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Unsupervised Video Summarization

Unsupervised video summarization approaches overcome the need for ground-truth data (whose production requires time-demanding and laborious manual annotation procedures), based on learning mechanisms that require only an adequately large collection of original videos for their training. Specifically, the training is based on heuristic rules, like the sparsity, the representativeness, and the diversity of the utilized input features/characteristics.

Papers

Showing 110 of 31 papers

TitleStatusHype
AC-SUM-GAN: Connecting Actor-Critic and Generative Adversarial Networks for Unsupervised Video SummarizationCode1
Self-Attention Recurrent Summarization Network with Reinforcement Learning for Video Summarization TaskCode1
Summarizing Videos using Concentrated Attention and Considering the Uniqueness and Diversity of the Video FramesCode1
Unsupervised Video Summarization via Multi-source FeaturesCode1
Contrastive Losses Are Natural Criteria for Unsupervised Video SummarizationCode1
Adopting Self-Supervised Learning into Unsupervised Video Summarization through Restorative Score.Code1
Adopting Self-Supervised Learning into Unsupervised Video Summarization through Restorative ScoreCode1
Cycle-SUM: Cycle-consistent Adversarial LSTM Networks for Unsupervised Video Summarization0
Learning to Summarize Videos by Contrasting Clips0
FrameRank: A Text Processing Approach to Video Summarization0
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