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Proceedings ArticleDOI

An ontology approach to object-based image retrieval

TLDR
The proposed approach bridges the gap between keyword-based approaches, which assume the existence of rich image captions or require manual evaluation and annotation of every image of the collection, and query-by-example approaches,Which assume that the user queries for images similar to one that already is at his disposal.
Abstract
In this paper, an image retrieval methodology suited for search in large collections of heterogeneous images is presented. The proposed approach employs a fully unsupervised segmentation algorithm to divide images into regions. Low-level features describing the color, position, size and shape of the resulting regions are extracted and are automatically mapped to appropriate intermediate-level descriptors forming a simple vocabulary termed object ontology. The object ontology is used to allow the qualitative definition of the high-level concepts the user queries for (semantic objects, each represented by a keyword) in a human-centered fashion. When querying, clearly irrelevant image regions are rejected using the intermediate-level descriptors; following that, a relevance feedback mechanism employing the low-level features is invoked to produce the final query results. The proposed approach bridges the gap between keyword-based approaches, which assume the existence of rich image captions or require manual evaluation and annotation of every image of the collection, and query-by-example approaches, which assume that the user queries for images similar to one that already is at his disposal.

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Citations
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Journal ArticleDOI

A survey of content-based image retrieval with high-level semantics

TL;DR: This paper attempts to provide a comprehensive survey of the recent technical achievements in high-level semantic-based image retrieval, identifying five major categories of the state-of-the-art techniques in narrowing down the 'semantic gap'.
Journal ArticleDOI

A review on automatic image annotation techniques

TL;DR: This paper analyzes key aspects of the various AIA methods, including both feature extraction and semantic learning methods and provides a comprehensive survey on automatic image annotation.
Journal ArticleDOI

Content-based image retrieval using color and texture fused features

TL;DR: This paper presents a method to extract color and texture features of an image quickly for content-based image retrieval (CBIR), and shows that the fused features retrieval brings better visual feeling than the single feature retrieval, which means better retrieval results.
Proceedings Article

A Review on Image Feature Extraction and Representation Techniques

TL;DR: This paper analyzes the effectiveness of the fusion of global and local features in automatic image annotation and content based image retrieval community, including some classic models and their illustrations in the literature.
Book ChapterDOI

Semantic annotation of images and videos for multimedia analysis

TL;DR: This paper uses M-OntoMat-Annotizer in order to construct ontologies that include prototypical instances of high-level domain concepts together with a formal specification of corresponding visual descriptors, allowing for new kinds of multimedia content analysis and reasoning.
References
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A translation approach to portable ontology specifications

TL;DR: This paper describes a mechanism for defining ontologies that are portable over representation systems, basing Ontolingua itself on an ontology of domain-independent, representational idioms.
Journal ArticleDOI

What are ontologies, and why do we need them?

TL;DR: A conceptual introduction to ontologies and their role in information systems and AI is provided and how ontologies clarify the domain's structure of knowledge and enable knowledge sharing is discussed.
Journal ArticleDOI

Blobworld: image segmentation using expectation-maximization and its application to image querying

TL;DR: Results indicating that querying for images using Blobworld produces higher precision than does querying using color and texture histograms of the entire image in cases where the image contains distinctive objects are presented.
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.
Journal ArticleDOI

Learning similarity measure for natural image retrieval with relevance feedback

TL;DR: Experimental results demonstrate the usefulness and effectiveness of the proposed similarity measure for image retrieval, which not only takes into consideration the perceptual similarity between images, but also significantly improves the retrieval performance of the Euclidean distance measure.
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