Back to Search Start Over

Medical Image Retrieval using Bag of Meaningful Visual Words: Unsupervised visual vocabulary pruning with PLSA

Authors :
Antonio Foncubierta-Rodríguez
Alba García Seco de Herrera
Henning Müller
Source :
MIIRH@ACM Multimedia
Publication Year :
2013
Publisher :
ACM, 2013.

Abstract

Content--based medical image retrieval has been proposed as a technique that allows not only for easy access to images from the relevant literature and electronic health records but also for training physicians, for research and clinical decision support. The bag-of-visual-words approach is a widely used technique that tries to shorten the semantic gap by learning meaningful features from the dataset and describing documents and images in terms of the histogram of these features. Visual vocabularies are often redundant, over--complete and noisy. Larger than required vocabularies lead to high--dimensional feature spaces, which present important disadvantages with the curse of dimensionality and computational cost being the most obvious ones. In this work a visual vocabulary pruning technique is presented. It enormously reduces the amount of required words to describe a medical image dataset with no significant effect on the accuracy. Results show that a reduction of up to 90% can be achieved without impact on the system performance. Obtaining a more compact representation of a document enables multimodal description as well as using classifiers requiring low--dimensional representations.

Details

Database :
OpenAIRE
Journal :
MIIRH@ACM Multimedia
Accession number :
edsair.doi.dedup.....f908ee18da38d4a94f0db68b6c810843