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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 1120 of 28 papers

TitleStatusHype
Discriminative Feature Learning for Unsupervised Video SummarizationCode0
Test-Time Training with Self-Supervision for Generalization under Distribution ShiftsCode0
How Local is the Local Diversity? Reinforcing Sequential Determinantal Point Processes with Dynamic Ground Sets for Supervised Video Summarization0
Improving Sequential Determinantal Point Processes for Supervised Video Summarization0
Joint Video Summarization and Moment Localization by Cross-Task Sample Transfer0
Language-Guided Self-Supervised Video Summarization Using Text Semantic Matching Considering the Diversity of the Video0
Query Twice: Dual Mixture Attention Meta Learning for Video Summarization0
Relational Reasoning Over Spatial-Temporal Graphs for Video Summarization0
Hierarchical Multimodal Transformer to Summarize Videos0
FullTransNet: Full Transformer with Local-Global Attention for Video Summarization0
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