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Image Hashing for Tamper Detection with Multiview Embedding and Perceptual Saliency

机译:具有多视图嵌入和感知显着性的图像哈希用于篡改检测

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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.
机译:由于速度和存储效率的原因,人们已经深入研究了用于感知篡改的感知哈希技术。最近的研究表明,利用监督信息可以导致学习高质量的哈希码。然而,大多数现有方法通过在不理会与语义信息有关的不同感知显着性的同时平等对待每个区域来生成哈希码。我们认为,显着对象的完整性更为关键和重要,因为语义内容与它们紧密相关。在本文中,我们提出了一种基于感知显着性的多视图半监督散列算法(MV-SHPS),该算法同时探索了监督信息和多种特征以进行散列学习。我们的方法通过考虑感知显着性而不是直接考虑整个图像之间的距离值来计算图像哈希距离。在基准数据集上进行的大量实验验证了我们提出的方法的有效性。

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