Abstract

Recently, digital content has become a significant and inevitable asset of or any enterprise and the need for visual content management is on the rise as well. There has been an increase in attention towards the automated management and retrieval of digital images owing to the drastic development in the number and size of image databases. A significant and increasingly popular approach that aids in the retrieval of image data from a huge collection is called Content-based image retrieval (CBIR). Content-based image retrieval has attracted voluminous research in the last decade paving way for development of numerous techniques and systems besides creating interest on fields that support these systems. CBIR indexes the images based on the features obtained from visual content so as to facilitate speedy retrieval. Content based image retrieval from large resources has become an area of wide interest nowadays in many applications. In this thesis work, we present a steerable pyramid based image retrieval system that uses color, contours and texture as visual features to describe the content of an image region. To speed up retrieval and similarity computation, the database images are classified and the extracted regions are clustered according to their feature vectors using KNN algorithm We have used steerable pyramid to extract texture features from query image and classified database images and store them in feature features. Therefore to answer a query our system does not need to search the entire database images; instead just a number of candidate images are required to be searched for image similarity. Our proposed system has the advantage of increasing the retrieval accuracy and decreasing the retrieval time.

Highlights

  • Content based image retrieval is based on matching of the features of the query image with that of image database through some image-image similarity evaluation

  • The images will be indexed according to their own visual content in the light of the underlying features like color

  • Since Kato's pioneer work, many prototypes of Content-based image retrieval (CBIR) systems have been developed, and some of them did go to commercial market, e.g., IBM's QBIC system, which supports color, shape and texture feature, Virage developed by VirageInc and supports color, texture, color layout and shapes

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Summary

INTRODUCTION

Content based image retrieval is based on (automated) matching of the features of the query image with that of image database through some image-image similarity evaluation. The similarity measure or the degree is hired to calculate the distance among the feature vectors of query image and those of the target images inside the characteristic database of images. Consumer’s relevance remarks or we can say the feedback is likewise included to further enhance the retrieval method so one can produce perceptually and semantically greater meaningful retrieval effects using CBIR system [4].CBIR retrieves images based on visual features such as colour, texture and shape [3]. In this method, colour, shape and texture of an image are classified automatically or semi-automatically with the aid of human classifier. The results are than ranked according to the highest similarity score

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