基于Shearlet的视频指纹基于内容的拷贝检测

Q3 Computer Science
Fang Yuan, L. Po, Mengyang Liu, Xuyuan Xu, Weihua Jian, K. Wong, Kei-Wai Cheung
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引用次数: 16

摘要

基于内容的拷贝检测(CBCD)广泛应用于数字视频的版权控制中,其关键问题是针对同一视频的不同攻击版本提取鲁棒指纹。本文利用Shearlet系数的“自然部分”(粗尺度)生成鲁棒视频指纹,用于基于内容的视频复制检测应用。本文提出的基于Shearlet的视频指纹(SBVF)是由揭示空间特征的尺度1(最低粗尺度)和揭示方向特征的尺度2(第二低粗尺度)的Shearlet系数构建的。为了实现指纹的时空自然,将该算法应用于视频序列的时间信息代表图像(TIRI),最终生成指纹。利用TRECVID 2010数据集,采用逆索引文件(IIF)哈希搜索方法,构建了一个基于TIRI-SBVF的CBCD系统进行性能评价和比较。常见的攻击是在查询中施加的,如亮度攻击(亮度变化,盐和胡椒噪声,高斯噪声,文本插入);几何攻击(信箱和旋转);和时间攻击(掉帧,时间移动)。实验结果表明,所提出的TIRI-SBVF指纹识别算法在CBCD应用中对大多数攻击具有鲁棒性。平均F1分数约为0.99,假阳性率(FPR)小于0.01%,定位准确率为97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shearlet Based Video Fingerprint for Content-Based Copy Detection
Content-based copy detection (CBCD) is widely used in copyright control for protecting unauthorized use of digital video and its key issue is to extract robust fingerprint against different attacked versions of the same video. In this paper, the “natural parts” (coarse scales) of the Shearlet coefficients are used to generate robust video fingerprints for content-based video copy detection applications. The proposed Shearlet-based video fingerprint (SBVF) is constructed by the Shearlet coefficients in Scale 1 (lowest coarse scale) for revealing the spatial features and Scale 2 (second lowest coarse scale) for revealing the directional features. To achieve spatiotemporal natural, the proposed SBVF is applied to Temporal Informative Representative Image (TIRI) of the video sequences for final fingerprints generation. A TIRI-SBVF based CBCD system is constructed with use of Invert Index File (IIF) hash searching approach for performance evaluation and comparison using TRECVID 2010 dataset. Common attacks are imposed in the queries such as luminance attacks (luminance change, salt and pepper noise, Gaussian noise, text insertion); geometry attacks (letter box and rotation); and temporal attacks (dropping frame, time shifting). The experimental results demonstrate that the proposed TIRI-SBVF fingerprinting algorithm is robust on CBCD applications on most of the attacks. It can achieve an average F1 score of about 0.99, less than 0.01% of false positive rate (FPR) and 97% accuracy of localization.
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CiteScore
3.20
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