Content Based Image Retrieval Using Integration of Color and Texture Features
نویسندگان
چکیده
1451 ISSN: 2278 – 1323 All Rights Reserved © 2014 IJARCET Abstract— CBIR is a process of retrieve and display relevant images from large collection of image database on the basis of their visual content. CBIR is used for retrieval of images depending upon visual contents of images known as features. This paper focuses on color and texture based techniques for achieving efficient and effective retrieval of images Color feature extraction is done by color histogram and color moment. Texture feature extraction is acquired by wavelet and gabor transform. For classification of extracted features we have used support vector machine. Euclidian distances are calculated of every features for similarity measures.
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