Structural image retrieval using automatic image annotation and region based inverted file

•A novel region based inverted file for indexing and retrieval of images the same way as text documents.•A modified probabilistic decision tree learning algorithm suitable for image annotation.•A novel image retrieval system based on automatic image annotation and region translation. Image retrieval...

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Veröffentlicht in:Journal of visual communication and image representation 2013-10, Vol.24 (7), p.1087-1098
Hauptverfasser: Zhang, Dengsheng, Monirul Islam, Md, Lu, Guojun
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container_title Journal of visual communication and image representation
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creator Zhang, Dengsheng
Monirul Islam, Md
Lu, Guojun
description •A novel region based inverted file for indexing and retrieval of images the same way as text documents.•A modified probabilistic decision tree learning algorithm suitable for image annotation.•A novel image retrieval system based on automatic image annotation and region translation. Image retrieval has lagged far behind text retrieval despite more than two decades of intensive research effort. Most of the research on image retrieval in the last two decades are on content based image retrieval or image retrieval based on low level features. Recent research in this area focuses on semantic image retrieval using automatic image annotation. Most semantic image retrieval techniques in literature, however, treat an image as a bag of features/words while ignore the structural or spatial information in the image. In this paper, we propose a structural image retrieval method based on automatic image annotation and region based inverted file. In the proposed system, regions in an image are treated the same way as keywords in a structural text document, semantic concepts are learnt from image data to label image regions as keywords and weight is assigned to each keyword according to spatial position and relationship. As the result, images are indexed and retrieved in the same way as structural document retrieval. Specifically, images are broken down to regions which are represented using colour, texture and shape features. Region features are then quantized to create visual dictionaries which are similar to monolingual dictionaries like English or Chinese dictionaries. In the next step, a semantic dictionary similar to a bilingual dictionary like the English–Chinese dictionary is learnt to mapping image regions to semantic concepts. Finally, images are then indexed and retrieved using a novel region based inverted file data structure. Results show the proposed method has significant advantage over the widely used Bayesian annotation models.
doi_str_mv 10.1016/j.jvcir.2013.07.004
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Image retrieval has lagged far behind text retrieval despite more than two decades of intensive research effort. Most of the research on image retrieval in the last two decades are on content based image retrieval or image retrieval based on low level features. Recent research in this area focuses on semantic image retrieval using automatic image annotation. Most semantic image retrieval techniques in literature, however, treat an image as a bag of features/words while ignore the structural or spatial information in the image. In this paper, we propose a structural image retrieval method based on automatic image annotation and region based inverted file. In the proposed system, regions in an image are treated the same way as keywords in a structural text document, semantic concepts are learnt from image data to label image regions as keywords and weight is assigned to each keyword according to spatial position and relationship. 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subjects Annotations
Applied sciences
Artificial intelligence
Bag-of-features
Computer science
control theory
systems
Data processing. List processing. Character string processing
Dictionaries
Exact sciences and technology
Image annotation
Image indexing and searching
Information systems. Data bases
Inverted file
Machine learning
Memory organisation. Data processing
Multi-instance learning
Pattern recognition. Digital image processing. Computational geometry
Region annotation
Retrieval
Semantics
Software
Speech and sound recognition and synthesis. Linguistics
Texts
Texture
Vector quantization
Visual
title Structural image retrieval using automatic image annotation and region based inverted file
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