Deep Reinforcement Learning for Object Tracking
Offered By: University of Central Florida via YouTube
Course Description
Overview
          Explore deep reinforcement learning techniques for object tracking in this 30-minute lecture from the University of Central Florida. Learn about different types of learning, deep learning fundamentals, and reinforcement learning principles. Discover the concept of value functions as predictions of future rewards and various approaches to reinforcement learning. Delve into action-driven object tracking, including problem definition in an RL setting, action-decision networks, and training methods such as supervised learning, reinforcement learning, and online adaptation. Gain insights into self-comparison techniques and their applications in object tracking systems.
        
Syllabus
Intro
Different types of learning
Deep learning in a nutshell
Reinforcement learning in a nutshell
Policy
Value function A value function is a prediction of future reward
Approaches To Reinforcement Learning
Motivation
Action-driven object tracking
Problem definition (RL setting)
Action-decision network
Training: Supervised learning
Training: Reinforcement learning
Training: Online adaptation
Self comparison
Taught by
UCF CRCV
Tags
Related Courses
Neural Networks for Machine LearningUniversity of Toronto via Coursera 機器學習技法 (Machine Learning Techniques)
National Taiwan University via Coursera Machine Learning Capstone: An Intelligent Application with Deep Learning
University of Washington via Coursera Прикладные задачи анализа данных
Moscow Institute of Physics and Technology via Coursera Leading Ambitious Teaching and Learning
Microsoft via edX
