Image Hashing for Tamper Detection with Multiview Embedding and Perceptual Saliency

Clicks: 186
ID: 7770
2018
Perceptual hashing technique for tamper detection has been intensively investigated owing to the speed and memory efficiency. Recent researches have shown that leveraging supervised information could lead to learn a high-quality hashing code. However, most existing methods generate hashing code by treating each region equally while ignoring the different perceptual saliency relating to the semantic information. We argue that the integrity for salient objects is more critical and important to be verified, since the semantic content is highly connected to them. In this paper, we propose a Multi-View Semi-supervised Hashing algorithm with Perceptual Saliency (MV-SHPS), which explores supervised information and multiple features into hashing learning simultaneously. Our method calculates the image hashing distance by taking into account the perceptual saliency rather than directly considering the distance value between total images. Extensive experiments on benchmark datasets have validated the effectiveness of our proposed method.
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ling2018imageadvances Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Du, Ling;Chen, Zhen;Ke, Yongzhen;Du, Ling;Chen, Zhen;Ke, Yongzhen;
Journal advances in multimedia
Year 2018
DOI 10.1155/2018/4235268
URL
Keywords Keywords not found

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