scispace - formally typeset
Journal ArticleDOI

Modeling and retrieving images by content

Reads0
Chats0
TLDR
A novel system architecture for CBIR is proposed that supports the generic query operators that are adequate to realize CBIR in a number of diverse applications and a partial prototype implementation is developed.
Abstract
A content-based image retrieval system (CBIR) is required to effectively utilize information from image databases. Content-based retrieval is characterized by the ability of the system to retrieve relevant images based on their visual and semantic contents rather than by using atomic attributes or keywords assigned to them. In this paper, we provide a taxonomy for approaches to image retrieval and describe their characteristics and limitations. We examined a number of image database applications to discover their retrieval requirements and to structure the requirements from a domain-independent perspective. This study enabled us to provide a taxonomy for image attributes and to propose a number of generic query operators. These operators are adequate to realize CBIR in a number of diverse applications. We propose a novel system architecture for CBIR that supports the generic query operators. The architecture is structured in a way to enable applications to inherit only those query operators that are useful in the domain. We have developed a partial prototype implementation of this architecture. The versatility and effectiveness of the architecture is demonstrated by configuring the prototype implementation for two image retrieval applications: realtors information system and face retrieval system. The first application is for real estate marketing and the other is for law enforcement and criminal investigation.

read more

Citations
More filters
Journal ArticleDOI

Color-based image retrieval using spatial-chromatic histograms

TL;DR: A new indexing methodology for image databases integrating color and spatial information for content-based image retrieval, called Spatial-Chromatic Histogram (SCH), can be more satisfactory than standard techniques when the user would like to retrieve from the database the images that actually resemble the query image selected in their color distribution characteristics.
Journal ArticleDOI

A model of multimedia information retrieval

TL;DR: The primary goal of this study is to promote an integration of methods and techniques for MIR by contributing a conceptual model that encompasses in a unified and coherent perspective the many efforts that are being produced under the label of MIR.
Journal ArticleDOI

A relevance feedback mechanism for content-based image retrieval

TL;DR: A new relevance feedback mechanism is described which evaluates the feature distributions of the images judged relevant, or not relevant, by the user and dynamically updates both the similarity measure and the query in order to accurately represent the user's particular information needs.
Patent

Method for modeling, storing and transferring data in neutral form

TL;DR: In this paper, a non-hierarchical, non-integrated neutral form for data modeling, storage, and transfer is proposed, which enables complete parallel processing of both data storage and data transfer operations.
Proceedings ArticleDOI

Image retrieval based on energy histograms of the low frequency DCT coefficients

TL;DR: This paper investigates the use of energy histograms of the low frequency DCT coefficients as features for the retrieval of DCT compressed images and proposes a feature set that is able to identify similarities on changes of image-representation due to several lossless DCT transformations.
References
More filters
Journal ArticleDOI

Query by image and video content: the QBIC system

TL;DR: The Query by Image Content (QBIC) system as discussed by the authors allows queries on large image and video databases based on example images, user-constructed sketches and drawings, selected color and texture patterns, camera and object motion, and other graphical information.
Book

Automatic text processing

Gerard Salton
Proceedings Article

Query by image and video content: the QBIC system

TL;DR: The Query by Image Content (QBIC) system as mentioned in this paper allows queries on large image and video databases based on example images, user-constructed sketches and drawings, selected color and texture patterns, camera and object motion, and other graphical information.
Journal ArticleDOI

Efficient and effective querying by image content

TL;DR: A set of novel features and similarity measures allowing query by image content, together with the QBIC system, and a new theorem that makes efficient filtering possible by bounding the non-Euclidean, full cross-term quadratic distance expression with a simple Euclidean distance.
Proceedings ArticleDOI

Visual information seeking: tight coupling of dynamic query filters with starfield displays

TL;DR: In this paper, the authors propose new principles for visual information seeking (VIS), which are distinguished from familiar query composition and information retrieval because of its emphasis on rapid filtering to reduce result sets, progressive refinement of search parameters, continuous reformulation of goals, and visual scanning to identify results.
Related Papers (5)