Database architecture for content-based image retrieval

@inproceedings{Kato1992DatabaseAF,
  title={Database architecture for content-based image retrieval},
  author={Toshikazu Kato},
  booktitle={Electronic Imaging},
  year={1992}
}
  • Toshikazu Kato
  • Published in Electronic Imaging 1 April 1992
  • Computer Science
This paper describes visual interaction mechanisms for image database systems. [] Key Method We adopt both an image model and a user model to interpret and operate the contents of image data from the user''s viewpoint. The image model describes the graphical features of image data, while the user model reflects the visual perception processes of the user. These models, automatically created by image analysis and statistical learning, are referred to as abstract indexes stored in relational tables. These…
Text-Image Interaction for Image Retrieval and Semi-Automatic Indexing
TLDR
This paper addresses the issue of retrieving images based on visual content, according a particular attention to the semantic dimension of information retrieval, and proposes a new approach, that tries to integrate a real \semantic" dimension into visual contentbased image retrieval.
Text-Image Interaction for Image Retrieval and Semi-Automatic Indexing
  • Gérald Duffing
  • Computer Science
    BCS-IRSG Annual Colloquium on IR Research
  • 1998
TLDR
This paper addresses the issue of retrieving images based on visual content, according a particular attention to the semantic dimension of information retrieval, and proposes a new approach, that tries to integrate a real "semantic" dimension into visual content-based image retrieval.
Structured Image Retrieval
TLDR
This paper proposes frame-based similarity measures for accessing structured images, e.g. images can be understood by inferring from objects present and the relationships among them, which allow for images to be retrieved with different degrees of similarity and are flexible.
Web Image Retrieval Refinement by Visual Contents
TLDR
A novel model called 'multiplied refinement', which is more applicable to combination of those two basic methods for representing and indexing Web images, is proposed.
Spatial Logic for image representation and retrieval-by-contents
TLDR
In this paper, iconic retrieval of images is presented based on an original language for the specification of spatial relationships between the imaged objects, referred to as Spatial Logic.
Classification Based Navigation and Retrieval for Picture Archives
TLDR
This work presents the approach being taken by the STARCH project, which is using a Description Logic (DL) for semantic metadata, which can assist in providing more powerful environments for retrieval, through the support of browsing, navigation and the serendipitous discovery of information.
The Discrete Image Search uses Feature Extraction and Classification for Content Based Image Retrieval
TLDR
The problem of image retrieval will be solved using an inverse filter to resolve the blurriness of the image and combination of PCA and BPNN algorithm to extracted features and classify withBPNN algorithm the features based in searching of the queue image by category wise.
Content-based retrieval applied to drawing-image databases
TLDR
The method employs a new similarity measure between graph representations of images that is effective for drawing images that describe logical meaning by their structure and applicable to plant diagrams.
Similarity Image Retrieval System Using Hierarchical Classification
TLDR
A similarity image retrieval system for database consists of various kinds of image data and can easily adapt each user’s subjective criterion for similarity, and the interface is so user friendly that just showing a key image is enough to invoke content-based image retrieval.
An alternative image retrieval system based on visual and thematic corpus organisation
  • Gérald Duffing
  • Computer Science
    Proceedings IEEE International Conference on Multimedia Computing and Systems
  • 1999
TLDR
This paper relies on a corpus organisation based on both visual and thematic clustering, allowing access to non-indexed images, and thinks that both approaches can be efficiently combined to provide a thematically and visually relevant retrieval.
...
...

References

SHOWING 1-10 OF 17 REFERENCES
Cognitive view mechanism for multimedia database system
TLDR
The authors' approach gives a general framework of visual interaction, adopting both an image model and a user model to interpret and operate the contents of image data from the user's viewpoint.
An Intelligent Image Database System
TLDR
A prototype intelligent image database system (IIDS) that is based on a novel pictorial data structure that supports spatial reasoning, flexible image information retrieval, visualization, and traditional image database operations is presented.
Image Database Management
Intermedia: the concept and the construction of a seamless information environment
TLDR
A description is given of Intermedia, a tool designed to support both teaching and research in a university environment that provides linking capabilities integrated into a desktop user environment.
and R
  • L. Kashyap, "Image Databases", IEEE Trans on Software Engineering (special selection), Vol.SE14, No.5, pp.6O8-688, May
  • 1988
and R
  • Mehrotra (ed), 'Image Database Management", COMPUTER (special issue), Vol.22, No. 12, pp.'771, Dec.
  • 1989
Multimedia Data Model for Advanced Image Information Systems
  • Proc. of Advanced Database System Symp. ADSS'89
  • 1989
Cognitive Aspects of Accessing Multi-Media Information", Proc
  • of Computer World 89, pp.119-126, Sep.
  • 1989
...
...