@inproceedings{3ac438f899334d61a63d9b1ed7cb965a,
title = "Automatic image annotation with cooperation of concept-specific and universal visual vocabularies",
abstract = "This paper proposes an automatic image annotation method based on concept-specific image representation and discriminative learning. Firstly, the concept-specific visual vocabularies are generated by assuming that localized features from the images with a specific concept are of the distribution of Gaussian Mixture Model (GMM). Each component in the GMM is taken as a visual token of the concept. The visual tokens of all the concepts are clustered to obtain a universal token set. Secondly, the image is represented as a concept-specific feature vector by computing the average posterior probabilities of being each universal visual token for all the localized features and assigning it to corresponding concept-specific visual tokens. Thus the feature vector for an image varies with different concepts. Finally, we implement image annotation and retrieval under a discriminative learning framework of Bayesian classifiers, Max-Min posterior Pseudo-probabilities (MMP). The proposed method were evaluated on the popular Corel-5K database. The experimental results with comparisons to state-of-the-art show that our method is promising.",
keywords = "Bag-of-features, Image annotation, Image retrieval, Max-Min posterior Pseudo-probabilities (MMP), Visual vocabulary",
author = "Yanjie Wang and Xiabi Liu and Yunde Jia",
year = "2009",
doi = "10.1007/978-3-642-11301-7_28",
language = "English",
isbn = "3642113001",
series = "Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)",
pages = "262--272",
booktitle = "Advances in Multimedia Modeling - 16th International Multimedia Modeling Conference, MMM 2010, Proceedings",
note = "16th International Multimedia Modeling Conference on Advances in Multimedia Modeling, MMM 2010 ; Conference date: 06-10-2010 Through 08-10-2010",
}