INTRODUCTION
Image retrieval is a very popular topic in the field of information retrieval. The goal of image retrieval is to locate an image in the database which is most similar to the given query.
CONTENT BASED IMAGE RETRIEVAL WITH LOCAL FEATURES
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CONTENT BASED IMAGE RETRIEVAL WITH CNN
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