Title :
Image annotation based on constrained clustering and semi-naive bayesian model
Author :
Ben Ismail, Mohamed Maher ; Frigui, Hichem
Author_Institution :
CECS Dept., Univ. of Louisville, Louisville, KY, USA
Abstract :
We propose an image annotation approach that relies on fuzzy clustering and feature discrimination, a greedy selection and joining algorithm (GSJ), and Bayes rule. Clustering is used to group image regions into prototypical region clusters that summarize the training data and can be used as the basis of annotating new test images. Since this problem involves clustering sparse and high dimensional data, we use a semi-supervised constrained clustering algorithm that performs simultaneous clustering and feature discrimination. The constraints consist of pairs of image regions that should not be included in the same cluster. These constraints are deduced from the irrelevance of all concepts annotating the training images. The constraints help in guiding the clustering process. The GSJ algorithm uses the fuzzy membership function of each region cluster. Finally, Bayes rule is used to label images based on the posterior probability of each concept. The proposed algorithm was implemented and tested on a data set that includes 3000 images using four-fold cross validation.
Keywords :
belief networks; greedy algorithms; image retrieval; unsupervised learning; Bayes rule; constrained clustering; content-based image retrieval; feature discrimination; fuzzy clustering; greedy selection and joining algorithm; image annotation; semi-naive Bayesian model; Bayesian methods; Clustering algorithms; Content based retrieval; Image databases; Image retrieval; Image segmentation; Information retrieval; Labeling; Prototypes; Testing; clustering; constrained clustering; content-based image retrieval; image annotation;
Conference_Titel :
Computers and Communications, 2009. ISCC 2009. IEEE Symposium on
Conference_Location :
Sousse
Print_ISBN :
978-1-4244-4672-8
Electronic_ISBN :
1530-1346
DOI :
10.1109/ISCC.2009.5202230