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https://hdl.handle.net/2142/103996
Description
Title
Near-duplicate image detection
Author(s)
Baney, Douglas
Contributor(s)
Kindratenko, Volodymyr
Issue Date
2019-05
Keyword(s)
near-duplicate detection
image processing
image classification
video summarization
Abstract
Detecting near-duplicate images has applications in areas such as image
search, video summarization, and copyright enforcement. In this study,
we propose a new algorithm for generating feature vectors for images and investigate
similarity matching techniques based on the proposed feature vectors.
We also construct a dataset of near-duplicate images on which to test our
algorithms. In comparing results on our own dataset and a standard benchmark dataset, we find that our methods are best applied in contexts which
have a narrower definition of what constitutes near-duplicate images.
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