Presentation is loading. Please wait.

Presentation is loading. Please wait.

Video Summarization via Determinantal Point Processes (DPP)

Similar presentations


Presentation on theme: "Video Summarization via Determinantal Point Processes (DPP)"— Presentation transcript:

1 Video Summarization via Determinantal Point Processes (DPP)
Boqing Gong University of Southern California Joint work with Wei-Lun Chao, Kristen Grauman, and Fei Sha

2 Background Basic idea of DPP Sequential DPP (NIPS 2014) Large-margin training of DPP Conclusion

3 Background Motivation: Representation: Subset Selection problem
Indispensable for fast video browsing and retrieval Representation: Key frames / segments extraction Subset Selection problem

4 Background Video summarization is hard: Naïve solution: Clustering
Individual selected frame: Representativeness Selected frames as a whole: Diversity Naïve solution: Clustering Competing !

5 Background Clustering works?

6 Video summarization: an overview
Video summarization is hard: What criteria lead to user perspective? What kind of models: Supervised learning ! Diverse subset with representative items

7 Background How to model subset selection problem?
Structured prediction, submodular functions Determinantal Point Processes (DPPs) [Alex Kulesza and Ben Taskar, 2012]

8 Background Basic idea of DPP Sequential DPP (NIPS 2014) Large-margin training of DPP Conclusion

9 Basic idea of DPP Idea: A point process based on matrix determinant. Formulation: M discrete items (binary decision)

10 Basic idea of DPP Why diverse? Extreme cases:

11 Basic idea of DPP Learning in DPP: 11

12 Background Basic idea of DPP Sequential DPP (NIPS 2014) Large-margin training of DPP Conclusion

13 Sequential DPP Motivation: Proposed Idea:
The temporal structure of video is missing Proposed Idea: Sequential DPP via Markov properties

14

15 Sequential DPP Modeling the sequential structure:
Conditional DPP: still a DPP !

16 Sequential DPP Parameterization:

17 Inference and Learning
Allow brute-force search in small chunks Optimization:

18 Sequential DPP Experimental setting:
3 datasets: OVP (50), Youtube (39), Kodak (18) Fisher vectors + Saliency + Contextual features Evaluation: Recall, Precision, and F1 score Comparison: unsupervised methods & vanilla DPP

19 Sequential DPP Experimental Results:

20 Sequential DPP Experimental Results:

21 Sequential DPP Experimental Results:

22 Background Basic idea of DPP Sequential DPP (NIPS 2014) Large-margin training of DPP Conclusion

23 Learning parameters in DPP
Maximum likehood estimation Focuses on observed data only Large-margin training Maximizes margin between observed and undesired data Discriminative learning More flexible: incorporating evaluation metrics

24 Large-margin training of DPP
More discriminative and flexible

25

26

27 Conclusion Supervised learning for video summarization
DPPs: modeling diversity subset selection Video structure: Sequential DPP Parameterization: Neural networks Future work Better inference algorithms Models beyond DPP (submodular)


Download ppt "Video Summarization via Determinantal Point Processes (DPP)"

Similar presentations


Ads by Google