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1
Intro
2
Outline
3
Approaches for Imitation Learning
4
Dataset
5
Problem Definition
6
Training Objective
7
Algorithm 1
8
The Policy Network
9
Temporal Convolution Network
10
Spatial Softmax
11
Tasks
12
Some subset of objects
13
Experiments
14
Large Domain Shift
15
Results
16
Conclusions
Description:
Explore cutting-edge approaches to imitation learning in this 30-minute lecture from the University of Central Florida. Delve into the concept of one-shot imitation from human observation through domain-adaptive meta-learning. Examine the problem definition, training objectives, and key algorithms, including the policy network and temporal convolution network. Investigate the application of spatial softmax and its role in task execution. Analyze experiments involving large domain shifts and their results. Gain insights into the latest developments in this field and understand their potential implications for future AI applications.

One-Shot Imitation from Observing Humans via Domain-Adaptive Meta-Learning

University of Central Florida
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