Reinforced Active Learning for Image Segmentation
Offered By: Launchpad via YouTube
Course Description
Overview
Explore reinforced active learning for image segmentation in this 24-minute video from Launchpad. Delve into the challenges and examples of image segmentation, and learn about reinforcement learning techniques for optimal policy development. Examine the main paper's findings, including compact and action representations. Discover the architecture of reinforced active learning and analyze experimental results with varying numbers of regions. Gain insights into this innovative approach to image segmentation through detailed explanations of algorithms, experimental settings, and comparisons with baselines.
Syllabus
Introduction
Challenges
Example
Reinforcement Learning
Optimal Policy
Algorithms
Main paper
Representation
Compact representations
Action representation
Reinforced active learning
Architecture
Experiments
Experimental settings
Baselines
Experimental results
Experiments with varying number of regions
Conclusion
Taught by
Launchpad
Related Courses
Computer Vision: The FundamentalsUniversity of California, Berkeley via Coursera Image and Video Processing: From Mars to Hollywood with a Stop at the Hospital
Duke University via Coursera Fundamentals of Digital Image and Video Processing
Northwestern University via Coursera 医学图像处理技术 Medical Image Analysis
Shanghai Jiao Tong University via Coursera Image Processing and Analysis for Life Scientists
École Polytechnique Fédérale de Lausanne via edX