Mid-level concept learning with visual contextual ontologies and probabilistic inference for image annotation


Autoria(s): Liu, Yuee; Zhang, Jinglan; Tjondronegoro, Dian W.; Geva, Shlomo; Li, Zhengrong
Data(s)

2010

Resumo

To date, automatic recognition of semantic information such as salient objects and mid-level concepts from images is a challenging task. Since real-world objects tend to exist in a context within their environment, the computer vision researchers have increasingly incorporated contextual information for improving object recognition. In this paper, we present a method to build a visual contextual ontology from salient objects descriptions for image annotation. The ontologies include not only partOf/kindOf relations, but also spatial and co-occurrence relations. A two-step image annotation algorithm is also proposed based on ontology relations and probabilistic inference. Different from most of the existing work, we specially exploit how to combine representation of ontology, contextual knowledge and probabilistic inference. The experiments show that image annotation results are improved in the LabelMe dataset.

Identificador

http://eprints.qut.edu.au/27942/

Relação

http://mmm2010.swu.edu.cn/MMM2010/index.php

Liu, Yuee, Zhang, Jinglan, Tjondronegoro, Dian W., Geva, Shlomo, & Li, Zhengrong (2010) Mid-level concept learning with visual contextual ontologies and probabilistic inference for image annotation. In The 16th International Multimedia Modeling Conference, 6-8 January 2010, Haiyu Hotspring Hotel, Chongqing.

Direitos

Copyright 2010 [please consult the authors]

Fonte

Faculty of Science and Technology

Palavras-Chave #080104 Computer Vision #080106 Image Processing #Image Annotation #Salient Objects #Visual Context #Ontology #Probabilistic Inference #multi-level concept
Tipo

Conference Paper