Evaluation of fuzzy rough set feature selection for content based image retrieval system with noisy images
Shiratuddin, M.F., Shahabi Lotfabadi, M. and Wong, K.W. (2014) Evaluation of fuzzy rough set feature selection for content based image retrieval system with noisy images. In: 22nd International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision, 2 - 5 June, Plzen, Czech Republic
In this paper Fuzzy Rough Set is used for feature selection in the Content Based Image Retrieval system. Noisy query images are fed to this Content Based Image Retrieval system and the results are compared with four other feature selection methods. The four other feature selection methods are Genetic Algorithm, Information Gain, OneR and Principle Component Analysis. The main objective of this paper is to evaluate the rules which are extracted from fuzzy rough set and determine whether these rules which are used for training the Support Vector Machine can deal with noisy query images as well as the original queried images. To evaluate the Fuzzy Rough set feature selection, we use 10 sematic group images from COREL database which we have purposely placed some defect by adding Gaussian, Poisson and Salt and Pepper noises of different magnitudes. As a result, the proposed method performed better in term of accuracies in most of the different types of noise when compared to the other four feature selection methods.
|Publication Type:||Conference Paper|
|Murdoch Affiliation:||School of Engineering and Information Technology|
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