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Book ChapterDOI

Bridging the semanitic gap in image retrieval

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TLDR
There is an urgent need of finding the latent correlation between low-level features and high-level concepts and merging them from a different perspective to retrieve or manage visual data in an effective or efficient way.
Abstract
The emergence of multimedia technology and the rapidly expanding image and video collections on the Internet have attracted significant research efforts in providing tools for effective retrieval and management of visual data. Image retrieval is based on the availability of a representation scheme of image content. Image content descriptors may be visual features such as color, texture, shape, and spatial relationships, or semantic primitives. Conventional information retrieval was based solely on text, and those approaches to textual information retrieval have been transplanted into image retrieval in a variety of ways. However, "a picture is worth a thousand words." Image contents are much more versatile compared with text, and the amount of visual data is already enormous and still expanding very rapidly. Hoping to cope with these special characteristics of visual data, content-based image retrieval methods have been introduced. It has been widely recognized that the family of image retrieval techniques should become an integration of both low-level visual features addressing the more detailed perceptual aspects and high-level semantic features underlying the more general conceptual aspects of visual data. Neither of these two types of features is sufficient to retrieve or manage visual data in an effective or efficient way. Although efforts have been devoted to combining these two aspects of visual data, the gap between them is still a huge barrier in front of researchers. Intuitive and heuristic approaches do not provide us with satisfactory performance. Therefore, there is an urgent need of finding the latent correlation between low-level features and high-level concepts and merging them from a different perspective. How to find this new perspective and bridge the gap between visual features and semantic features has been a major challenge in this research field. This chapter addresses these issues.

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Citations
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Journal ArticleDOI

Narrowing the semantic gap - improved text-based web document retrieval using visual features

TL;DR: Experimental results show that LSI, together with both textual and visual features, is able to extract the underlying semantic structure of web documents, thus helping to improve the retrieval performance significantly, even when querying is done using only keywords.
Proceedings ArticleDOI

An overview of content-based image retrieval techniques

TL;DR: This paper presents an up-to-date review of various content-based image retrieval systems and presents selected works from the volume of literature available.
Book

Multimedia Systems and Content-Based Image Retrieval

Sagarmay Deb
TL;DR: This work highlights issues in multi-media systems and content-based image retrieval that remain unresolved and this work highlights such issues.
Journal ArticleDOI

Facing the reality of semantic image retrieval

TL;DR: The paper offers fresh insights into the challenge of migrating content-based image retrieval from the laboratory to the operational environment, informed by newly-assembled, comprehensive, live data.

Using viewing time to infer user preference in recommender systems

TL;DR: The idea that viewing time is an indicator of preference for attributes of items, and a recommendation system based on this idea is developed and evaluated, and empirical evidence that the system makes useful recommendations is presented.
References
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Book

Matrix computations

Gene H. Golub
Journal ArticleDOI

Indexing by Latent Semantic Analysis

TL;DR: A new method for automatic indexing and retrieval to take advantage of implicit higher-order structure in the association of terms with documents (“semantic structure”) in order to improve the detection of relevant documents on the basis of terms found in queries.
Book

Modern Information Retrieval

TL;DR: In this article, the authors present a rigorous and complete textbook for a first course on information retrieval from the computer science (as opposed to a user-centred) perspective, which provides an up-to-date student oriented treatment of the subject.
Journal ArticleDOI

Content-based image retrieval at the end of the early years

TL;DR: The working conditions of content-based retrieval: patterns of use, types of pictures, the role of semantics, and the sensory gap are discussed, as well as aspects of system engineering: databases, system architecture, and evaluation.
Journal ArticleDOI

Color indexing

TL;DR: In this paper, color histograms of multicolored objects provide a robust, efficient cue for indexing into a large database of models, and they can differentiate among a large number of objects.
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