object level saliency detection is important for many vision tasks. Previous approaches are mostly built on the prior that “appearance contrast between objects and backgrounds is high”. Although various computational models have been developed, the problem remains challenging and huge behavioral discrepancies between previous approaches can be observed. This suggest that the problem may still be highly ill-posed by using this prior only.
In this work, we tackle the problem from a different viewpoint: we focus more on the background instead of the object. We exploit two common priors about backgrounds in natural images, namely
boundary and connectivity priors
, to provide more clues for the problem. Accordingly, we propose a novel saliency measure called
geodesic saliency
. It is intuitive, easy to interpret and allows fast implementation. Furthermore, it is complementary to previous approaches, because it benefits more from background priors while previous approaches do not.
Evaluation on two databases validates that geodesic saliency achieves superior results and outperforms previous approaches by a large margin, in both accuracy and speed (2 ms per image). This illustrates that appropriate prior exploitation is helpful for the ill-posed saliency detection problem.