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Multimodal Video Indexing and Retrieval Using Directed Information

机译:使用定向信息的多模式视频索引和检索

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We propose a novel framework for multimodal video indexing and retrieval using shrinkage optimized directed information assessment (SODA) as similarity measure. The directed information (DI) is a variant of the classical mutual information which attempts to capture the direction of information flow that videos naturally possess. It is applied directly to the empirical probability distributions of both audio-visual features over successive frames. We utilize RASTA-PLP features for audio feature representation and SIFT features for visual feature representation. We compute the joint probability density functions of audio and visual features in order to fuse features from different modalities. With SODA, we further estimate the DI in a manner that is suitable for high dimensional features $p$ and small sample size $n$ (large $p$ small $n$ ) between pairs of video-audio modalities. We demonstrate the superiority of the SODA approach in video indexing, retrieval, and activity recognition as compared to the state-of-the-art methods such as hidden Markov models (HMM), support vector machine (SVM), cross-media indexing space (CMIS), and other noncausal divergence measures such as mutual information (MI). We also demonstrate the success of SODA in audio and video localization and indexing/retrieval of data with missaligned modalities.
机译:我们提出了一种新的框架,用于使用收缩优化定向信息评估(SODA)作为相似性度量的多模式视频索引和检索。定向信息(DI)是经典互信息的一种变体,它试图捕获视频自然拥有的信息流的方向。它直接应用于连续帧上两个视听特征的经验概率分布。我们将RASTA-PLP功能用于音频功能表示,将SIFT功能用于可视功能表示。我们计算音频和视觉特征的联合概率密度函数,以便融合来自不同模态的特征。利用SODA,我们可以进一步以适合于视频音频模态对之间的高维特征$ p $和小样本量$ n $(大$ p $小$ n $)的方式估计DI。与最先进的方法(例如隐马尔可夫模型(HMM),支持向量机(SVM),跨媒体索引空间)相比,我们证明了SODA方法在视频索引,检索和活动识别方面的优势(CMIS)以及其他非因果的差异度量,例如互信息(MI)。我们还演示了SODA在音频和视频本地化以及具有未对齐模式的数据的索引/检索中的成功。

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