University of Amsterdam at the Visual Concept Detection and Annotation Tasks

Springer, Volume 32: ImageCLEF, page 343--358, 2010
Download the publication : vandesande_imageclefbookchapter_2010.pdf [1.5Mo]  
Visual concept detection is important to access visual information on the level of objects and scene types. The current state–of–the–art in visual concept detection and annotation tasks is based on the bag–of–words model. Within the bag–of–words model, points are first sampled according to some strategy, then the area around these points are described using color descriptors. These descriptors are then vector–quantized against a codebook of prototypical descriptors, which results in a fixed–length representation of the image. Based on these representations, visual concept models are trained. In this chapter, we discuss the design choices within the bag–of–words model and their implications for concept detection accuracy.

Images and movies

 

See also

The complete book is available from Springer.
Software is available from http://www.colordescriptors.com

BibTex references

@InBook{vandeSandeIRS2010,
  author       = "van de Sande, K. E. A. and Gevers, T.",
  title        = "University of Amsterdam at the Visual Concept Detection and Annotation Tasks",
  chapter      = "18",
  series       = "The Information Retrieval Series",
  volume       = "32: ImageCLEF",
  pages        = "343--358",
  year         = "2010",
  publisher    = "Springer",
  url          = "http://www.science.uva.nl/research/publications/2010/vandeSandeIRS2010"
}

Other publications in the database

» Koen E. A. van de Sande
» Theo Gevers