Lost in quantization: Improving particular object retrieval in large scale image databases
University of Oxford · Czech Technical University in Prague · +3 more institutions
Abstract
The state of the art in visual object retrieval from large databases is achieved by systems that are inspired by text retrieval. A key component of these approaches is that local regions of images are characterized using high-dimensional descriptors which are then mapped to ldquovisual wordsrdquo selected from a discrete vocabulary.This paper explores techniques to map each visual region to a weighted set of words, allowing the inclusion of features which were lost in the quantization stage of previous systems. The set of visual words is obtained by selecting words based on proximity in descriptor space. We describe how this representation may be incorporated into a standard tf-idf architecture, and how…
Citation impact
- FWCI
- 73.49
- Percentile
- 100%
- References
- 16
Authors
5Topics & keywords
- Computer science
- Image retrieval
- Quantization (signal processing)
- Visual Word
- Inverted index
- Information retrieval
- Result set
- Vocabulary