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Papers/Hierarchical Multimodal Transformer to Summarize Videos

Hierarchical Multimodal Transformer to Summarize Videos

Bin Zhao, Maoguo Gong, Xuelong Li

2021-09-22Machine TranslationSupervised Video SummarizationVideo SummarizationVideo CaptioningTranslation
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Abstract

Although video summarization has achieved tremendous success benefiting from Recurrent Neural Networks (RNN), RNN-based methods neglect the global dependencies and multi-hop relationships among video frames, which limits the performance. Transformer is an effective model to deal with this problem, and surpasses RNN-based methods in several sequence modeling tasks, such as machine translation, video captioning, \emph{etc}. Motivated by the great success of transformer and the natural structure of video (frame-shot-video), a hierarchical transformer is developed for video summarization, which can capture the dependencies among frame and shots, and summarize the video by exploiting the scene information formed by shots. Furthermore, we argue that both the audio and visual information are essential for the video summarization task. To integrate the two kinds of information, they are encoded in a two-stream scheme, and a multimodal fusion mechanism is developed based on the hierarchical transformer. In this paper, the proposed method is denoted as Hierarchical Multimodal Transformer (HMT). Practically, extensive experiments show that HMT surpasses most of the traditional, RNN-based and attention-based video summarization methods.

Results

TaskDatasetMetricValueModel
VideoTvSumF1-score (Augmented)60.3HMT
VideoTvSumF1-score (Canonical)60.1HMT
VideoTvSumKendall's Tau0.096HMT
VideoTvSumSpearman's Rho0.107HMT
VideoSumMeF1-score (Augmented)44.8HMT
VideoSumMeF1-score (Canonical)44.1HMT
VideoSumMeKendall's Tau0.079HMT
VideoSumMeSpearman's Rho0.08HMT
Video SummarizationTvSumF1-score (Augmented)60.3HMT
Video SummarizationTvSumF1-score (Canonical)60.1HMT
Video SummarizationTvSumKendall's Tau0.096HMT
Video SummarizationTvSumSpearman's Rho0.107HMT
Video SummarizationSumMeF1-score (Augmented)44.8HMT
Video SummarizationSumMeF1-score (Canonical)44.1HMT
Video SummarizationSumMeKendall's Tau0.079HMT
Video SummarizationSumMeSpearman's Rho0.08HMT

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