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Comprehensive Feature-Based Robust Video Fingerprinting Using Tensor Model

机译:基于张量模型的基于功能的全面鲁棒视频指纹识别

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摘要

Content-based near-duplicate video detection (NDVD) is essential for effective search and retrieval, and robust video fingerprinting is a good solution for NDVD. Most existing video fingerprinting methods use a single feature or concatenate different features to generate video fingerprints, and show good performance under single-mode modifications such as noise addition and blurring. However, when they suffer combined modifications, the performance is degraded to a certain extent because such features cannot characterize the video content completely. By contrast, the assistance and consensus among different features can improve the performance of video fingerprinting. Therefore, in the present study, we mine the assistance and consensus among different features based on a tensor model, and we present a new comprehensive feature to fully use them in the proposed video fingerprinting framework. We also analyze what the comprehensive feature really is for representing the original video. In this framework, the video is initially set as a high-order tensor that consists of different features, and the video tensor is decomposed via the Tucker model with a solution that determines the number of components. Subsequently, the comprehensive feature is generated by the low-order tensor obtained from tensor decomposition. Finally, the video fingerprint is computed using this feature. A matching strategy used for narrowing the search is also proposed based on the core tensor. The robust video fingerprinting framework is resistant not only to single-mode modifications but also to their combination.
机译:基于内容的近重复视频检测(NDVD)对于有效的搜索和检索至关重要,而强大的视频指纹识别是NDVD的良好解决方案。大多数现有的视频指纹识别方法使用单个功能或连接不同的功能来生成视频指纹,并在单模式修改(例如噪声添加和模糊)下显示出良好的性能。但是,当它们进行组合修改时,性能会在一定程度上降低,因为此类功能无法完全表征视频内容。相比之下,不同功能之间的协助和共识可以提高视频指纹识别的性能。因此,在本研究中,我们基于张量模型挖掘了不同特征之间的协助和共识,并提出了一种新的综合特征,以在建议的视频指纹识别框架中充分利用它们。我们还分析了代表原始视频的全面功能的真正含义。在此框架中,视频最初设置为由不同特征组成的高阶张量,然后通过Tucker模型使用确定分量数的解决方案对视频张量进行分解。随后,通过张量分解获得的低阶张量生成综合特征。最后,使用此功能计算视频指纹。基于核心张量,提出了一种用于缩小搜索范围的匹配策略。强大的视频指纹识别框架不仅可以抵抗单模修改,还可以抵抗其组合。

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