Latent Pyramidal Regions for Recognizing Scenes

@inproceedings{Sadeghi2012LatentPR,
  title={Latent Pyramidal Regions for Recognizing Scenes},
  author={Fereshteh Sadeghi and Marshall F. Tappen},
  booktitle={ECCV},
  year={2012}
}
In this paper we propose a simple but efficient image representation for solving the scene classification problem. Our new representation combines the benefits of spatial pyramid representation using nonlinear feature coding and latent Support Vector Machine (LSVM) to train a set of Latent Pyramidal Regions (LPR). Each of our LPRs captures a discriminative characteristic of the scenes and is trained by searching over all possible sub-windows of the images in a latent SVM training procedure… CONTINUE READING
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Latent pyramidal regions for recognizing scenes

  • F. Sadeghi, M. F. Tappen
  • In ECCV,
  • 2012
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