hal-00203734, version 1
Fast Discriminative Visual Codebooks using Randomized Clustering Forests
F. Moosmann 1Bill Triggs 1Frederic Jurie 1
Twentieth Annual Conference on Neural Information Processing Systems (NIPS '06) (2006) 985--992
Abstract: Some of the most effective recent methods for content-based image classification work by extracting dense or sparse local image descriptors, quantizing them according to a coding rule such as k-means vector quantization, accumulating histograms of the resulting “visual word” codes over the image, and classifying these with a conventional classifier such as an SVM. Large numbers of descriptors and large codebooks are needed for good results and this becomes slow using k-means. We introduce Extremely Randomized Clustering Forests – ensembles of randomly created clustering trees – and show that these provide more accurate results, much faster training and testing and good resistance to background clutter in several state-of-the-art image classification tasks.
- 1: LEAR (IMAG-INRIA Rhône-Alpes / GRAVIR)
- CNRS : FR71 – CNRS : UMR5527 – INRIA – Université Joseph Fourier - Grenoble I – Institut National Polytechnique de Grenoble (INPG)
- Domain : Engineering Sciences/Signal and Image processing
Computer Science/Signal and Image Processing
- hal-00203734, version 1
- http://hal.archives-ouvertes.fr/hal-00203734
- oai:hal.archives-ouvertes.fr:hal-00203734
- From: Véronique Rocher
- Submitted on: Monday, 14 January 2008 16:13:05
- Updated on: Friday, 3 December 2010 11:25:52






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