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Effective and Efficient Global Context Verification for Image Copy Detection

机译:有效和高效的全局上下文验证,用于图像复制检测

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摘要

To detect illegal copies of copyrighted images, recent copy detection methods mostly rely on the bag-of-visual-words (BOW) model, in which local features are quantized into visual words for image matching. However, both the limited discriminability of local features and the BOW quantization errors will lead to many false local matches, which make it hard to distinguish similar images from copies. Geometric consistency verification is a popular technology for reducing the false matches, but it neglects global context information of local features and thus cannot solve this problem well. To address this problem, this paper proposes a global context verification scheme to filter false matches for copy detection. More specifically, after obtaining initial scale invariant feature transform (SIFT) matches between images based on the BOW quantization, the overlapping region-based global context descriptor (OR-GCD) is proposed for the verification of these matches to filter false matches. The OR-GCD not only encodes relatively rich global context information of SIFT features but also has good robustness and efficiency. Thus, it allows an effective and efficient verification. Furthermore, a fast image similarity measurement based on random verification is proposed to efficiently implement copy detection. In addition, we also extend the proposed method for partial-duplicate image detection. Extensive experiments demonstrate that our method achieves higher accuracy than the state-of-the-art methods, and has comparable efficiency to the baseline method based on the BOW quantization.
机译:为了检测受版权保护的图像的非法副本,最近的复制检测方法主要依赖于视觉词袋(BOW)模型,该模型将局部特征量化为视觉词以进行图像匹配。但是,局域特征的有限可分辨性和BOW量化误差都将导致许多错误的局域匹配,这使得很难将相似图像与副本区分开。几何一致性验证是一种减少误匹配的流行技术,但是它忽略了局部特征的全局上下文信息,因此不能很好地解决此问题。为了解决这个问题,本文提出了一种全局上下文验证方案来过滤错误匹配项以进行复制检测。更具体地说,在基于BOW量化获得图像之间的初始尺度不变特征变换(SIFT)匹配之后,提出了基于重叠区域的全局上下文描述符(OR-GCD)来验证这些匹配以过滤错误匹配。 OR-GCD不仅对SIFT功能的相对丰富的全局上下文信息进行编码,而且具有良好的鲁棒性和效率。因此,它允许有效和高效的验证。此外,提出了一种基于随机验证的快速图像相似度测量,以有效地实现复制检测。另外,我们还扩展了提出的部分重复图像检测方法。大量实验表明,我们的方法比最先进的方法具有更高的准确性,并且具有与基于BOW量化的基线方法相当的效率。

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