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Video Summarization Using Fully Convolutional Sequence Networks

About

This paper addresses the problem of video summarization. Given an input video, the goal is to select a subset of the frames to create a summary video that optimally captures the important information of the input video. With the large amount of videos available online, video summarization provides a useful tool that assists video search, retrieval, browsing, etc. In this paper, we formulate video summarization as a sequence labeling problem. Unlike existing approaches that use recurrent models, we propose fully convolutional sequence models to solve video summarization. We firstly establish a novel connection between semantic segmentation and video summarization, and then adapt popular semantic segmentation networks for video summarization. Extensive experiments and analysis on two benchmark datasets demonstrate the effectiveness of our models.

Mrigank Rochan, Linwei Ye, Yang Wang• 2018

Related benchmarks

TaskDatasetResultRank
Video SummarizationTVSum
F-Measure59.2
213
Video SummarizationSumMe
F1 Score (Avg)51.1
130
Video SummarizationTVSum Canonical
F-Score56.8
39
Video SummarizationSumMe (various)
F-score51.1
35
Video SummarizationSumMe (Augmented)
F-score51.1
33
Video SummarizationTVSum (Augmented)
F-score59.2
33
Unsupervised video summarizationSumMe unsupervised
F-score41.5
20
Unsupervised video summarizationTVSum (unsupervised)
F-score52.7
20
Video SummarizationSumMe (Transfer)
F-score44.1
16
Video SummarizationTVSum Transfer
F-score58.2
16
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