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Keywords
(16)
Cluster Algorithm
Content Based Image Retrieval
Digital Image
Dimensional Reduction
Euclidean Algorithm
Feature Extraction
Feature Vector
Hierarchical Clustering
Image Color Analysis
Image Database
Image Retrieval
Relevance Feedback
Similarity Measure
Visual Features
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Query By Image Content
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Query by image content using biased discriminant euclidean algorithm and clustering techniques
Query by image content using biased discriminant euclidean algorithm and clustering techniques,10.1109/ICETECT.2011.5760184,A Kethsy Prabhavathy,Niya
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Query by image content using biased discriminant euclidean algorithm and clustering techniques
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A Kethsy Prabhavathy
,
Niya Joseph
,
Lydia Liz Lukose
Query by image content
is a method to retrieve the most important images from the image database. It is an answer for the problem of searching for digital images in large database. A large number of
relevance feedback
schemes have been developed to improve the performance of content based image retrieval. In this paper we propose biased discriminant Euclidean embedding that form intraclass geometry and interclass discrimination. In this method images can be grouped by their similarity. In order to achieve this, firstly the
visual features
of the images are found out. In addition to this we use two clustering algorithms to assemble the images into clusters using their low level visual features. Here we have to filter the images in the
hierarchical clustering
and then apply the clustered images to K-Means, so that we can get the most relevant images. Query image is compared directly with the images in the clusters. Therefore number of comparisons is reduced because query image is compared only with the images in the clusters instead of comparing with all images in the database.
Conference:
International Conference on Emerging Trends in Electrical and Computer Technology - ICETECT
, 2011
DOI:
10.1109/ICETECT.2011.5760184
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References
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