Thesis Defense: Computing Features in Computer Vision for Event Detection

Thesis Defense: Computing Features in Computer Vision for Event Detection

UCF CRCV via YouTube Direct link

Summary

15 of 34

15 of 34

Summary

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Classroom Contents

Thesis Defense: Computing Features in Computer Vision for Event Detection

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  1. 1 Intro
  2. 2 Computing features in computer vision
  3. 3 Hand-Designed Features
  4. 4 Feature learning problem
  5. 5 Outline
  6. 6 Common approach & Challenges
  7. 7 62 action concepts
  8. 8 Proposed Method
  9. 9 Event Detection Process
  10. 10 Learned Filters
  11. 11 3D Motion Filters
  12. 12 Data-driven Low level Features
  13. 13 Data Driven Concept (2D Scene)
  14. 14 Data Driven Concept (Motion)
  15. 15 Summary
  16. 16 The Model
  17. 17 Hybrid Learning
  18. 18 Experimental Setup
  19. 19 Hybrid Features
  20. 20 Hybrid Vs. Generative
  21. 21 Hybrid Vs. Discriminative
  22. 22 Higher Level Visualization
  23. 23 Human Detection Results
  24. 24 Performance on Horse Detection
  25. 25 Introduction
  26. 26 Flow Chart
  27. 27 Gated Auto Encoders - Model the relationship of two videos
  28. 28 Discriminative Learning
  29. 29 Pair of Features
  30. 30 Generative V.S. Discriminative
  31. 31 K-shot Learning
  32. 32 Composite dataset
  33. 33 Computational Cost Comparison
  34. 34 Conclusion

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