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1
Intro
2
Ideal Features
3
The Manifold of Natural Images
4
Ideal Feature Extraction
5
Learning Non-Linear Features
6
Linear Combination prediction of class
7
A Potential Problem with Deep Learning
8
Deep Learning in Practice
9
KEY IDEAS: WHY DEEP LEARNING
10
Buzz Words
11
(My) Definition
12
ConvNets: today
13
Deep Gated MRF
14
Sampling High-Resolution Images
15
Sampling After Training on Face Images
16
Cons
17
CONV NETS: TYPICAL ARCHITECTURE
18
CONV NETS: EXAMPLES
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CHOOSING THE ARCHITECTURE
20
HOW TO OPTIMIZE
21
HOW TO IMPROVE GENERALIZATION
22
OTHER THINGS GOOD TO KNOW
23
WHAT IF IT DOES NOT WORK?
Description:
Explore the evolution and practical applications of deep learning in computer vision through this 42-minute talk by Marc'Aurelio Ranzato, a research scientist at Meta. Gain insights into the historical development of deep learning over the past two decades, understanding the reasons behind its recent success and learning practical techniques for implementing these methods in common vision applications. Discover various approaches, from unsupervised feature learning algorithms to popular object recognition systems, while examining the challenges faced by the field and potential future breakthroughs. Delve into topics such as ideal feature extraction, learning non-linear features, convolutional neural networks, and strategies for optimizing and improving generalization in deep learning models. Learn from Ranzato's extensive experience in machine learning, computer vision, and artificial intelligence as he shares valuable insights and practical advice for implementing deep learning techniques in vision-related tasks. Read more

Deep Learning for Vision: Tricks of the Trade

Meta
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