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Important Scene Detection Of Baseball Videos Via Time-Lag Aware Deep Multiset Canonical Correlation Maximization

机译:通过延时感知深度多集典范相关性最大化来检测棒球视频的重要场景

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This paper presents a new important scene detection method of baseball videos based on correlation maximization between heterogeneous modalities via time-lag aware deep multiset canonical correlation analysis (Tl-dMCCA). The technical contributions of this paper are twofold. First, textual, visual and audio features calculated from tweets and videos are adopted as multi-view time series features. Since Tl-dMCCA which utilizes these features includes the unsupervised embedding scheme via deep networks, the proposed method can flexibly express the relationship between heterogeneous features. Second, since there is the time-lag between posted tweets and the corresponding multiple previous events, Tl-dMCCA considers the time-lag relationships between them. Specifically, we newly introduce the representation of such time-lags into the derivation of their covariance matrices. By considering time-lags via Tl-dMCCA, the proposed method correctly detects important scenes.
机译:本文提出了一种新的重要的棒球视频场景检测方法,即基于时滞感知的深度多集典型相关分析(Tl-dMCCA),基于异构模态之间的相关最大化。本文的技术贡献是双重的。首先,根据推文和视频计算的文本,视觉和音频功能被用作多视图时间序列功能。由于利用这些特征的T1-dMCCA包括经由深度网络的无监督嵌入方案,因此所提出的方法可以灵活地表达异构特征之间的关系。其次,由于发布的推文与相应的多个先前事件之间存在时滞,因此T1-dMCCA考虑了它们之间的时滞关系。具体而言,我们将此类时滞的表示形式新引入了其协方差矩阵的推导中。通过考虑经由T1-dMCCA的时滞,所提出的方法可以正确地检测重要场景。

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