Abstract

As one of the important techniques for protecting the copyrights of digital images, content-based image copy detection has attracted a lot of attention in the past few decades. The traditional content-based copy detection methods usually extract local hand-crafted features and then quantize these features to visual words by the bag-of-visual-words (BOW) model to build an inverted index file for rapid image matching. Recently, deep learning features, such as the features derived from convolutional neural networks (CNN), have been proven to outperform the hand-crafted features in many applications of computer vision. However, it is not feasible to directly apply the existing global CNN features for copy detection, since they are usually sensitive to partial content-discarded attacks, such as copping and occlusion. Thus, we propose a local CNN feature-based image copy detection method with contextual hash embedding. We first extract the local CNN features from images and then quantize them to visual words to construct an index file. Then, as the BOW quantization process decreases the discriminability of these features to some extent, a contextual hash sequence is captured from a relatively large region surrounding each CNN feature and then is embedded into the index file to improve the feature’s discriminability. Extensive experimental results demonstrate that the proposed method achieves a superior performance compared to the related works in the copy detection task.

Highlights

  • Due to the rapid development of Internet technology and the increasing popularity of personal digital camera devices, the amount of digital media grows exponentially on the Internet [1,2,3]

  • Matcheswhich between inverted index file, a geometric coding algorithm is adopted for feature methods, which are listed as follows

  • Our method achieves a higher accuracy than the SIFT + BOW and SIFT + BOW + geometric coding (GC), mainly because our method uses the local convolutional neural networks (CNN) features, which have a higher discriminability than the local hand-crafted features

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Summary

Introduction

Due to the rapid development of Internet technology and the increasing popularity of personal digital camera devices, the amount of digital media (images, audio, and video) grows exponentially on the Internet [1,2,3]. With the help of various image processing tools such as Photoshop, it is very easy for users to modify a copyrighted image (an original image) with a variety of manipulations such as rescaling, rotation, cropping, noise addition, and text addition to produce various kinds of copy versions of the image for illegal use. In view of this, detecting image copies has become the first and key step for copyright protection. 1. The toy examples of original an originalimage image and and its

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