Making Our Models Robust to Changing Visual Environments

Making Our Models Robust to Changing Visual Environments

Andreas Geiger via YouTube Direct link

Summary: Adversarial Domain Adaptation

18 of 26

18 of 26

Summary: Adversarial Domain Adaptation

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Making Our Models Robust to Changing Visual Environments

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  1. 1 Intro
  2. 2 Benchmark Performance
  3. 3 Dataset Bias
  4. 4 Classic Domain Adaptation
  5. 5 Deep Domain Adaptation
  6. 6 Discrepancy Between Source and Target
  7. 7 Domain Adversarial Optimization
  8. 8 Domain Adversarial Adaptation
  9. 9 Standard GAN Model
  10. 10 CycleGAN for Domain Adaptation
  11. 11 Failures of Image to Image Translation
  12. 12 Adaptation Results: Digit Recognition
  13. 13 Adaptation of Semantic Segmentation
  14. 14 Cross-city Adaptation
  15. 15 Cross Season Adaptation
  16. 16 Cross Season Pixel Adaptation
  17. 17 Synthetic to Real Pixel Adaptation
  18. 18 Summary: Adversarial Domain Adaptation
  19. 19 Continuous Learning
  20. 20 Continuous Unsupervised Adaptation
  21. 21 Experiment: MNIST Rotations
  22. 22 Replay to Remember: MNIST Rotations
  23. 23 Adapt vs Remember: MNIST Rotations
  24. 24 Evaluate MNIST 135 after all rotations
  25. 25 Summary Batch Adaptation
  26. 26 Summary Continuous Adaptation

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