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Supervised Video Summarization

Supervised video summarization rely on datasets with human-labeled ground-truth annotations (either in the form of video summaries, as in the case of the SumMe dataset, or in the form of frame-level importance scores, as in the case of the TVSum dataset), based on which they try to discover the underlying criterion for video frame/fragment selection and video summarization.

Source: Video Summarization Using Deep Neural Networks: A Survey

Papers

Showing 110 of 28 papers

TitleStatusHype
Video Joint Modelling Based on Hierarchical Transformer for Co-summarizationCode1
DSNet: A Flexible Detect-to-Summarize Network for Video SummarizationCode1
Self-Attention Recurrent Summarization Network with Reinforcement Learning for Video Summarization TaskCode1
Supervised Video Summarization via Multiple Feature Sets with Parallel AttentionCode1
Progressive Video Summarization via Multimodal Self-supervised LearningCode1
Align and Attend: Multimodal Summarization with Dual Contrastive LossesCode1
Combining Global and Local Attention with Positional Encoding for Video SummarizationCode1
How Good is a Video Summary? A New Benchmarking Dataset and Evaluation Framework Towards Realistic Video Summarization0
A Stacking Ensemble Approach for Supervised Video Summarization0
How Local is the Local Diversity? Reinforcing Sequential Determinantal Point Processes with Dynamic Ground Sets for Supervised Video Summarization0
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