Deep Learning for Computer Vision

Deep Learning for Computer Vision

NPTEL-NOC IITM via YouTube Direct link

Image Formation

3 of 79

3 of 79

Image Formation

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Deep Learning for Computer Vision

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Course Introduction
  2. 2 History
  3. 3 Image Formation
  4. 4 Image Representation
  5. 5 Linear Filtering
  6. 6 Image in Frequency Domain
  7. 7 Image Sampling
  8. 8 Edge Detection
  9. 9 From Edges to Blobs and Corners
  10. 10 Scale Space, Image Pyramids and Filter Banks
  11. 11 Feature Detectors : SIFT and Variants
  12. 12 Image Segmentation
  13. 13 Other Feature Spaces
  14. 14 Human Visual System
  15. 15 Feature Matching
  16. 16 Hough Transform
  17. 17 From Points to Images:Bag-of-Words and VLAD Representations
  18. 18 Image Descriptor Matching
  19. 19 Pyramid Matching
  20. 20 From Traditional Vision to Deep Learning
  21. 21 Neural Networks: A Review - Part 1
  22. 22 Neural Networks: A Review - Part 2
  23. 23 Feedforward Neural Networks and Backpropagation - Part 1
  24. 24 Feedforward Neural Networks and Backpropagation - Part 2
  25. 25 Gradient Descent and Variants - Part 1
  26. 26 Gradient Descent and Variants - Part 2
  27. 27 Regularization in Neural Networks - Part 1
  28. 28 Regularization in Neural Networks - Part 2
  29. 29 Improving Training of Neural Networks - Part 1
  30. 30 Improving Training of Neural Networks - Part 2
  31. 31 Convolutional Neural Networks: An Introduction - Part 01
  32. 32 Convolutional Neural Networks: An Introduction - Part 02
  33. 33 Backpropagation in CNNs
  34. 34 Evolution of CNN Architectures for Image Classification-Part 01
  35. 35 Evolution of CNN Architectures for Image Classification-Part 02
  36. 36 Recent CNN Architectures
  37. 37 Finetuning in CNNs
  38. 38 Explaining CNNs: Visualization Methods
  39. 39 Explaining CNNs: Early Methods
  40. 40 Explaining CNNs: Class Attribution Map Methods
  41. 41 Explaining CNNs: Recent Methods - Part 01
  42. 42 Explaining CNNs: Recent Methods -Part 02
  43. 43 Going Beyond Explaining CNNs
  44. 44 CNNs for Object Detection I PART 01
  45. 45 CNNs for Object Detection I PART 02
  46. 46 CNNs for Object Detection II
  47. 47 CNNs for Segmentation
  48. 48 CNNs for Human Understanding Faces- Part 01
  49. 49 CNNs for Human Understanding Faces PART 02
  50. 50 CNNs for Human Understanding Human Pose and Crowd
  51. 51 CNNs for Other Image Tasks
  52. 52 Recurrent Neural Networks Introduction
  53. 53 Backpropagation in RNNs
  54. 54 LSTMs and GRUs
  55. 55 Video Understanding using CNNs and RNNs
  56. 56 Attention in Vision Models: An Introduction
  57. 57 Vision and Language: Image Captioning
  58. 58 Beyond Captioning: Visual QA, Visual Dialog
  59. 59 Other Attention Models
  60. 60 Self-Attention and Transformers
  61. 61 Deep Generative Models: An Introduction
  62. 62 Generative Adversarial Networks-Part 01
  63. 63 Generative Adversarial Networks-Part 02
  64. 64 Variational Autoencoders
  65. 65 Combining VAEs and GANs
  66. 66 Beyond VAEs and GANs: Other Deep Generative Models-01
  67. 67 Beyond VAEs and GANs: Other Deep Generative Models-02
  68. 68 GAN Improvements
  69. 69 Deep Generative Models across Multiple Domains
  70. 70 VAEs and DIsentanglement
  71. 71 Deep Generative Models: Image Applications
  72. 72 Deep Generative Models: Video Applications
  73. 73 Few-shot and Zero-shot Learning - Part 01
  74. 74 Few-shot and Zero-shot Learning - Part 02
  75. 75 Self-Supervised Learning
  76. 76 Adversarial Robustness
  77. 77 Pruning and Model Compression
  78. 78 Neural Architecture Search
  79. 79 Course Conclusion

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.