Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Supervised Video Summarization via Multiple Feature Sets with Parallel Attention

About

The assignment of importance scores to particular frames or (short) segments in a video is crucial for summarization, but also a difficult task. Previous work utilizes only one source of visual features. In this paper, we suggest a novel model architecture that combines three feature sets for visual content and motion to predict importance scores. The proposed architecture utilizes an attention mechanism before fusing motion features and features representing the (static) visual content, i.e., derived from an image classification model. Comprehensive experimental evaluations are reported for two well-known datasets, SumMe and TVSum. In this context, we identify methodological issues on how previous work used these benchmark datasets, and present a fair evaluation scheme with appropriate data splits that can be used in future work. When using static and motion features with parallel attention mechanism, we improve state-of-the-art results for SumMe, while being on par with the state of the art for the other dataset.

Junaid Ahmed Ghauri, Sherzod Hakimov, Ralph Ewerth• 2021

Related benchmarks

TaskDatasetResultRank
Video SummarizationTVSum
F-Measure61.5
213
Video SummarizationTVSum
Kendall's Tau0.19
55
Video SummarizationTVSum (test)
F-score0.639
47
Video SummarizationSumMe (various)
F-score53.4
35
Video SummarizationSumMe
Kendall's τ0.2
32
Video SummarizationTVSum
Kendall's τ0.19
24
Video SummarizationSumMe (5-fold cross-validation)
F1 Score53.4
12
Video SummarizationTVSum (5-fold cross-val)
Kendall's Tau0.19
9
Video SummarizationTVSum
Rank5.5
8
Video SummarizationSumMe
Rank3.5
8
Showing 10 of 20 rows

Other info

Code

Follow for update