Overview
Explore the groundbreaking DINO system developed by Facebook AI Research in this comprehensive video lecture. Delve into the fusion of self-supervised learning for computer vision with the innovative Vision Transformer (ViT) architecture. Discover how DINO achieves impressive results without labels, including the direct interpretation of attention maps as segmentation maps and the use of obtained representations for image retrieval and zero-shot k-nearest neighbor classifiers. Learn about Vision Transformers, self-supervised learning for images, self-distillation techniques, and the process of building a teacher from a student using moving averages. Examine the DINO pseudocode, understand the rationale behind using cross-entropy loss, and analyze experimental results. Gain insights into the lecturer's hypothesis on DINO's effectiveness and conclude with a discussion on the implications of this research for the field of computer vision and artificial intelligence.
Syllabus
- Intro & Overview
- Vision Transformers
- Self-Supervised Learning for Images
- Self-Distillation
- Building the teacher from the student by moving average
- DINO Pseudocode
- Why Cross-Entropy Loss?
- Experimental Results
- My Hypothesis why this works
- Conclusion & Comments
Taught by
Yannic Kilcher