2012 International Conference on Computer Distributed Control and Intelligent Environmental Monitoring 2012
DOI: 10.1109/cdciem.2012.109
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Narrowing Semantic Gap in Content-based Image Retrieval

Abstract: Due to the low-level image features it utilizes, the semantic gap problem is hard to bridge and performance of CBIR systems is still far away from users' expectation. Image annotation, region-based image retrieval and relevance feedback are three main approaches for narrowing the "semantic gap". In this paper, recent development in these fields are reviewed and some future directions are proposed in the end.

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Cited by 4 publications
(5 citation statements)
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“…The detected regions are being represented by its local feature and the weights of its importance. Finally and based on the regions representation, the similarity between the query regions and the other images are calculated to determine the relevant and irrelevant targets [2]. Though, RBIR still lacks the quality for many reasons such as inaccurate region segmentation, high dimensionality of the extracted local features and determining which similarity measure to apply.…”
Section: Region Content Based Image Retrievalmentioning
confidence: 99%
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“…The detected regions are being represented by its local feature and the weights of its importance. Finally and based on the regions representation, the similarity between the query regions and the other images are calculated to determine the relevant and irrelevant targets [2]. Though, RBIR still lacks the quality for many reasons such as inaccurate region segmentation, high dimensionality of the extracted local features and determining which similarity measure to apply.…”
Section: Region Content Based Image Retrievalmentioning
confidence: 99%
“…CBIR uses the visual contents of an image such as color, shape, texture, and spatial layout to represent and index the image [2]. In typical CBIR system, the visual contents of the images in the database are extracted and described by multi-dimensional feature vectors [3].…”
Section: Content Based Image Retrieval (Cbir)mentioning
confidence: 99%
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“…Therefore, the automatic annotation of medical imaging has become an urgent demand. Traditional medical image classification is mostly based on the basic characteristics of the image, such as color features, texture features, shape features [1,2], which failed to solve the "Semantic gap" problem [3][4][5]. Because the basic characteristics of the image cannot reflect the underlying information in the images, for example the image may imply information of the specific organizational structure which cannot be obtained from the basic characteristics of the image and be a kind of potential information which only can be obtained by the doctors' experience.…”
Section: Introductionmentioning
confidence: 99%