DocumentCode :
2435507
Title :
Applying Gaussian mixture model on Discrete Cosine features for image segmentation and classification
Author :
Al-Jubouri, Hanan ; Du, Hongbo ; Sellahewa, Harin
Author_Institution :
Dept. of Appl. Comput., Univ. of Buckingham, Buckingham, UK
fYear :
2012
fDate :
12-13 Sept. 2012
Firstpage :
194
Lastpage :
199
Abstract :
Content-based image retrieval (CBIR) is the process of searching digital images in a large database based on features, such as colour, texture and shape (so-called visual content) of a given query image. Consequently, retrieved images are the most similar in content to the query image. One effective approach is to segment an image into regions (i.e. clusters) of similar colour and texture to capture its visual content. This paper presents a study that applies an adaptive Expectation-Maximization algorithm on Gaussian Mixture Model (EM/GMM) to segment an image according to local colour and texture features extracted from Discrete Cosine Transform coefficients (DCT). The EM algorithm determines rather than imposes the effective number of clusters from the image´s content. This paper evaluates the effectiveness of our method by conducting a number of image classification experiments using the k-nearest neighbor (k-NN) classifier. The experiments have shown a clearly marked improvement in image retrieval accuracy of using EM/GMM over the k-means algorithm. The paper is intended to demonstrate the effectiveness of adaptive GMM in segmenting an image and capturing regions of similar colour and texture within an image.
Keywords :
Gaussian processes; content-based retrieval; discrete cosine transforms; expectation-maximisation algorithm; image classification; image colour analysis; image retrieval; image segmentation; image texture; CBIR; DCT; EM algorithm; GMM algorithm; Gaussian mixture model; adaptive expectation-maximization algorithm; content-based image retrieval; digital image; discrete cosine feature; discrete cosine transform; image classification; image colour; image segmentation; image shape; image texture; k-NN classifier; k-means algorithm; k-nearest neighbor; visual content; Clustering algorithms; Discrete cosine transforms; Feature extraction; Image color analysis; Image segmentation; Shape; Vectors; Classification; Content-based Image Retrieval; DCT; EM/GMM; MDL; Segmentation; Similarity;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Science and Electronic Engineering Conference (CEEC), 2012 4th
Conference_Location :
Colchester
Print_ISBN :
978-1-4673-2665-0
Type :
conf
DOI :
10.1109/CEEC.2012.6375404
Filename :
6375404
Link To Document :
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