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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >EXPOSING DIGITAL VIDEO LOGO-REMOVAL FORGERY BY INCONSISTENCY OF BLUR
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EXPOSING DIGITAL VIDEO LOGO-REMOVAL FORGERY BY INCONSISTENCY OF BLUR

机译:通过模糊不清暴露数字视频徽标伪造

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摘要

A novel approach for detecting video logo-removal forgery is proposed by measuring inconsistency of blur. Our approach is based on the assumption that if a digital video undergoes logo-removal forgery; the blurriness of the forged region is expected to be different as compared to the nontampered parts of the video. Blurriness is first estimated by analyzing the spatial and temporal statistical property of logo areas, and suspicious areas are roughly located; then features are extracted and a fine classification is implemented by applying support vector machine (SVM) to extract features. If the suspicious areas and the reference areas are classified into different classes, the video is judged as a forged video. Experimental results show that our method is robust to video lossy compression for logo-removal forgery detection with the advantages of high classification accuracy and low computation cost.
机译:通过测量模糊不一致性,提出了一种检测视频徽标去除伪造的新方法。我们的方法基于这样一个假设:如果数字视频遭受伪造商标的伪造;与视频的未篡改部分相比,伪造区域的模糊性预计会有所不同。首先通过分析徽标区域的时空统计特性来估计模糊度,然后大致定位可疑区域;然后提取特征并通过应用支持向量机(SVM)提取特征进行精细分类。如果可疑区域和参考区域被划分为不同的类别,则视频被判定为伪造视频。实验结果表明,该方法对视频有损压缩的标识去除伪造检测具有较强的鲁棒性,具有分类精度高,计算成本低的优点。

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