Encyclopedia

  • Saliency detection via background and foreground NULL (cas 101051-09-6) space learning
  • Add time:08/25/2019         Source:sciencedirect.com

    In this paper, we present a novel bottom-up salient object detection approach by exploiting the relationship between the saliency detection and the NULL (cas 101051-09-6) space learning. A key observation is that saliency of an image segment can be estimated by measuring the distance to the single point, which represents the background or foreground salient samples in the null spaces. We apply the null Foley–Sammon transformation to model the null spaces of the background samples or foreground salient samples, where the potentially large and complex intra-class variations of the samples are totally removed and the specific features of the respective classes are represented by a single point. Afterward, we formulate the separation of the saliency regions from the background as a distance measurement to this single point in the null space. An optimization algorithm is devised to fuse the background samples based saliency map and foreground samples based saliency map. Results on five benchmark datasets show that the proposed method achieves superior performance compared with the newest state-of-the-art methods in terms of different evaluation metrics, especially for complex natural images.

    We also recommend Trading Suppliers and Manufacturers of NULL (cas 101051-09-6). Pls Click Website Link as below: cas 101051-09-6 suppliers


    Prev:On the use of random graphs as NULL (cas 101051-09-6) model of large connected networks
    Next: Full length articleImmunological characteristics of Interleukin-2 receptor subunit beta (IL-2Rβ) in flounder (Paralichtlys olivaceus): Implication for IL-2R function)

About|Contact|Cas|Product Name|Molecular|Country|Encyclopedia

Message|New Cas|MSDS|Service|Advertisement|CAS DataBase|Article Data|Manufacturers | Chemical Catalog

©2008 LookChem.com,License: ICP

NO.:Zhejiang16009103

complaints:service@lookchem.com Desktop View